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Article

Performance of Greek Public Hospitals Before and After the Economic Recession and the Pandemic: Application of a Novel Cost Malmquist Index for Comparing Productivity Across Multiple Groups

1
Department of Public Health Policy, University of West Attica, 196 Alexandras Avenue, 11521 Athens, Greece
2
Department of Statistics and Insurance Science, University of Piraeus, 80 Karaoli and Demetriou Str., 18534 Piraeus, Greece
*
Author to whom correspondence should be addressed.
Healthcare 2025, 13(11), 1253; https://doi.org/10.3390/healthcare13111253
Submission received: 26 March 2025 / Revised: 22 May 2025 / Accepted: 23 May 2025 / Published: 26 May 2025

Abstract

:
Background/Objectives: This study introduces the Multi Group Cost Malmquist Index ( C M g m ), a novel tool for comparing and ranking the cost efficiency of multiple groups of similar decision-making units operating in different contexts. It was applied to Greek public hospitals to assess productivity change between 2009 and 2021, covering the period before the economic recession and after the second lockdown during the COVID-19 pandemic. The study aimed to determine the impact of these external shocks on hospital efficiency and to identify differences in cost productivity based on hospital size and regional location. Methods: Data envelopment analysis was employed to compute the Malmquist indices for productivity change and ranking. Overall, 109 Greek public hospitals were analysed using three models: as a single group, classified by bed capacity, and classified by regional health authority (RHA). Cost productivity was decomposed into its core measures. Results: During the economic crisis, hospitals improved their cost productivity by 13.2%, whereas during the pandemic, it declined by 32.1%, primarily due to cost frontier deterioration resulting from increased healthcare demand and strained resources. Medium-sized hospitals exhibited higher cost efficiency than small and large hospitals. Regional disparities were also observed, with hospitals in the 5th and 7th RHAs outperforming those in 1st and 2nd RHAs. Conclusions: The findings highlight the pandemic’s disruptive impact on hospital cost productivity compared to the efficiency gains during the economic crisis. It is encouraging, though, that hospitals are recovering again after the lifting of strict lockdown measures. The C M g m is a valuable tool for policymakers, offering insights into hospital performance across multiple groups. Future healthcare policies should prioritise resource optimisation and address regional disparities to enhance system-wide efficiency and resilience in times of crisis.

1. Introduction

Productivity in public hospitals is a critical metric for evaluating how effectively health systems utilize their resources to deliver care. It reflects the relationship between inputs (such as labour, medical equipment, beds, and funding) and outputs (such as patient discharges, surgeries, or improved health outcomes). In an era of rising healthcare costs and growing demand, improving productivity is essential to ensure sustainability, equity, and quality in healthcare delivery.
Worldwide, public hospitals face intense pressure to do more with less. Populations are aging, chronic diseases are increasing, and medical technologies are advancing rapidly—often at high cost. At the same time, governments and health agencies are tasked with maintaining or improving service levels while controlling public spending. In this context, enhancing productivity allows hospitals to increase output or improve quality without proportionally increasing resources, thereby improving efficiency and access.
International organizations such as the WHO and OECD have repeatedly emphasized hospital productivity as a key dimension of health system performance. Efficient hospitals are better able to reduce wait times, avoid unnecessary procedures, and improve patient outcomes, all while staying within budgetary constraints.
In Greece, the issue of productivity in public hospitals gained particular importance during the economic crisis and the COVID-19 pandemic. Greece experienced nearly eight years of economic recession (2010–2018), followed by two years of a healthcare crisis due to the COVID-19 pandemic (2020–2021), placing immense pressure on the National Health System (NHS). To enhance efficiency and productivity, major reforms were introduced across the public healthcare sector.
During the economic crisis, Greece received three financial assistance packages from the European Commission, the European Central Bank, and the International Monetary Fund (the Troika)—the first in May 2010, the second in March 2012, and the third in July 2015—amounting to a total of EUR 337.21 billion. The Troika oversaw the implementation of these economic adjustment programmes until their conclusion in August 2018.
The healthcare sector was among the first to undergo substantial fiscal and financial reforms. The primary objectives of the reform agenda included the following:
(i)
Reducing expenditure on pharmaceuticals, diagnostics, and publicly reimbursed healthcare services: key reforms aimed at this objective included the introduction of an electronic prescription system, the revision of the reimbursed drug list, the promotion of generic medicines, and the implementation of a clawback mechanism, among others;
(ii)
Improving hospital management and the overall efficiency of the hospital sector: major initiatives included the establishment of the National Organisation for the Provision of Health Services (EOPYY), the enhancement of health information systems and modern accounting practices, the introduction of performance indicators, and the creation of a centralized procurement system for healthcare goods and services;
(iii)
Enhancing equity, efficiency, effectiveness, and governance of the healthcare system: reforms under this objective included the harmonization of contributions and the introduction of standardized benefit packages, the consolidation of healthcare funds and entities, and the rollout of a primary healthcare network featuring a family doctor system;
(iv)
Ensuring universal health coverage: this involved reforms such as expanding access to pharmaceuticals, diagnostic tests, and hospital inpatient care for the uninsured and low-income populations as well as reducing waiting times and improving transparency in the management of waiting lists [1,2,3,4,5,6,7,8,9,10,11,12,13].
Shortly after Greece exited the economic adjustment programmes, the COVID-19 pandemic emerged, with the first confirmed case on 26 February 2020, disrupting the NHS. One of the primary response measures was the efficient and productive reallocation of resources and recruitment of personnel. Policies and actions taken by the Greek government were summarised in Ladi et al. [14] and in Lampropoulou [15], while Sotiropoulos et al. [16] assessed their implementation. A detailed description of the government’s response measures can be found in Economou et al. [17].
The pandemic’s progression can be divided into two main phases, with the lockdowns serving as key milestones [17]:
First Lockdown (March 2020–May 2020): In response to the initial emergence of COVID-19, the Greek government swiftly implemented a nationwide lockdown in March 2020. These strict containment measures included school and business closures, travel restrictions, and a curfew. According to early epidemiological data, these actions were effective in limiting viral transmission and maintaining relatively low infection and mortality rates compared to other European countries during the first wave [18]. The health system remained largely unburdened, as case numbers were kept within manageable levels.
Second Lockdown (November 2020–May 2021): The second pandemic wave in autumn 2020 saw a significant rise in COVID-19 cases, hospitalizations, and intensive care unit (ICU) admissions, especially in Northern Greece. In November 2020, the government reintroduced strict lockdown measures, which remained in place—with intermittent adjustments—until May 2021. Despite the prolonged nature of this second lockdown, the healthcare system faced considerable strain, revealing systemic issues such as hospital overcrowding, limited ICU capacity, and regional disparities in healthcare resources [17,19].
From May 2021 onwards, no further nationwide lockdowns were imposed. Instead, targeted measures were implemented, such as mask mandates, restrictions for unvaccinated individuals, and regulations for indoor spaces, which continue to be adjusted based on prevailing conditions [17]. Thus, May 2021 can be considered a milestone marking the end of strict restrictions and the transition to a new phase of pandemic management.
Both lockdown phases had profound implications on the Greek NHS. While the first phase demonstrated the value of early intervention and public compliance, the second highlighted the vulnerability of the system under sustained pressure. The pandemic exposed long-standing weaknesses in the public health infrastructure, including underinvestment, staff shortages, and the absence of a robust primary healthcare network [17].
As the economic recession and the COVID-19 pandemic in Greece led to significant reforms across healthcare sector [14,15,20,21], it is essential from a health policy perspective to evaluate the impact of these reforms on hospital productivity over time. The ability to distinguish internal inefficiencies within a group of decision-making units (DMUs) from inefficiencies attributable to external factors, such as policies and environmental conditions, is well established through the development of two Malmquist indices: the Group Malmquist Index ( M g ) [22] and the Group Cost Malmquist Index ( C M g ) [23]. These indices compare the productivity of two groups of similar DMUs operating in different contexts, with the former measuring input efficiency and the latter assessing cost efficiency.
The M g was further refined into the Multi Group Malmquist Index ( M g m ) [22], which enables the comparison of more than two groups and ranks them in order of best to worst productivity in input terms.
This study introduces the Multi Group Cost Malmquist Index ( C M g m ), as a methodological advancement for evaluating and ranking cost efficiency across multiple groups of DMUs. Building upon the original C M g framework, the C M g m facilitates a more granular and systematic assessment by incorporating inter-group comparisons. This enhancement enables a comprehensive examination of cost productivity dynamics, particularly within healthcare systems experiencing substantial external shocks. The applicability of this novel index is demonstrated using real-world data from the Greek public healthcare sector.
Furthermore, hospital performance was measured using the Cost Malmquist Index ( C M ) [24,25] to assess cost productivity changes. The C M , derived from the Malmquist Index ( M I ) [26], evaluates input–input price–output relationships while maintaining the advantages of M I , including ease of computation, minimal assumptions, and multiple decompositions of productivity change into its root causes. A key feature of C M is its ability to compute the Allocative Efficiency Change Index ( A E C ), which measures a DMU’s ability to optimise its input mix in accordance with prevailing input prices. More details on the usefulness and the computation of A E C can be found in [24,25].
The indices were computed using the non-parametric data envelopment analysis (DEA) method, a widely used approach in the healthcare industry for efficiency measurement [27]. DEA’s advantages include its ability to handle multi-input and multi-output technologies, its applicability to small datasets with an appropriate input/output ratio, and its minimal reliance on restrictive assumptions.
In summary, this study has two primary objectives:
  • To introduce the C M g m for comparing and ranking more than two groups of DMUs based on their cost efficiency;
  • To illustrate its applicability by analysing the productivity of 109 Greek public hospitals covering the period before the economic recession and after the second lockdown during the pandemic (2009–2021); the hospital sample was further classified by bed capacity and geographical region.
The structure of the paper is as follows: Section 2 outlines the methodology applied to Greek public hospitals, giving details on the data and sampling; the theoretical background on Malmquist indices, leading to the development of the novel Malmquist index for group cost productivity comparisons; former applications of these indices according to literature; the calculation of the values using DEA; and the three models of analysis. Section 3 analyses the results, while Section 4 and Section 5 discuss the findings of the study and present conclusions and limitations, respectively.

2. Methodology

2.1. Sample and Data

The sample comprises 109 Greek non-profit general public hospitals providing a full range of secondary and tertiary healthcare services. Specialty hospitals (psychiatric, oncology, etc.) were excluded. Further details on the sample are provided in Table A1 in Appendix A. The timeframe spans from 2009 to 2021, covering the economic recession (2009–2019) and the pandemic (2019–2021). A full description of the inputs–input prices–outputs bundle is presented in Table 1. The indicators that were chosen are among those most used in the literature, and they are appropriate for the scope of this particular analysis. The dataset was retrieved from the electronic platforms of the Greek Ministry of Health (MoH), namely esy.net (2012–2014) and BI forms (2015–2021). No data point was left empty. Every value was either recorded or estimated (interpolated). For the missing values, their estimates were based on existing values from previous or subsequent years. The dataset comprised a total of 16,015 cells, of which only 229 contained missing values, representing approximately 1.4% of the data. Given the minimal proportion of missingness, a sensitivity analysis was not considered necessary, as such a low level of imputation is unlikely to exert a meaningful influence on the results.

2.2. Productivity Indices

For the purpose of this study, as mentioned earlier, the following indices were used: C M for cost productivity change measurement and C M g m for cost productivity comparison. Additionally, Cost Efficiency ( C E ) or Overall Efficiency Index ( O E ) was measured along with its decompositions: Technical Efficiency Index ( T E ), Pure Technical Efficiency Index ( P T E ), Allocative Efficiency Index ( A E ), and Scale Efficiency Index ( S E ).

2.2.1. Cost Malmquist Index ( C M )

The C M was developed by Maniadakis and Thanassoulis [24,25] to measure cost productivity changes. It is an adaptation of the M I [26] and incorporates decompositions such as the Technical Efficiency Change Index ( T E C ) and the Technical Change Index ( T C ) [28,29,30,31,32]. The C M integrates input prices alongside input quantities and is applicable in contexts where producers are assumed to be cost minimisers, provided input–output quantities and price data are available.
The C M evaluates productivity change in cost terms by comparing cost frontiers over two periods, t 0 and t 1 . A value below 1 indicates progress, a value above 1 denotes regression, and a value of 1 signifies constant productivity. C M is further decomposed into the Overall Efficiency Change Index ( O E C ) and the Cost Technical Change Index ( C T C ). These components can be further broken down as follows:
  • O E C is divided into the Technical Efficiency Change ( T E C ) and Allocative Efficiency Change ( A E C ) indices. The A E C , a key feature of C M , assesses a DMU’s ability to optimise its input mix according to prevailing input prices;
  • C T C is further decomposed into the Technical Change Index ( T C ) and the Price Effect Index ( P E ), which captures the influence of relative input price changes on minimum production costs.
The mathematical expressions for calculating the above indices are presented below:
C M = C E P t 0 I t 0 C E P t 1 I t 0 C E P t 0 I t 1 C E P t 1 I t 1
C T C = C E P t 1 I t 1 C E P t 1 I t 0 C E P t 0 I t 1 C E P t 0 I t 0
O E C = C E P t 0 I t 0 C E P t 1 I t 1
T C = E P t 1 F t 1 E P t 1 F t 0 E P t 0 F t 1 E P t 0 F t 0
T E C = E P t 0 F t 0 E P t 1 F t 1
A E C = C E P t 0 I t 0 E P t 1 F t 1 C E P t 1 I t 1 E P t 0 F t 0
P E = C E P t 1 I t 1 C E P t 1 I t 0 C E P t 0 I t 1 C E P t 0 I t 0 E P t 1 F t 0 E P t 1 F t 1 E P t 0 F t 0 E P t 0 F t 1
where C E : cost efficiency; E : efficiency; P t 0 = x t 0 , y t 0 , w t 0 : all input x t 0 /output y t 0 /input prices w t 0 combinations of DMUs in period t 0 ; P t 1 = x t 1 , y t 1 , w t 1 : all input x t 1 /output y t 1 /input prices w t 1 combinations of DMUs in period t 1 ; I t 0 , I t 1 : iso-cost frontiers in periods t 0 and t 1 , respectively; F t 0 , F t 1 : technical frontiers in periods t 0 and t 1 , respectively.
The functional relationships among the aforementioned equations are as follows:
C M = O E C × C T C     = T E C × A E C × T C × P E     = M I × A E C × P E
For further details on C M computation, see Maniadakis and Thanassoulis [24,25].

2.2.2. Group Cost Malmquist Index ( C M g )

The C M g , developed by Thanassoulis et al. [23], integrates the concepts of M g and C M . The M g , originally introduced by Camanho and Dyson [22], allows comparison of productivity between two groups of DMUs operating in different contexts (e.g., group A and group B). Unlike M g , which only considers inputs, C M g incorporates input prices, making it suitable for cost-efficiency analysis.
C M g measures the geometric mean of the cost efficiency ratios of DMUs in group B and group A relative to the cost frontier of group A and vice versa, and each DMU has its own input prices. It is decomposed into the following:
  • Group Overall Efficiency Spread Index ( O E S g ), which is further divided into Group Technical Efficiency Spread Index ( T E S g ) and Group Allocative Efficiency Index ( A E g );
  • Group Cost Frontier Gap Index ( C F g ), which is further divided into Group Technical Frontier Gap Index ( T F g ) and Group Price Effect Index ( P E g ).
A C M g value greater than 1 indicates that DMUs in group B are more cost-efficient than those in group A. A value below 1 suggests the opposite, while a value of 1 indicates equal cost productivity between the two groups. Further details on C M g and its components can be found in Thanassoulis et al. [23].

2.2.3. Multi Group Malmquist Index ( M g m )

In cases where more than two groups are involved, Camanho and Dyson [22] introduced the Multi Group Malmquist Index ( M g m ) by modifying the T F g into the Multi Group Technical Frontier Gap Index ( T F g m ) to satisfy the circular relationship. The T E S g remains unchanged in both cases. The mathematical expressions for calculating the above indices are presented below:
T F g m = 1 N 1 δ i E P i F A 1 / δ i 1 δ i E P i F B 1 / δ i 1 / N
T E S g = 1 δ B E P B F B 1 / δ B 1 δ A E P A F A 1 / δ A
M g m = T F g m × T E S g
where E : efficiency; i : groups i = 1 , , N ; N : number of groups; δ i , δ A , δ B : number of DMUs of group i , A , and B , respectively; P i = x i , y i : all input x i -output y i combinations of δ i DMUs of group i ; P A = x A y A : all input x A -output y A combinations of δ A DMUs of group A ; P B = x B y B : all input x B -output y B combinations of δ B DMUs of group B ; F A , F B : technical frontiers of group A and group B , respectively.
Further details for the computation and interpretation of M g m and its components can be found in Camanho and Dyson [22].

2.2.4. Multi Group Cost Malmquist Index ( C M g m )

This study extends C M g by ensuring that it satisfies the circular relationship when comparing more than two groups. Similar to M g m , C M g is adjusted to C M g m by modifying the C F g into the Multi Group Cost Frontier Gap Index ( C F g m ) and the P E g into the Multi Group Price Effect Index ( P E g m ). O E S g remains unchanged in this transformation. C M g m enables ranking of multiple groups by cost efficiency, which is the key contribution of this extended Malmquist index.
The mathematical expressions for calculating the above indices are presented below:
O E S g = j = 1 δ B C E P B I B 1 δ B   j = 1 δ A C E P A I A 1 δ A
A E g = j = 1 δ B C E P B I B 1 δ B j = 1 δ A C E P A I A 1 δ A × j = 1 δ A E P A F A 1 δ A j = 1 δ B E P B F B 1 δ B
C F g m = 1 N 1 δ i C E P i I A 1 / δ i 1 δ i C E P i I B 1 / δ i 1 / N
P E g m = C F g m T F g m
C M g m = O E S g × C F g m
The correlation between these equations is as follows:
C M g m   = O E S g × C F g m                                                             = T E S g × A E g × T F g m × P E g m       = M g m × A E g × P E g m                                  

2.3. Applications of the Productivity Indices

2.3.1. Studies Based on Cost Malmquist Index ( C M )

Maniadakis and Thanassoulis [25] proposed the C M and its decompositions, illustrating it with a sample of 30 Greek public hospitals for the period 1992–1993. To our knowledge, this paper is the only one to date to use C M to measure the performance of Greek public hospitals. In fact, no other study has applied this index to any other sector in Greece.
Earlier, Maniadakis and Thanassoulis [24] used their index to evaluate the performance of 75 Scottish acute hospitals following the introduction of reforms in the United Kingdom, covering the period 1991–1996. Asghar et al. [33] also applied C M in the healthcare sector, estimating the dynamics of cost productivity and its determinants within the healthcare systems of 55 member states of the Organisation of Islamic Cooperation over a five-year period (2011–2015).
Several studies have extended C M : Hosseinzadeh et al. [34] further analysed its two components, while Tohidi et al. [35] proposed the global cost Malmquist productivity index, which is circular and provides a single measure of productivity change.
Beyond the healthcare sector, C M has been applied in various industries, including agriculture, farming, air navigation, education, banking, tourism, water supply, insurance, forestry, biopharmaceuticals, security, and thermal power generation [36,37,38,39,40,41,42,43,44,45,46,47,48,49,50,51,52].

2.3.2. Studies Based on Group Cost Malmquist Index ( C M g )

Regarding C M g , only a few studies have utilised this index. Habibpoor et al. [53] applied it to assess the productivity of bank branches across different regions. Walheer [54] extended C M g to provide group-specific results for each output separately. His index is a different approach that enables identification of which output and in what percentage contributes to changes in cost performance. As an illustration, it is applied in more than two groups—five electricity plant districts—and, like C M g , this output-specific approach lacks the circularity property, too.
To address the circularity issue, Walheer [55] modified the C M g with the global Malmquist variation to incorporate its advantages. It is very well elaborated in his paper that one of the drawbacks of C M g is non-circularity. Thus, the main aim of our paper is the modification of C M g into the novel index of the Multi Group Cost Malmquist Index ( C M g m ), which is circular and can compare more than two groups of DMUs. The two versions of indices for group cost performance comparison use different methodology in constructing the technical and cost frontiers. Therefore, the choice of methodology depends on the aspect in which the comparison is intended.

2.4. Calculation of the Productivity Indices

The non-parametric mathematical programming approach of input-oriented DEA was employed to calculate cost efficiencies. The basic DEA model was introduced by Farrell in [56], but its first application dates back to the 1980s, when it was developed by Charnes et al. [57] and later extended to incorporate variable returns to scale by Banker et al. [58]. Given the unique nature of healthcare markets, DEA is currently the most appropriate method for measuring efficiency in this sector [59].
Reviews on efficiency measurement methodologies have shown that 72% of studies apply the DEA approach [60]. Several studies have reviewed healthcare performance using DEA [61,62,63,64,65,66,67], while others have systematically examined its application in the healthcare sector [59,68,69].
Moreover, there is a substantial number of studies that have reviewed DEA applications in hospital efficiency measurement, including [70,71,72,73,74,75,76,77,78,79].
For a more comprehensive and up-to-date list of DEA-related articles across various sectors, see Emrouznejad and Yang [27] and Seiford [80]. The efficiencies and cost efficiencies were computed using the R programming language, specifically the “rDEA” package.

2.5. Models of Analysis

In the first model, all hospitals were treated as a single group, and O E and its decompositions were measured. For the same sample, cost productivity change and its components were also assessed using C M .
In the second model, hospitals were classified into three groups based on bed capacity. The cost productivity of each group was compared with the others annually from 2009 to 2021 using C M g m . The three groups include the following:
  • Small-sized (S) hospitals with fewer than 200 beds;
  • Medium-sized (M) hospitals with 200–400 beds;
  • Large-sized (L) hospitals with more than 400 beds.
The grouping of hospitals based on bed capacity is a widely used and accepted approach in the literature [81,82,83,84,85,86,87,88,89,90]. This classification provides a simple yet effective way to account for scale-related differences in capacity and performance.
In the third model, hospitals were classified into seven groups according to their respective regional health authorities (RHAs) under the MoH. Each group was compared with the other six in terms of cost productivity over the same period using C M g m . The groups are as follows:
1st RHA of Attiki.
2nd RHA of Piraeus and the Aegean.
3rd RHA of Macedonia.
4th RHA of Macedonia and Thrace.
5th RHA of Thessaly and Sterea Ellada.
6th RHA of Peloponnese, Ionian Islands, Epirus, and Western Greece.
7th RHA of Crete.
More details on the composition of the hospital groups are provided in Table A1 in Appendix A.

3. Results

3.1. Entire Hospital Sample Analysis

The O E and its decompositions for the entire hospital sample from 2009 to 2021 are shown in Table 2.
Across this period, O E was 63.8%, indicating that hospitals could reduce operating costs by 36.2% to achieve full efficiency. Inefficiencies were primarily due to excessive input usage, as T E was 71.6%, meaning hospitals could reduce input levels by 28.4%. On the other hand, A E was relatively high (89%), suggesting that hospitals successfully optimised their input mix according to prevailing input prices. Additionally, hospitals operated close to the optimal scale, as indicated by the high S E level. This trend persisted during the economic crisis (2009–2019), whereas all efficiency metrics declined during the pandemic (2019–2021).
Table 3 presents C M and its components for each consecutive year, the economic crisis period (2009–2019), the pandemic (2019–2021), and the overall period (2009–2021).
The C M shows continuous cost productivity progress from 2010–2011 to 2014–2015, which was reversed in 2015–2016. The highest progress (9.5%) was observed in 2016–2017, followed by regression in 2018–2019. Interestingly, periods of regression coincided with election years (2015 and 2019), government changes, policy shifts, conflicts with the Troika, and the end of economic adjustment programmes. The worst regression (38.8%) occurred during the strict lockdown measures of the pandemic (2019–2020). After the second lockdown, the index exhibited an upward trend of 4.6% progression in 2020-2021.
For the duration of the economic crisis (2009–2019), C M indicates a 13.2% cost productivity improvement, whereas a 32.1% decline occurred during the pandemic (2019–2021). Overall, the C M for the full period (2009–2021) reveals a 15.6% regression.
The primary drivers of cost productivity changes are captured in C M components. From 2009 to 2019, the C T C advanced by 14.9%, mainly due to 14% progress in the technical frontier ( T C ), as P E progress was only 1%. This indicates that input prices (salaries and bed operational costs) changed marginally and had minimal impact on cost reductions. The second component, O E C , declined by 1.9%, meaning hospitals failed to improve efficiency through input reduction, as indicated by a 2.5% regression in T E C . However, a slight alignment with prevailing input prices (0.6% improvement in A E C ) was observed.
During the pandemic, a 36.7% regression in C T C was the primary factor behind the overall decline in productivity. Paradoxically, hospitals improved their overall efficiency by 3.4%. Over the full period, C T C declined by 17.4%, while O E C showed a slight improvement of 1.5%. Table 4 details the number of hospitals that progressed or regressed according to C M . In most years, significantly more hospitals progressed than regressed. Notably, in 2009–2010, the first year of reform implementation, most hospitals regressed. However, by 2011, 80 hospitals showed an improvement. From then on, a steady upward trend was observed, with 2017 marking the highest number (83) of progressing hospitals. Unfortunately, this trend abruptly halted during the health crisis, with all 109 hospitals regressing in 2019–2020. Encouragingly, the results for 2020–2021 suggest a return to positive trends.

3.2. Bed Capacity Grouping Analysis

According to bed capacity, hospitals were categorised into three groups: S, M, and L. These groups were compared in dyads using C M g m , generating three comparisons per year. The results are shown in Table A2 in the Appendix A. One group was used as a reference, meaning its index values were set to 1, allowing the other groups to be ranked based on performance. In this analysis, the reference group was S, leading the transformation of Table A2 into Table 5, with the ranking results according to C M g m . The values of the remaining components follow a random order depending on the group.
The M group demonstrates superior cost productivity, ranking first for nine years. Conversely, the L group ranked third for six years and second for four years. In 2018, 2019, and 2020, the rankings were reversed, but in 2021, M regained the top position. The superior performance of M is attributed to its strong performance in O E S g and T E S g . Hospitals of the M group operate very close to their cost and technological frontiers, achieving their minimum attainable costs with minimal inputs, making them more efficient. In contrast, the S group exhibits the weakest performance in O E S g and T E S g . However, it ranked first every year in C F g m and T F g m , indicating it possesses the best cost and technological frontiers, even though its hospitals operate at a distance from them.
Regarding A E g , there is no consistent leading group, as each has ranked first an equal number of times but in a random order: L for four years, M for five years, and S for four years. This suggests that hospitals across all groups occasionally manage to minimise costs by optimising their input mix and input prices. Regarding P E g m , the L group ranked first for ten years, indicating that L hospitals have a lower potential for cost savings through input mix adjustments once they achieve technical efficiency within their own technological frontier, given the prevailing input prices.

3.3. Regional Grouping Analysis

Each group of the seven RHAs was compared with the others in dyads using C M g m , generating 21 comparisons. The results are shown in Table A3 in Appendix A. The 1st RHA of Attiki, serves as the reference group, meaning its index values are set to 1. Thus, the seven RHAs can be ranked from highest to lowest productivity, and Table A3 is transformed into Table 6 with the ranking results. The values of the remaining components follow a random order depending on the group.
Over the years, group rankings have varied. By assessing how frequently each group occupied a particular ranking, they can be classified as having either strong or weak performance. Based on C M g m and M g m rankings, the 1st RHA of Attiki and the 2nd RHA of Piraeus and the Aegean exhibit the lowest productivity in cost and input terms, as they were ranked last most frequently. The 4th RHA of Macedonia and Thrace and the 6th RHA of Peloponnese, Ionian Islands, Epirus, and Western Greece display moderate performance, often occupying middle positions, whereas the 3rd RHA of Macedonia consistently secures second place. The 5th RHA of Thessaly and Sterea Ellada and the 7th RHA of Crete demonstrate high performance, ranking first or second most frequently.
Examining C M g m components, hospitals in the 4th RHA of Macedonia and Thrace and the 7th RHA of Crete operate very close to their cost and technical frontiers. This means they perform at minimum attainable costs with the lowest input quantities, as reflected in their lower efficiency spread around cost and technical frontiers (higher O E S g and T E S g values). Conversely, hospitals in the 2nd RHA of Piraeus and the Aegean exhibit the weakest cost and technical efficiency spread. The 6th RHA of Peloponnese, Ionian Islands, Epirus, and Western Greece forms the most efficient cost and technical frontiers, ranking first in C F g m and T F g m in most years, whereas the 4th RHA of Macedonia and Thrace appears to have the least efficient frontiers.
The 7th RHA of Crete excels in selecting the optimal mix of inputs and input prices, ranking first most frequently in A E g . In contrast, the 2nd RHA of Piraeus and the Aegean ranks last most years. Regarding cost-saving potential, no single group consistently outperformed, as all RHAs have occupied various ranks in P E g m over the years.

4. Discussion

This study introduces the C M g m as a novel tool for comparing and ranking the cost efficiency of multiple groups of DMUs, demonstrating its applicability in evaluating the performance of Greek public hospitals covering the period before the economic recession and after the second lockdown during the COVID-19 pandemic. By extending the original C M g , the C M g m provides a more nuanced analysis, accounting for the ranking of multiple groups and thus offering insights into cost productivity changes within a healthcare system subjected to major external shocks.
The findings highlight the substantial impact of the economic recession and pandemic on hospital cost productivity. Specifically, the Greek public hospitals demonstrated a significant decline in cost productivity during the pandemic (2019–2021), with a 32.1% decrease, which is in stark contrast to the positive productivity growth observed during the economic crisis (2009–2019). The cost frontier regression, which accounted for much of this decline, was driven by the sudden increase in demand for healthcare services, coupled with a strained resource base and the necessity for rapid resource reallocation during the health crisis. Despite the pandemic-related challenges, the results also revealed a slight recovery in 2021, after the gradual relaxation of the lockdown restrictions, suggesting that hospitals began adapting to the new realities of the pandemic, likely due to operational adjustments and government interventions.
The analysis of Greek hospitals based on bed capacity revealed that M hospitals consistently outperformed both S and L hospitals in terms of cost productivity. This performance can be attributed to the operational efficiency of M hospitals, which operate closer to their cost and technological frontiers, allowing them to optimize input use more effectively. On the other hand, S hospitals, while possessing the best cost and technological frontiers, struggled to achieve optimal efficiency, possibly due to their limited scale and higher per-unit costs. L hospitals, while showing strong performance in certain areas such as price efficiency, often lagged behind in technical efficiency, which contributed to their relatively lower cost productivity rankings.
The regional analysis provided additional insights into the geographic disparities in hospital performance across Greece. The results demonstrated a clear distinction in productivity across the seven RHAs. Specifically, the 1st RHA of Attiki and the 2nd RHA of Piraeus and the Aegean exhibited the lowest productivity, while the 5th RHA of Thessaly and Sterea Ellada and the 7th of Crete demonstrated the highest productivity levels. These findings suggest that geographical factors, such as local healthcare policies, resource distribution, and administrative efficiency, may significantly influence hospital performance. Hospitals in certain regions were able to perform at minimum attainable costs with optimized input quantities, which aligns with findings from other studies highlighting regional variations in healthcare delivery efficiency.
The use of the C M g m allowed for an in-depth comparison of cost productivity across multiple groups, providing a more granular understanding of hospital performance. The ability to rank multiple groups based on cost efficiency while accounting for the effects of external factors such as economic crises and pandemics makes the C M g m a powerful tool for health policy decisionmakers. It provides critical insights into the relative efficiency of healthcare systems in different regions and across different hospital sizes, allowing policymakers to target reforms more effectively.
In practical terms, the study’s results can support health authorities and hospital managers in identifying the most efficient hospital types and regions, enabling the reallocation of resources toward high-performing units and the implementation of efficiency-enhancing interventions in underperforming areas. Moreover, the C M g m can be applied periodically as a benchmarking mechanism to monitor the evolution of hospital efficiency over time and guide targeted management decisions.
Based on the findings, several policy actions can be proposed to improve the dynamics of the Greek public health sector. First, health policy should incentivize the replication of successful operational practices from M-sized hospitals across the system, particularly in terms of input optimization. Second, resource reallocation strategies should be tailored geographically, prioritizing support to RHAs with persistently low productivity. Third, national-level interventions should focus on reducing technical inefficiencies in L hospitals, possibly through the modernization of administrative processes and investment in workforce training. Lastly, establishing a real-time hospital productivity monitoring system, grounded on tools like C M g m , could significantly enhance transparency, accountability, and data-driven policymaking in the healthcare sector.

5. Conclusions

This study extends the Malmquist index framework by introducing the C M g m to evaluate the cost productivity of multiple groups within a healthcare system, exemplified by Greek public hospitals during the economic recession and the COVID-19 pandemic. The findings underscore the critical role of external factors such as economic crises and health emergencies in shaping hospital productivity. The results indicate that while the reforms during the economic recession (2009–2019) led to improvements in cost productivity, the pandemic (2019–2021) resulted in significant regressions, underscoring the vulnerabilities of healthcare systems during times of crisis. Nevertheless, the outcomes are encouraging, as they suggest a recovery following the definitive end of the lockdowns in May 2021.
The grouping analysis based on hospital size and regional location revealed significant variations in cost productivity. M hospitals emerged as the most efficient, while S and L hospitals faced distinct challenges. Additionally, geographical disparities in hospital performance suggest that regional factors such as governance and resource allocation play an important role in shaping healthcare efficiency.
The limitations of this study primarily stem from the weaknesses of the DEA method. It tends to attribute all deviations from the frontier to inefficiency and often estimates an excessive number of DMUs as efficient. To address this issue, we dedicated significant effort to curate the datasets used. There were instances where the data in the database were either incorrect or absent, so direct contact with the hospitals was made, or data were interpolated where archives were missing. Furthermore, special care was taken to ensure the comparability of the data. Each variable comprises several subcategories, and every entry was checked for consistency. For example, surgeries are classified as minor, medium, and major severity, so it was ensured that the number of surgeries reported by all hospitals included all three subcategories. Additionally, the dataset did not include quality variables, which would make the productivity measurement more concrete. Unfortunately, this is not particularly plausible given the limited formal registration of quality variables. Data such as QUALYs, survival rates, and mortality rates are not yet consistently recorded across all hospitals, nor do they adhere to any standardisation. One example of an attempt to assess quality in efficiency measurement in Greek hospitals is the study by Xenos et al. [91], which encountered the same limitations. A potential update to the current BI forms database could involve expanding it to include quality data as well.
Overall, the C M g m provides a valuable tool for comparing the cost productivity of healthcare systems, especially in times of reform and crisis. The study highlights the need for tailored policy interventions that consider the unique challenges faced by hospitals of different sizes and regions. As healthcare systems continue to grapple with the aftermath of the pandemic and future health challenges, tools like the C M g m will be essential for guiding evidence-based policy decisions aimed at improving healthcare efficiency and sustainability.
Future research could involve applying the C M g m in other economic sectors or testing it in a comparative framework against other methodologies focused on cost effectiveness and productivity measurement. Such explorations could enhance the methodological robustness and applicability of C M g m across broader contexts.

Author Contributions

Conceptualization, N.M.; data curation, A.F.; formal analysis, A.F., P.X. and N.M.; investigation, A.F. and G.M.; methodology, A.F., P.X. and N.M.; project administration, N.M.; resources, A.F., G.M. and N.M.; software, A.F., P.X. and G.M.; supervision, P.X. and N.M.; validation, P.X., G.M. and N.M.; visualization, A.F., P.X., G.M. and N.M.; writing—original draft, A.F.; writing—review and editing, A.F., P.X., G.M. and N.M. All authors have read and agreed to the published version of the manuscript.

Funding

The Article Processing Charge was partially funded by the Institutional Open Access Program of the University of Piraeus. This research received no other grants from public, commercial, or not-for-profit funding agencies.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Raw data were retracted from Ministry of Health of Greece databases esy.net and BI forms after appropriate authorization since they are not publicly available. Cleared datasets are available from the authors upon request and after Ministry of Health of Greece approval.

Conflicts of Interest

All authors declare that they have no conflicts of interest.

Abbreviations

AEAllocative Efficiency Index
AECAllocative Efficiency Change Index
AEgGroup Allocative Efficiency Index
CECost Efficiency
CFgGroup Cost Frontier Gap Index
CFgmMulti group Cost Frontier Gap Index
CMCost Malmquist Index
CMgGroup Cost Malmquist Index
CMgmMulti Group Cost Malmquist Index
CTCCost Technical Change Index
DEAData Envelopment Analysis
DMUDecision-Making Unit
ICUIntensive Care Unit
LLarge-sized hospitals >400 beds
MMedium-sized hospitals >200–<400 beds
Malmquist Index
MgGroup Malmquist Index
MgmMulti Group Malmquist Index
MoHMinistry of Health
NHSNational Health System
OEOverall Efficiency Index
OECOverall Efficiency Change Index
OESgGroup Overall Efficiency Spread Index
PEPrice Effect Index
PEgGroup Price Effect Index
PEgmMulti Group Price Effect Index
PTEPure Technical Efficiency Index
RHARegional Health Authority
SSmall-sized hospitals < 200 beds
SEScale Efficiency Index
TCTechnical Change Index
TETechnical Efficiency Index
TECTechnical Efficiency Change Index
TESgGroup Technical Efficiency Spread Index
TFgGroup Technical Frontier Gap Index
TFgmMulti Group Technical Frontier Gap Index

Appendix A

Table A1. All 109 included Greek public hospitals grouped according to bed capacity and RHA.
Table A1. All 109 included Greek public hospitals grouped according to bed capacity and RHA.
DMUBCDMUBC
1st RHA of Attiki4th RHA of Macedonia and Thrace (cont.)
1Spiliopouleio Hospital “Agia EleniS9G.H. of XanthiM
2G.H. of Athens “ElpisS10G.H. of KilkisM
3G.H. “PammakaristosS11G.H. of Thessaloniki “IppokrateioL
4Children’s Hospital in PenteliS12University G.H. of AlexandroupoliL
5G.H. of Nea Ionia “KonstadopouleioM13University G.H. of Thessaloniki “AHEPAL
6Children’s Hospital “P. & A. KyriakouM5th RHA of Thessaly and Sterea Ellada
7G.H. of Attica “KATL1G.H. of AmfissaS
8G.H. of Athens “SotiriaL2G.H. of ThebesS
9G.H. of Athens “AlexandraL3G.H. of KarpenisiS
10Merger: G.H. of Attica “Sismanogleio and G.H. of Melissia “Amalia FlemingL4G.H. of LevadiaS
11G.H. of Athens “IppokrateioL5G.H. of ChalkidaS
12G.H. of Athens “EvangelismosL6G.H./H.C. of Kymi “G. Papanikolaou”S
13G.H. of Athens “Korgialeneio–Benakeio Hellenic Red CrossL7G.H.–H.C. of Karystos “DiokleionS
14Children’s Hospital “Agia SofiaL8G.H. of Volos “AchillopouleioM
15G.H. of Athens “Georgios GennimatasL9G.H. of TrikalaM
16G.H. of Athens “LaikoL10G.H. of KarditsaM
17G.H. “Elena VenizelouL11G.H. of Larissa “Koutlibaneio–TriantaphylleioM
2nd RHA of Piraeus and Aegean12G.H. of LamiaM
1G.H./H.C. of IkariaS13University G.H. of LarissaL
2G.H. of Samos “Agios PandeleimonS6th RHA of Peloponnese, Ionian Islands, Epirus and Western Greece
3G.H. of Syros “Vardakeio & ProioS1G.H./H.C. of Lixouri “MantzavinateioS
4G.H./H.C. of Kalymnos “VouvaleioS2G.H. of KyparissiaS
5G.H./H.C. of Kythira “TriphylleioS3G.H. of KefaloniaS
6G.H./H.C. of Kos “IppokrateionS4G.H. of East Achaia–Kalavryta branchS
7G.H./H.C. of LimnosS5G.H. of LefkadaS
8G.H. of Chios “SkylitseioS6G.H. of Zante “Agios DionysiosS
9G.H./H.C. of NaxosS7G.H. of PrevezaS
10G.H. of Elefsina “ThriasioM8G.H. of East Achaia–Aigio branchS
11G.H. of Mytilini “VostaneioM9G.H. of Lakonia–Sparta branchS
12G.H. of Voula “AsklepieioM10G.H./H.C. of FiliatesS
13G.H. of Rhodes “Andreas G. PapandreouM11Children’s G.H. of Patra “KaramandaneioS
14Merger: G.H. of Nikaia “Agios Panteleimon” and G.H. of West Attica “Agia VarvaraL12G.H. of Heleia–Pyrgos branchS
15G.H. of Piraeus “TzaneioL13G.H. of Aetolia–Acarnania–Agrinio branchS
16University G.H. “AttikonL14G.H. of Argolida–Nafplio branchS
3rd RHA of Macedonia15G.H. of Heleia–Amaliada branchS
1G.H. of Kozani “MamatseioS16G.H. of CorinthS
2G.H. of GrevenaS17G.H./H.C. of KrestenaS
3G.H. of Pella–Giannitsa branchS18G.H. of Argolida–Argos branchS
4G.H. of Pella–Edessa branchS19G.H. of Aetolia–Acarnania–Messolongi branchS
5G.H. of Imathia–Naousa branchS20G.H. of Lakonia–Molaoi branchS
6G.H. of Florina “Eleni T. DimitriouS21Panarcadic G.H. of Tripoli “EvangelistriaM
7G.H. of Thessaloniki “Agios DimitriosS22G.H. of ArtaM
8G.H. of Imathia–Veroia branchS23G.H. of Ioannina “G. ChatzikostasM
9G.H. of KateriniS24G.H. of Kalamata M
10G.H. of KastoriaS25G.H. of Corfu “Agia EiriniM
11G.H. of Thessaloniki “G. GennimatasM26Merger: G.H. of Patra “Agios Andreas” and Hospital of Thoracic Diseases of Patra “Agios LoukasM
12G.H. of Ptolemaida “BodosakeioM27University G.H. of Patra “Panagia VoitheiaL
13G.H. of Thessaloniki “PapageorgiouL28University G.H. of IoanninaL
14G.H. of Thessaloniki “G. PapanikolaouL7th RHA of Crete
4th RHA of Macedonia and Thrace1G.H. of Lasithi–Siteia branchS
1G.H. of ChalkidikiS2G.H. of Agios NikolaosS
2G.H./H.C. of GoumenissaS3G.H. of Lasithi–Neapoli branchS
3G.H. of DidimoteichoS4G.H./H.C. of IerapetraS
4G.H. of SerresM5G.H. of RethymnoM
5G.H. of Thessaloniki “Agios PavlosM6G.H. of Chania “Agios GeorgiosL
6G.H. of Komotini “SismanogleioM7University G.H. of HerakleioL
7G.H. of KavalaM8G.H. of Herakleio “Venizeleio–PananeioL
8G.H. of DramaM
RHA: Regional Health Authority; DMU: decision-making unit; BC: bed capacity; G.H.: general hospital; H.C.: health centre; S: small size (<200 beds); M: medium size (≥200–≤400 beds); L: large size (>400 beds).
Table A2. Cost productivity comparison of groups of hospitals per bed capacity with CMgm and components during 2009–2021.
Table A2. Cost productivity comparison of groups of hospitals per bed capacity with CMgm and components during 2009–2021.
YearGroup A–Group BCMgmOESgCFgmAEgPEgmMgmTESgTFgm
2009S–M1.0431.3640.7651.0490.9571.0401.3000.800
S–L0.9831.3540.7261.0550.9820.9491.2840.739
M–L0.9420.9930.9481.0061.0260.9130.9870.924
2010S–M0.9951.1470.8671.0150.9920.9881.1310.874
S–L0.9671.0510.9201.0001.0480.9231.0510.878
M–L0.9720.9161.0610.9861.0560.9340.9301.005
2011S–M1.0831.1160.9701.0121.0161.0531.1030.955
S–L0.9591.0760.8911.0141.0500.9011.0610.849
M–L0.8860.9640.9191.0021.0340.8550.9620.889
2012S–M1.1191.1280.9930.9881.0311.0981.1410.963
S–L0.9331.0750.8681.0071.0280.9011.0670.844
M–L0.8340.9540.8741.0190.9970.8210.9350.877
2013S–M1.0501.1800.8900.9921.0221.0351.1890.870
S–L0.9361.0810.8660.9981.0270.9141.0830.844
M–L0.8910.9160.9741.0051.0040.8830.9110.969
2014S–M1.0591.1130.9510.9911.0211.0461.1230.932
S–L1.0141.0710.9470.9881.0510.9771.0840.901
M–L0.9580.9620.9950.9961.0290.9340.9660.967
2015S–M1.0681.1830.9021.0090.9821.0781.1730.919
S–L1.0151.0650.9530.9861.0221.0071.0800.932
M–L0.9500.9001.0560.9781.0400.9340.9201.015
2016S–M1.0111.0650.9500.9881.0290.9951.0780.923
S–L0.9630.9511.0130.9841.0440.9370.9660.970
M–L0.9520.8931.0670.9961.0150.9420.8961.051
2017S–M1.0271.2660.8120.9931.0101.0251.2750.804
S–L1.0041.1450.8771.0151.0180.9711.1280.861
M–L0.9770.9051.0801.0231.0080.9480.8851.071
2018S–M0.9991.5150.6600.9871.0220.9901.5350.645
S–L1.0121.3130.7700.9961.0400.9771.3180.741
M–L1.0130.8671.1681.0091.0170.9870.8591.149
2019S–M0.9831.4140.6951.0011.0060.9761.4120.691
S–L1.0301.1910.8650.9931.0420.9961.2000.830
M–L1.0480.8421.2440.9921.0361.0200.8501.201
2020S–M1.0931.3990.7811.0041.0001.0901.3940.781
S–L1.1341.1590.9780.9941.0281.1091.1660.951
M–L1.0370.8281.2520.9911.0291.0180.8361.217
2021S–M1.0601.3740.7721.0460.9841.0301.3130.784
S–L1.0461.2130.8621.0260.9961.0231.1820.865
M–L0.9870.8831.1170.9811.0120.9930.9001.104
CMgm: Multi Group Cost Malmquist Index; OESg: Group Overall Efficiency Spread; CFgm: Multi Group Cost Frontier Gap; AEg: Group Allocative Efficiency; PEgm: Multi Group Price Effect; Mgm: Multi Group Malmquist Index; TESg: Group Technical Efficiency Spread; TFgm: Multi Group Technical Frontier Gap; S: Small size (<200 beds); M: Medium size (≥200–≤400 beds); L: Large size (>400 beds).
Table A3. Cost productivity comparison of groups of hospitals per RHA with CMgm and components during 2009–2021.
Table A3. Cost productivity comparison of groups of hospitals per RHA with CMgm and components during 2009–2021.
YearGroup A–Group B1–
2
1–
3
1–
4
1–
5
1–
6
1–
7
2–
3
2–
4
2–
5
2–
6
2–
7
3–
4
3–
5
3–
6
3–
7
4–
5
4–
6
4–
7
5–
6
5–
7
6–
7
2009CMgm0.961.401.241.431.311.131.461.291.491.371.170.881.020.940.811.161.060.910.920.790.86
OESg0.991.081.151.120.941.151.101.171.140.951.161.061.040.861.060.980.811.000.831.021.23
CFgm0.971.291.071.271.400.981.331.111.311.441.010.830.991.080.761.191.300.911.100.770.70
AEg0.991.011.000.990.981.011.021.011.000.991.020.990.980.970.991.000.981.010.981.011.03
PEgm1.000.990.991.021.011.010.980.991.011.011.011.001.031.021.031.031.021.020.991.001.00
Mgm0.961.401.251.411.331.101.451.301.471.371.140.891.010.950.791.131.060.880.940.780.83
TESg1.001.071.151.130.961.141.071.161.130.961.151.081.060.891.070.980.830.990.851.011.19
TFgm0.971.311.091.251.390.971.351.121.291.431.000.830.961.060.741.151.280.891.110.770.70
2010CMgm1.111.351.251.311.351.241.211.131.181.221.110.930.971.010.921.051.080.991.030.940.91
OESg0.991.181.191.151.041.241.191.191.161.051.241.000.980.881.050.970.881.040.911.071.18
CFgm1.121.141.061.141.301.001.020.941.021.160.890.931.001.140.881.081.230.951.140.880.77
AEg0.981.010.990.991.001.021.031.011.011.031.040.980.981.001.011.001.011.031.011.031.02
PEgm1.010.981.011.010.981.000.971.001.000.970.991.031.031.001.021.000.970.990.970.991.02
Mgm1.131.371.251.311.381.211.211.111.171.221.070.920.961.010.891.051.100.971.050.920.88
TESg1.021.171.201.161.041.211.151.181.141.021.191.020.990.891.030.970.871.010.891.041.17
TFgm1.111.161.051.131.321.001.050.951.021.190.900.900.971.140.861.081.260.951.170.880.76
2011CMgm1.061.361.241.331.251.171.281.171.251.181.110.910.970.920.861.071.010.950.940.880.94
OESg0.931.141.151.221.051.271.221.241.321.131.371.011.080.921.121.060.911.100.861.041.21
CFgm1.141.201.081.081.190.921.050.940.951.040.810.900.901.000.771.001.110.861.100.850.77
AEg0.981.001.001.010.991.011.021.031.031.011.041.011.020.991.021.010.981.010.981.001.03
PEgm1.011.031.011.011.031.011.021.001.001.021.000.980.981.000.981.001.021.011.021.010.99
Mgm1.071.331.221.301.231.141.241.141.211.151.060.920.980.930.861.061.010.930.950.880.92
TESg0.951.141.141.211.061.251.201.211.281.121.321.001.060.931.101.060.931.090.881.031.18
TFgm1.131.161.071.081.160.911.030.940.951.030.810.920.921.000.781.011.090.851.080.850.78
2012CMgm1.041.231.161.321.191.161.191.121.271.141.120.941.070.960.941.141.021.000.900.880.98
OESg0.881.031.081.150.961.251.171.241.311.091.421.051.120.931.211.060.891.150.831.081.30
CFgm1.181.201.071.151.240.931.010.910.971.050.790.900.961.030.781.071.150.871.080.810.76
AEg1.000.981.001.001.001.010.981.001.001.001.011.021.031.031.041.011.011.021.001.011.01
PEgm1.011.051.001.011.001.001.040.991.000.991.000.950.960.950.951.011.001.010.991.001.00
Mgm1.031.201.171.311.181.151.171.131.271.151.110.971.090.980.951.121.010.980.900.880.97
TESg0.881.061.091.150.961.231.201.241.311.091.401.031.090.911.161.060.881.130.831.071.29
TFgm1.171.141.081.141.240.930.970.920.971.050.790.941.001.080.821.061.150.871.080.820.75
2013CMgm1.001.221.161.231.161.141.231.161.241.171.140.951.010.950.931.071.010.980.940.920.98
OESg0.920.981.071.070.961.161.071.171.171.051.271.091.090.981.190.990.891.080.901.091.21
CFgm1.091.241.081.161.210.981.140.991.061.120.900.870.930.980.791.071.130.911.050.850.81
AEg1.000.991.021.000.981.020.991.021.010.981.021.031.010.991.030.980.961.000.981.011.04
PEgm1.001.020.991.001.011.001.020.981.001.011.000.970.980.990.981.011.021.011.011.000.99
Mgm0.991.211.141.231.171.111.211.151.241.181.120.951.020.970.931.071.020.970.960.910.95
TESg0.920.991.051.060.981.141.081.141.161.061.251.061.070.991.151.010.931.090.921.071.17
TFgm1.081.221.091.151.200.981.121.011.071.110.900.900.950.990.801.061.100.891.040.850.81
2014CMgm0.921.151.051.071.091.101.251.141.161.181.190.910.930.950.961.021.041.051.021.031.01
OESg0.951.061.121.090.991.091.121.181.151.051.161.051.020.931.030.970.880.980.911.011.10
CFgm0.971.080.940.991.101.011.110.961.011.131.030.870.911.020.931.051.181.071.121.020.91
AEg1.031.001.031.020.991.040.971.000.990.971.011.031.021.001.040.990.961.010.981.021.05
PEgm0.981.010.991.001.021.011.031.011.021.041.030.980.991.011.001.011.031.021.021.010.99
Mgm0.911.141.031.051.081.041.251.131.151.181.140.910.920.950.921.021.051.011.020.990.97
TESg0.921.071.091.071.001.051.161.181.161.081.141.021.000.940.980.980.920.970.930.981.05
TFgm0.991.060.950.981.080.991.070.960.991.091.000.890.921.010.931.041.141.051.101.010.92
2015CMgm0.971.091.031.101.051.091.131.061.141.081.130.941.010.961.001.071.011.060.950.991.05
OESg0.881.091.131.101.021.091.241.281.251.151.241.041.010.931.000.970.900.970.931.001.08
CFgm1.101.000.911.001.031.000.910.830.910.940.910.911.001.021.001.101.131.101.031.000.97
AEg1.000.991.021.021.011.030.991.021.021.011.031.031.031.021.041.000.991.010.991.011.02
PEgm1.001.021.000.990.991.001.020.990.990.991.000.980.980.980.981.001.001.011.001.011.01
Mgm0.971.091.021.091.041.061.121.051.121.081.100.941.000.960.981.071.031.040.960.981.02
TESg0.881.101.111.081.011.061.251.261.221.141.211.010.980.920.970.970.910.960.940.991.06
TFgm1.100.990.911.011.041.000.900.830.920.940.910.931.021.051.011.101.131.091.030.990.96
2016CMgm1.081.231.161.241.271.301.141.081.151.171.210.941.011.031.061.071.091.121.021.051.03
OESg0.971.071.121.090.991.061.111.161.131.031.101.051.020.930.990.970.890.950.910.971.07
CFgm1.111.141.031.141.271.231.030.931.021.141.100.900.991.111.071.101.231.191.121.080.96
AEg1.010.971.011.010.971.020.960.991.000.951.001.041.041.001.051.010.961.010.951.011.05
PEgm1.001.031.011.011.011.021.031.011.021.021.020.980.990.990.991.011.011.011.001.001.00
Mgm1.061.231.141.211.291.251.161.071.141.211.180.930.981.051.021.061.131.101.071.040.97
TESg0.951.101.111.081.031.041.161.171.131.081.091.010.980.930.940.970.930.940.960.971.01
TFgm1.121.121.031.121.251.201.000.921.001.121.080.921.011.121.081.091.221.171.121.070.96
2017CMgm0.971.101.051.091.161.251.141.081.121.201.290.950.991.051.141.041.111.201.071.151.08
OESg0.811.061.121.070.921.061.301.381.311.131.311.061.000.871.000.950.820.950.861.001.16
CFgm1.201.040.931.031.271.180.870.780.861.060.990.900.991.221.131.101.361.271.231.150.93
AEg1.000.981.001.010.961.020.981.001.010.961.021.021.030.981.041.010.961.020.951.021.06
PEgm1.001.011.011.001.021.011.011.011.001.021.011.000.991.011.000.991.011.001.021.010.99
Mgm0.971.111.041.081.191.221.141.071.111.221.250.930.971.071.091.041.141.171.091.121.02
TESg0.811.081.131.060.961.041.331.381.301.171.281.040.980.880.960.940.850.920.900.981.09
TFgm1.191.030.921.021.241.170.860.770.861.040.980.901.001.211.141.111.341.271.211.140.94
2018CMgm1.031.181.111.171.171.281.141.081.141.141.240.941.000.991.091.061.051.151.001.091.10
OESg0.721.081.211.130.931.051.501.671.551.291.441.121.040.860.960.930.770.860.830.931.12
CFgm1.421.090.921.041.261.230.760.640.730.880.860.840.961.151.131.141.371.341.201.170.98
AEg0.950.981.021.010.981.031.031.061.061.021.081.031.031.001.050.990.961.020.971.021.06
PEgm1.041.011.001.001.021.010.970.960.960.980.970.980.991.011.001.011.021.011.021.000.99
Mgm1.041.191.101.161.181.231.151.061.121.131.190.930.980.991.041.061.071.121.011.061.05
TESg0.761.101.191.120.961.011.451.571.471.261.331.081.010.860.920.940.800.850.850.911.06
TFgm1.371.080.921.041.231.220.790.670.760.900.890.860.971.141.131.131.341.321.181.170.99
2019CMgm1.081.181.111.171.171.301.091.021.081.081.200.940.990.991.101.061.061.181.001.111.11
OESg0.871.091.231.170.991.031.251.411.341.131.181.131.080.910.940.950.800.830.840.871.04
CFgm1.241.080.901.001.181.270.870.720.800.951.020.830.921.091.171.111.321.411.191.271.07
AEg0.951.001.021.010.981.001.051.071.061.031.051.021.010.991.000.990.970.980.981.001.02
PEgm1.041.010.991.011.011.030.980.950.970.970.990.971.000.991.011.021.021.041.001.021.02
Mgm1.101.171.101.151.181.261.061.001.051.071.150.940.991.011.081.051.071.151.021.101.07
TESg0.921.091.211.171.001.021.191.321.271.091.121.111.070.920.940.970.830.850.860.881.02
TFgm1.201.070.910.991.181.230.890.760.820.981.030.850.921.101.151.081.291.351.191.251.05
2020CMgm1.181.121.121.171.171.340.950.950.990.991.131.001.041.051.201.041.041.191.001.151.15
OESg1.021.131.221.120.971.121.111.191.100.951.101.080.990.860.990.920.800.920.861.001.16
CFgm1.160.990.921.041.211.200.860.800.901.051.030.931.051.221.211.121.311.301.171.150.99
AEg0.961.001.000.991.001.011.041.051.041.041.051.010.991.001.010.990.991.001.011.021.01
PEgm1.011.000.980.990.971.001.000.980.980.971.000.980.990.971.001.010.991.020.981.011.03
Mgm1.231.121.141.191.211.330.910.920.970.981.081.021.061.081.191.051.061.171.011.121.10
TESg1.071.131.211.140.971.121.061.131.060.911.041.071.000.860.990.940.800.920.850.981.15
TFgm1.150.990.941.051.241.190.860.820.911.081.040.951.061.261.211.121.321.271.191.140.96
2021CMgm1.291.521.271.271.271.491.180.990.980.981.160.840.830.840.980.991.001.171.011.181.17
OESg0.861.161.041.020.931.001.341.201.191.081.160.900.880.800.860.990.890.960.910.971.08
CFgm1.501.321.231.241.371.500.880.820.830.921.000.930.941.041.141.011.121.221.111.211.09
AEg0.870.990.960.950.980.971.141.111.091.131.110.970.960.990.970.991.021.001.031.020.98
PEgm1.081.001.061.010.981.020.920.980.930.910.941.061.010.981.020.950.930.960.971.001.03
Mgm1.371.531.251.321.321.521.120.910.960.961.110.810.860.860.991.061.061.221.001.161.15
TESg0.991.171.081.070.941.031.181.091.080.951.040.920.920.810.881.000.880.960.880.961.09
TFgm1.381.321.161.221.401.480.950.840.881.011.070.880.931.061.121.061.211.271.141.211.06
CMgm: Multi Group Cost Malmquist Index; OESg: Group Overall Efficiency Spread; CFgm: Multi Group Cost Frontier Gap; AEg: Group Allocative Efficiency; PEgm: Multi Group Price Effect; Mgm: Multi Group Malmquist Index; TESg: Group Technical Efficiency Spread; TFgm: Multi Group Technical Frontier Gap; RHA: Regional Health Authority.

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Table 1. Description of inputs, input prices, and outputs.
Table 1. Description of inputs, input prices, and outputs.
IndicatorDescriptionTime of Measurement
INPUTS
Bed CapacityNumber of fully equipped operational bedsIn December each year
Total PersonnelTotal number of
Doctors: Specialised consultants and interns.
Nurses: Registered nurses with higher education (four-year courses).
Scientific staff: Physiotherapists, pharmacists, dentists, radiologists, dieticians, psychologists, biochemists, and social workers.
Clinical support staff: Vocational nurses, laboratory staff, and others.
Administrative staff: Economists, accountants, secretaries, statisticians, and IT staff.
Technical staff: electricians, plumbers, builders, and general maintenance workers.
INPUT PRICES
Operating Costs per Bed CapacityPharmaceutical costs
Consumables costs
Services costs
Total for the 12 months of each year
Salaries Cost per Total Personnel
OUTPUTS
Hospitalised PatientsTotal number of patients admitted to all hospital sectors.Total for the 12 months of each year
Outpatient CasesTotal number of patients who visited the all-day outpatient department and the emergency department.
OperationsNumber of scheduled or emergency surgical procedures categorised as minor, moderate, or major severity.
Table 2. Overall Efficiency of 109 Greek public hospitals and decompositions during 2009–2021.
Table 2. Overall Efficiency of 109 Greek public hospitals and decompositions during 2009–2021.
YearOETEPTEAESE
20090.6090.6950.7900.8760.880
20100.7070.7640.8190.9250.933
20110.7150.7850.8390.9110.936
20120.6090.6950.7900.8760.880
20130.6830.7680.8150.8890.942
20140.7060.7790.8230.9050.947
20150.6870.7700.8260.8930.932
20160.5990.7070.7660.8470.923
20170.6100.6750.7460.9040.905
20180.5590.6240.7300.8960.854
20190.5970.6640.7500.8990.886
20200.6160.7070.7600.8710.930
20210.6180.6970.7430.8860.938
MEAN 2009–20190.6410.7190.7900.8930.910
MEAN 2019–20210.6100.6890.7510.8860.918
MEAN 2009–20210.6380.7160.7840.8900.914
OE: Overall Efficiency; TE: Technical Efficiency; PTE: Pure Technical Efficiency; AE: Allocative Efficiency; SE: Scale Efficiency.
Table 3. Cost productivity change of 109 Greek public hospitals with CM and decompositions during 2009–2021.
Table 3. Cost productivity change of 109 Greek public hospitals with CM and decompositions during 2009–2021.
PeriodsCMCTCOECAECPEMITCTEC
2009–20101.0071.1700.8610.9751.0281.0051.1380.883
2010–20110.9550.9670.9881.0150.9800.9600.9860.973
2011–20120.9900.9371.0570.9950.9891.0070.9471.063
2012–20130.9710.9790.9911.0080.9830.9790.9960.984
2013–20140.9781.0110.9671.0050.9940.9791.0170.962
2014–20150.9930.9671.0271.0020.9911.0000.9761.025
2015–20161.0400.9071.1471.0210.9791.0410.9261.124
2016–20170.9050.9210.9820.9731.0250.9070.8991.009
2017–20180.9830.9011.0910.9941.0070.9810.8941.097
2018–20191.0241.0930.9361.0070.9931.0241.1010.930
2019–20201.3881.4310.9700.9831.0301.3711.3890.987
2020–20210.9540.9580.9961.0180.9810.9560.9770.978
2009–20190.8680.8511.0190.9940.9900.8820.8601.025
Mean 2009–20190.9840.9821.0020.9990.9970.9880.9851.003
2019–20211.3211.3670.9661.0010.9931.3291.3770.965
Mean 2019–20211.1511.1710.9831.0011.0051.1441.1650.983
2009–20211.1561.1740.9850.9950.9931.1701.1820.990
Mean 2009–20211.0101.0110.9991.0000.9981.0121.0130.999
CM: Cost Malmquist Index; CTC: Cost Technical Change; OEC: Overall Efficiency Change; AEC: Allocative Efficiency Change; PE: Price Effect; MI: Malmquist Index; TC: Technical Change; TEC: Technical Efficiency Change.
Table 4. Number of Greek public hospitals that progressed or regressed according to CM during 2009–2021.
Table 4. Number of Greek public hospitals that progressed or regressed according to CM during 2009–2021.
2009–
2010
2010–
2011
2011–
2012
2012–
2013
2013–
2014
2014–
2015
2015–
2016
2016–
2017
2017–
2018
2018–
2019
2019–
2020
2020–
2021
2009–
2019
2019–
2021
2009–
2021
<14780627371564483683706781634
>162294735375365264072109422810375
<1: progress; >1: regress; CM: Cost Malmquist Index.
Table 5. Ranking of groups of hospitals per bed capacity according to CMgm and components during 2009–2021.
Table 5. Ranking of groups of hospitals per bed capacity according to CMgm and components during 2009–2021.
YearRanking of GroupsCMgmOESgCFgmAEgPEgmMgmTESgTFgm
20091stM1.0431.3640.7651.0490.9571.0401.3000.800
2ndS1.0001.0001.0001.0001.0001.0001.0001.000
3rdL0.9831.3540.7261.0550.9820.9491.2840.739
20101stS1.0001.0001.0001.0001.0001.0001.0001.000
2ndM0.9951.1470.8671.0150.9920.9881.1310.874
3rdL0.9671.0510.9201.0001.0480.9231.0510.878
20111stM1.0831.1160.9701.0121.0161.0531.1030.955
2ndS1.0001.0001.0001.0001.0001.0001.0001.000
3rdL0.9591.0760.8911.0141.0500.9011.0610.849
20121stM1.1191.1280.9930.9881.0311.0981.1410.963
2ndS1.0001.0001.0001.0001.0001.0001.0001.000
3rdL0.9331.0750.8681.0071.0280.9011.0670.844
20131stM1.0501.1800.8900.9921.0221.0351.1890.870
2ndS1.0001.0001.0001.0001.0001.0001.0001.000
3rdL0.9361.0810.8660.9981.0270.9141.0830.844
20141stM1.0591.1130.9510.9911.0211.0461.1230.932
2ndL1.0141.0710.9470.9881.0510.9771.0840.901
3rdS1.0001.0001.0001.0001.0001.0001.0001.000
20151stM1.0681.1830.9021.0090.9821.0781.1730.919
2ndL1.0151.0650.9530.9861.0221.0071.0800.932
3rdS1.0001.0001.0001.0001.0001.0001.0001.000
20161stM1.0111.0650.9500.9881.0290.9951.0780.923
2ndS1.0001.0001.0001.0001.0001.0001.0001.000
3rdL0.9630.9511.0130.9841.0440.9370.9660.970
20171stM1.0271.2660.8120.9931.0101.0251.2750.804
2ndL1.0041.1450.8771.0151.0180.9711.1280.861
3rdS1.0001.0001.0001.0001.0001.0001.0001.000
20181stL1.0121.3130.7700.9961.0400.9771.3180.741
2ndS1.0001.0001.0001.0001.0001.0001.0001.000
3rdM0.9991.5150.6600.9871.0220.9901.5350.645
20191stL1.0301.1910.8650.9931.0420.9961.2000.830
2ndS1.0001.0001.0001.0001.0001.0001.0001.000
3rdM0.9831.4140.6951.0011.0060.9761.4120.691
20201stL1.1341.1590.9780.9941.0281.1091.1660.951
2ndM1.0931.3990.7811.0041.0001.0901.3940.781
3rdS1.0001.0001.0001.0001.0001.0001.0001.000
20211stM1.0601.3740.7721.0460.9841.0301.3130.784
2ndL1.0461.2130.8621.0260.9961.0231.1820.865
3rdS1.0001.0001.0001.0001.0001.0001.0001.000
CMgm: Multi Group Cost Malmquist Index; OESg: Group Overall Efficiency Spread; CFgm: Multi Group Cost Frontier Gap; AEg: Group Allocative Efficiency; PEgm: Multi Group Price Effect; Mgm: Multi Group Malmquist Index; TESg: Group Technical Efficiency Spread; TFgm: Multi Group Technical Frontier Gap; S: Small size (<200 beds); M: Medium size (≥200–≤400 beds); L: Large size (>400 beds); Reference: Small size.
Table 6. Ranking of groups of hospitals per RHA, according to CMgm and components during 2009–2021.
Table 6. Ranking of groups of hospitals per RHA, according to CMgm and components during 2009–2021.
YearRanking of GroupsCMgmOESgCFgmAEgPEgmMgmTESgTFgm
20091st5th RHA1.4291.1211.2740.9941.0181.4121.1281.252
2nd3rd RHA1.3971.0821.2911.0120.9861.4001.0691.310
3rd6th RHA1.3100.9351.4010.9791.0101.3250.9551.387
4th4th RHA1.2351.1501.0740.9980.9901.2501.1521.085
5th7th RHA1.1251.1490.9791.0071.0131.1031.1410.967
6th1st RHA1.0001.0001.0001.0001.0001.0001.0001.000
7th2nd RHA0.9580.9860.9720.9901.0040.9640.9960.968
20101st6th RHA1.3551.0441.2981.0040.9801.3761.0391.324
2nd3rd RHA1.3471.1811.1411.0070.9801.3651.1731.164
3rd5th RHA1.3111.1521.1380.9901.0071.3151.1631.130
4th4th RHA1.2511.1851.0560.9911.0071.2541.1961.049
5th7th RHA1.2351.2351.0001.0201.0001.2111.2111.000
6th2nd RHA1.1100.9931.1180.9771.0081.1281.0161.110
7th1st RHA1.0001.0001.0001.0001.0001.0001.0001.000
20111st3rd RHA1.3621.1361.1990.9971.0291.3271.1401.165
2nd5th RHA1.3251.2241.0831.0131.0071.3001.2091.075
3rd6th RHA1.2521.0481.1940.9881.0271.2341.0611.163
4th4th RHA1.2391.1491.0781.0051.0071.2241.1441.070
5th7th RHA1.1721.2680.9241.0151.0131.1401.2500.912
6th2nd RHA1.0600.9281.1430.9791.0101.0730.9481.132
7th1st RHA1.0001.0001.0001.0001.0001.0001.0001.000
20121st5th RHA1.3221.1501.1501.0031.0071.3091.1461.142
2nd3rd RHA1.2331.0291.1980.9751.0511.2031.0551.140
3rd6th RHA1.1870.9591.2371.0041.0011.1810.9561.236
4th7th RHA1.1641.2450.9351.0131.0031.1461.2290.932
5th4th RHA1.1631.0831.0730.9970.9971.1691.0861.076
6th2nd RHA1.0370.8771.1830.9991.0081.0300.8781.174
7th1st RHA1.0001.0001.0001.0001.0001.0001.0001.000
20131st5th RHA1.2331.0681.1551.0051.0011.2261.0621.154
2nd3rd RHA1.2190.9811.2440.9911.0211.2050.9891.218
3rd6th RHA1.1640.9601.2130.9831.0091.1730.9761.201
4th4th RHA1.1561.0731.0771.0240.9871.1441.0491.091
5th7th RHA1.1371.1630.9781.0191.0011.1151.1420.976
6th1st RHA1.0001.0001.0001.0001.0001.0001.0001.000
7th2nd RHA0.9950.9151.0870.9991.0040.9920.9171.083
20141st3rd RHA1.1501.0651.0800.9971.0151.1361.0681.064
2nd7th RHA1.1011.0941.0071.0401.0141.0441.0520.993
3rd6th RHA1.0920.9911.1020.9931.0221.0770.9981.078
4th5th RHA1.0731.0870.9871.0181.0041.0511.0690.983
5th4th RHA1.0511.1210.9381.0300.9911.0301.0880.947
6th1st RHA1.0001.0001.0001.0001.0001.0001.0001.000
7th2nd RHA0.9220.9470.9741.0280.9830.9120.9210.991
20151st5th RHA1.1011.0981.0021.0200.9941.0861.0771.008
2nd3rd RHA1.0951.0901.0040.9911.0181.0861.1000.987
3rd7th RHA1.0931.0940.9991.0281.0021.0611.0640.997
4th6th RHA1.0461.0171.0291.0090.9931.0441.0081.036
5th4th RHA1.0311.1330.9101.0180.9961.0161.1130.914
6th1st RHA1.0001.0001.0001.0001.0001.0001.0001.000
7th2nd RHA0.9690.8821.0981.0021.0010.9660.8811.097
20161st7th RHA1.3011.0601.2271.0181.0191.2541.0411.205
2nd6th RHA1.2660.9941.2730.9661.0151.2911.0291.254
3rd5th RHA1.2421.0911.1381.0131.0141.2091.0771.122
4th3rd RHA1.2261.0721.1440.9701.0261.2321.1051.116
5th4th RHA1.1591.1201.0341.0071.0061.1441.1131.028
6th2nd RHA1.0770.9671.1141.0150.9971.0650.9531.117
7th1st RHA1.0001.0001.0001.0001.0001.0001.0001.000
20171st7th RHA1.2541.0631.1801.0231.0091.2161.0401.170
2nd6th RHA1.1630.9191.2670.9601.0211.1870.9571.240
3rd3rd RHA1.1051.0611.0410.9811.0111.1131.0821.029
4th5th RHA1.0921.0651.0261.0071.0011.0841.0581.025
5th4th RHA1.0471.1230.9330.9981.0101.0391.1260.923
6th1st RHA1.0001.0001.0001.0001.0001.0001.0001.000
7th2nd RHA0.9730.8131.1960.9981.0010.9730.8151.195
20181st7th RHA1.2821.0451.2261.0321.0081.2321.0131.216
2nd3rd RHA1.1791.0831.0880.9811.0121.1881.1041.076
3rd5th RHA1.1751.1251.0441.0071.0041.1621.1171.040
4th6th RHA1.1710.9331.2550.9771.0201.1760.9551.231
5th4th RHA1.1111.2120.9171.0150.9961.0991.1940.920
6th2nd RHA1.0310.7241.4240.9531.0431.0370.7601.365
7th1st RHA1.0001.0001.0001.0001.0001.0001.0001.000
20191st7th RHA1.3011.0271.2681.0021.0281.2631.0241.233
2nd3rd RHA1.1811.0901.0830.9981.0141.1661.0921.068
3rd5th RHA1.1691.1730.9971.0051.0101.1511.1670.987
4th6th RHA1.1680.9861.1840.9841.0061.1791.0021.177
5th4th RHA1.1061.2320.8971.0190.9861.1001.2090.910
6th2nd RHA1.0840.8731.2420.9521.0361.1000.9181.198
7th1st RHA1.0001.0001.0001.0001.0001.0001.0001.000
20201st7th RHA1.3421.1231.1951.0061.0021.3321.1161.193
2nd2nd RHA1.1831.0221.1570.9561.0061.2301.0691.150
3rd6th RHA1.1720.9681.2100.9980.9741.2060.9711.242
4th5th RHA1.1671.1251.0380.9900.9901.1901.1361.048
5th4th RHA1.1241.2170.9231.0050.9841.1371.2120.938
6th3rd RHA1.1201.1310.9910.9981.0021.1191.1330.988
7th1st RHA1.0001.0001.0001.0001.0001.0001.0001.000
20211st3rd RHA1.5231.1571.3160.9930.9991.5351.1651.317
2nd7th RHA1.4940.9961.5000.9671.0161.5201.0301.476
3rd2nd RHA1.2920.8611.5000.8691.0831.3720.9911.384
4th4th RHA1.2741.0381.2270.9651.0601.2461.0761.158
5th6th RHA1.2720.9261.3740.9830.9831.3170.9431.397
6th5th RHA1.2661.0221.2380.9511.0121.3151.0751.224
7th1st RHA1.0001.0001.0001.0001.0001.0001.0001.000
CMgm: Multi Group Cost Malmquist Index; OESg: Group Overall Efficiency Spread; CFgm: Multi Group Cost Frontier Gap; AEg: Group Allocative Efficiency; PEgm: Multi Group Price Effect; Mgm: Multi Group Malmquist Index; TESg: Group Technical Efficiency Spread; TFgm: Multi Group Technical Frontier Gap; RHA: Regional Health Authority; Reference: 1st RHA.
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Fourlopoulou, A.; Xenos, P.; Messinios, G.; Maniadakis, N. Performance of Greek Public Hospitals Before and After the Economic Recession and the Pandemic: Application of a Novel Cost Malmquist Index for Comparing Productivity Across Multiple Groups. Healthcare 2025, 13, 1253. https://doi.org/10.3390/healthcare13111253

AMA Style

Fourlopoulou A, Xenos P, Messinios G, Maniadakis N. Performance of Greek Public Hospitals Before and After the Economic Recession and the Pandemic: Application of a Novel Cost Malmquist Index for Comparing Productivity Across Multiple Groups. Healthcare. 2025; 13(11):1253. https://doi.org/10.3390/healthcare13111253

Chicago/Turabian Style

Fourlopoulou, Argyro, Panos Xenos, George Messinios, and Nikolaos Maniadakis. 2025. "Performance of Greek Public Hospitals Before and After the Economic Recession and the Pandemic: Application of a Novel Cost Malmquist Index for Comparing Productivity Across Multiple Groups" Healthcare 13, no. 11: 1253. https://doi.org/10.3390/healthcare13111253

APA Style

Fourlopoulou, A., Xenos, P., Messinios, G., & Maniadakis, N. (2025). Performance of Greek Public Hospitals Before and After the Economic Recession and the Pandemic: Application of a Novel Cost Malmquist Index for Comparing Productivity Across Multiple Groups. Healthcare, 13(11), 1253. https://doi.org/10.3390/healthcare13111253

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