1. Introduction
The decision-making process in the complex service sector of healthcare necessitates the participation of several stakeholders with varying interests and values [
1,
2]. In the past few decades, researchers have used a variety of multi-criteria decision making (MCDM) techniques, such as the analytic hierarchy method (AHP) and hybrid methods [
3], to handle real-time issues in the healthcare system. The bulk of prior research has concentrated on integrating multiple MCDM approaches to discover the optimal solutions [
4]. Most present MCDM techniques provide conclusions based on a single stakeholder group’s perspective. However, integrating stakeholders in the decision-making process is vital for the healthcare industry, even though their diverse opinions might make reaching a consensus challenging. In fact, a lack of agreement among stakeholders leads to a number of solutions reached through the process of collaborative decision making ultimately being unsustainable [
5]. Recently various studies have been carried out. For instance, Dezert et al. [
6] created the rank reversal-free stable preference ordering towards an ideal solution approach (SPOTIS). The determination of the attribute weights plays a crucial role in various MCDM techniques, as shown by Kizielewicz et al. [
7] in their study. A framework for performance evaluation was created by Khan et al. [
8]. Fartaj et al. [
9] coupled BWM with rough strength relation to anticipate transportation disruption issues, allowing managers to focus on the specific issue rather than attempting to handle all of the connected aspects. The major obstacle to implementing Industry 4.0 in the leather industry, according to Moktadir et al. [
10], was a “lack of technical infrastructure.” However, the BWM has consistency issues [
11]. To overcome this constraint and reach a consensus solution across stakeholders, researchers have employed multi-objective linear programming (MOLP) [
12]. MOLP can be carried out with the use of a tool known as sequential interactive modelling for urban systems (SIMUS), which has a long history in the decision-making sector [
13].
MCDM in Healthcare SYSTEM
In the healthcare and medical sector, there are numerous methods for making decisions regarding how to evaluate service quality. For instance, Hsu and Pan [
14] investigated the quality structure of dental services and accurately determined the ranking of the key qualities using AHP and Monte Carlo techniques. Shieh et al. [
15] created and assessed hospital service quality standards utilizing the DEMATEL method to identify the critical success factors for such an assessment. To evaluate the provided service quality model, Büyüközkan et al. [
16] used a fuzzy AHP technique. To rank service quality factors, Altuntas et al. [
17] combined AHP and ANP methodologies. In order to construct an objective and high-quality index of physical treatments and conduct a systematic analysis and innovation plan application for the hospital’s services, S.-F. Lee and Lee [
18] employed ANP and DEMATEL methodologies. To determine the significant weights of evaluation criteria for service quality performance and to analyze the caliber of services provided in private hospitals, Chang [
19] used the fuzzy VIKOR technique. In order to determine the most significant indicators that may be utilized for quality assessment of Iranian health facilities, Moslehi et al. [
20] employed the AHP and Delphi approaches to compute the weights of quality management indicators. The fuzzy AHP and TOPSIS approaches were used by Shafii et al. [
21] to assess the service quality of a teaching hospital in Yazd, Iran. In order to evaluate the service quality in the context of healthcare, La Fata et al. [
22] introduced a unique technique based on fuzzy ELECTRE III and importance-performance analysis (IPA) among various MCDM techniques used in the healthcare system. In AHP, each element of the hierarchy is given a numerical weight or priority, which enables varied and sometimes incomparable items to be compared to one another in a fair and consistent manner. The AHP stands apart from other methods of decision-making because of this feature.
The present research deals with selecting healthcare organizations that would provide a high-quality healthcare system using the AHP technique based on surveys from stakeholders involved in the healthcare system. One of the most significant aspects of healthcare quality is the level of patient satisfaction. Analysis of healthcare service quality from the patient’s point of view has beneficial implications for a hospital, including helping to devise quality improvement strategies [
23]. In today’s competitive environment, providing health services that fulfill patients’ needs and expectations improves an organization’s chance of survival [
24]. To date, various definitions of healthcare quality have been employed. According to the British National Health Service (NHS), healthcare quality is described as providing the appropriate services to the right people at the right time, with the right approach, and within population affordability [
25]. Gronroos [
26] developed a two-dimensional quality model that includes both technical and functional criteria; patients tend to have difficulty recognizing technical quality, although they can quickly evaluate functional aspects [
27]. Several methods have been developed to assess the quality of healthcare services, which are frequently subject to uncertainty [
28]. Thomas L. Saaty developed AHP in the 1980s as a structured technique for analyzing complex problems based on mathematics and psychology. Those who use the AHP method first divide their chosen problem into a hierarchy of better-understood subproblems, each of which may be examined separately. When the hierarchy is established, the factors are thoroughly assessed by comparing their impact on an element above them [
16].
Healthcare is entirely a professional service [
29] and considers the patient’s perception as a yardstick for enhancing the quality of service [
30]. These days, most hospitals assess patients’ perception of healthcare SERVQUAL and make an electronic record of their medical history and satisfaction on a perception scale apart from paper-based records [
31].
In assessing the quality of an organization’s services, it is necessary to be aware of advancements in the documented literature, which necessitates conducting a comprehensive literature review. As a result, an up-to-date literature review was conducted to ascertain the gaps in the existing body of knowledge regarding hospital health services. This research then attempts to fill in some of the gaps in the existing literature. It also aims to identify how hospital management can enhance patient satisfaction by improving and boosting their services to the patients.
Any organization with good strategies in place can gain a sustainable competitive advantage; therefore, it is essential to make the right choices, and as the organizational environment evolves, it is necessary to continuously adjust or optimize the options that have been chosen. This will eventually lead to an optimal decision. Process improvement techniques such as Six Sigma, Lean Six Sigma, Kaizen, and others prioritize judgments based on the analytic hierarchy process (AHP). They have proven to be helpful because they take both concrete and intangible variables into account.
The following are the primary goals of this study:
To provide a comprehensive assessment of the literature on service quality and a foundation for future study in this area.
To demonstrate the significance of the identified elements and dimensions in analyzing and measuring the quality of healthcare services.
To create an AHP-based hierarchical model to prioritize SRVQUAL dimensions as well as two extra dimensions and sub-criteria.
Utilizing the AHP technique for selecting the healthcare services that offer the best overall value from among the available options.
The rest of the paper is organized as follows:
Section 2 provides an in-depth, categorized literature review on service quality; the service quality dimension and sub-criteria;
Section 3 concentrates on research design; AHP methodology; and how the model was developed; and highlights the prioritization of dimension and sub-criteria of SERVQUAL.
Section 4 presents a detailed discussion about results analysis, and finally, the paper ends with
Section 5 conclusions and,
Section 6 future scope in the area of service quality assessment.
3. Research Design
According to research, tangibles, responsiveness, reliability, assurance, empathy and constancy, and security are used to evaluate healthcare service quality. These can include physical facilities and equipment, the usability of the hospital, and hygiene [
44]. Lee and Yom [
45] considered the design or layout of a hospital to be tangible, so they included it in the definition. Hospitals need to be easy for patients to get to. In addition to this, patients should know how to read the signs and symbols used in medical settings to feel at ease. Furthermore, the hospital also needs the right equipment to do a good job; this includes bed frames, surgery tools, medicines, etc.
One of the most important aspects of service quality is hygiene, in particular, how clean the people and the hospital are. Since hospitals are concerned with people’s health, they are considered a symbol of hygiene. To prevent the growth of diseases, surgical equipment, patients’ rooms, and the surrounding environment should be free of bacteria.
Responsiveness is the consistent eagerness to serve patients and provide timely, correct service. It involves timeliness [
33], the ability to offer, and the capacity to deliver, operations and the promised service on time. Additionally, timeliness includes how simple it is to schedule medical appointments, the length of time the patient must wait to be seen, how simple it is to reschedule appointments, and how long the office is open. Hospitals must be able to provide immediate aid to anyone in need, regardless of their ability to make an appointment in advance. Completeness is an important sub-dimension for delivering quality service. Hospitals must be able to provide all types of treatment, as the client will be dissatisfied if their disease cannot be treated in the hospital to which medical professionals have sent them. In conclusion, the definition of responsiveness incorporates willingness [
45] as an attribute. It implies that personnel are willing to aid patients whenever necessary, listen to their problems, and devise solutions based on the demands of the clients they serve.
Reliability is the capacity to deliver the promised service consistently and precisely. Accuracy relates to delivering information about a service clearly and concisely, showing that the service provider should be concerned with human health. This includes information provided by the hospital, such as disease diagnosis and surgical expenses. Image and skill add to the hospital’s trustworthiness. The more positive the image presented by the hospital, the more credible it will be. When a service provider is skilled, they can meet strict requirements [
33]. The specialization of doctors, nurses, and other medical personnel is essential if patients are to have confidence in a hospital’s services.
The assurance dimension describes the employees’ expertise, kindness, and ability to inspire trust and confidence in others. Since patients feel psychologically dependent on service providers, the employees’ politeness is crucial for the patients’ confidence [
32]. Protecting all types of consumer data, including patient information, is crucial for establishing trust. Aspects of assurance include how an organization compensates for its patients’ issues. In the event of a problem, patients can be reassured by compensatory free services in the future and an apology.
Moreover, a reasonable cost of therapy for patients appears to be needed. Patients prefer the entire cost of services to be provided ahead of treatment rather than having additional fees presented later; otherwise, hospitals risk losing patients.
In the context of healthcare service excellence, empathy demonstrates compassion and understanding for patients. Caring is defined by customized customer service, attention to patients, and the ability to detect and address patients’ needs. In a service setting, the behavior and attitude of staff are just as important as their compassion. One of the most talked-about things is how a service provider (doctor, nurse, secretary, etc.) and a patient get along. Examples are, “The personnel are helpful” and “They are sympathetic and caring.” Communication is essential for developing empathy. This includes the flow of information between professionals and patients, as well as the level of interaction and two-way communication.
Constancy includes knowledge, technical expertise, education, and experience. A person’s ability and competence in their field of work, as well as their ability and competency in their area of work, constitute their skill [
46]. Patients place a premium on accurate initial disease diagnosis and treatment. Experience is a collection of step-by-step occurrences which enables hospital workers to make decisions regarding patients’ circumstances. In judging innovation, the level of professionalism is also taken into account. The performance of hospital staff should be enhanced through training, and the performance of hospital services should be enhanced through new technologies.
In conclusion, security can be defined as the state of being free from any kind of danger, risk, or uncertainty during the time spent engaging in the process of delivering patient service. This safety is maintained on a personal level. When a patient gives information to the hospital, it is the duty of the hospital to ensure the patient’s right to privacy [
32]. It is essential to ensure the safety of all kinds of customer data, such as patient records, to create customer confidence. As can be seen in
Table 1, the considerations that form the basis of our criteria and qualities for assessing the level of quality provided by the healthcare services are as follows.
3.1. Methodology
Even within the healthcare industry, service quality can be challenging to maintain. It involves multiple criteria and unclear, qualitative features that are hard to measure. The service quality literature describes qualitative and quantitative methodologies, with models such as statistical analysis and decision theory. The difficulty in assessing service quality is exacerbated by the ambiguity of novel technologies and the scarcity of professionals. Due to the intangible and diverse criteria structure, a powerful approach that can handle ambiguity should be used. MCDM is a popular and influential approach for analyzing service quality performance choices, which helps decision-makers face contradicting assessments [
47]. The AHP is a helpful tool for making decisions in various contexts, including selection, ranking, prioritization, allocation of resources, benchmarking, and process improvement. The latter is concerned with the multifaceted aspects of quality and quality development. The analytic hierarchy process, or AHP, was initially developed by Saaty [
48]. It is a quantitative tool that helps in the framework of a complex maldistributed problem and provides a goal methodology for choosing between a set of attributes to find the best combination for tackling that problem and involves a series of steps, as below [
49].
First, the overall importance of the traits must be established, which can be accomplished by utilizing expert opinion or through an in-depth analysis of matched comparisons [
50].
Table 2 shows Saaty’s ratio scale This scale represents a “one-to-one” mapping between linguistic choices available to decision makers (DMs) and discrete numbers representing the priority or weight of the previous linguistic choice (s) [
50]. Then, different weights are assigned to each attribute with the use of an algorithm. The alternative approaches to each attribute’s solution are analyzed similarly, and a single score is created for all of the possible solutions. Finally, one might rank and arrange the many potential solution options based on their final score and select the best option. In the present study, a panel of six experts (two doctors, two nurses and two top administrators from each of the three hospitals) developed the model, as shown in
Figure 1.
There are four basic steps in AHP methodology, as shown in
Figure 2 [
49].
To solve decision problems, the AHP methodology can be summarized with the help of the following equation:
1. First, we build pairwise comparisons, presented by questionnaires with the expert’s subjective perception having a set of n attributes denoted by
,
,
) according to their relative importance weights denoted by (
,
,…..,
)
() where i,j = 1,2,3….m;
( = 1 for all i = j;
() for i ≠ j (the positive-reciprocal of the matrix elements);
where →a real matrix of dimension (m × m);
and the diagonal element value in the above matrix is equal to 1. () = 1; i = j).
Founded on the three conditions listed below, the importance of one criterion, i.e., ((equal, less and more) importance) over the other criteria can be defined as:
Condition 1— denotes that the ith criterion is relatively more important than the jth criterion.
Condition 2— denotes that the ith criterion is relatively less important than the jth criterion.
Condition 3— denotes that both criteria hold relatively equal importance.
2. For the normalization of the matrix (
), find the ‘operator equation’;
The next step, after completion of the formation of pairwise comparison matrices, is the normalization process of the matrix by using the operator equation (Equation (2)).
We find the normalized principle eigenvector using Equation (4):
Using Equation (5), we find the final weight of the alternatives:
In order to evaluate the level of agreement between the panel of experts, the kappa coefficient is used. The computation is based on the difference between the actual amount of agreement and the expected amount of agreement, anticipated to be there only by coincidence. A kappa value of 0 indicates that there is a poor agreement between the methods, and a value of 1 indicates an almost perfect agreement. For the present result, the value of kappa is 0.83, which is close to 1. Hence, there is a close agreement in the survey.
3.2. Model Development
As indicated in the preceding section, comprehensive literature research was conducted to determine service quality dimensions and sub-criteria. Prior to gathering any data, a conceptual model for a decision problem must be developed. Hence, model development uses 7 dimensions and 31 sub-criteria. Three hospitals, Abha Private Hospital (APH), Asir General Hospital (AGH), and Al Haya Hospital (AHH), were chosen based on demand in the Asir region to examine the quality of healthcare services. To conceal their identities, the three hospitals are called Healthcare Services A, Healthcare Services B, and Healthcare Services C, respectively.
An AHP-based questionnaire was created, developed, and administered, with several comparison tables containing the 7 dimensions and 31 sub-criteria of service quality. A consensus was reached by brainstorming and formal discussion on critical decision-making. The following are the three options being assessed to find the best healthcare services:
Abha Private Hospital (APH)
Asir General Hospital (AGH)
Al Haya Hospital (AHH)
The hospital management cares for the cleaning, maintenance and feeding for the comfort of the patient. There are 6 sections in the hospital: (1) the men’s section, (2) the women’s section, (3) children from 1 day old to 15 years, (4) surgery, (5) intensive care for premature babies, and (6) premature infants. The hospital also has facilities such as outpatient clinics, specialized units, service units, radiology, laboratories, physiotherapy, pharmacies and non-medical services. The demand for healthcare is affected by a number of factors, including the following: needs (as perceived by patients), patient preferences, price or cost of use, income, transportation costs, waiting times during service and the quality of care received from the patient point of view.
Figure 3 depicts a step-by-step evaluation of the best healthcare services, demonstrating how the model was created utilizing the AHP approach.
3.3. Prioritization of Dimensions and Sub-Criteria
All seven aspects of service quality were compared to each other in terms of the goal, which was to evaluate the quality of service in healthcare services. Comparing two dimensions shows how important each is to the model’s goal. Various pairwise comparison was made, and each pairwise comparison’s matrix was checked by calculating λ max, the consistency index (CI), and the consistency ratio (CR). It was found that all the tables met the requirement of the consistency check.
The local weight of each dimension was calculated by calculating the overall preferences of seven service quality dimensions: tangibles, responsiveness, reliability, assurance, empathy, constancy, and security. The five-sub criteria for tangibles were building layout, equipment, hygiene, appearance, and space. The five sub-criteria considered for responsiveness were timeliness, completeness, willingness, accessibility, and promptness. The five sub-criteria considered for reliability were accuracy, expertise, image, skills, and knowledge. The four sub-criteria considered for assurance were effectiveness, guarantee, courtesy, and compensation. The five sub-criteria considered for empathy were helpfulness, manner, concern, understanding, and communication. Finally, the four sub-criteria considered for constancy were skill, honesty, experience, and innovation.
The three sub-criteria considered for security were confidentiality, personal safety, and hospital infection safety. As with the local dimension weight, the local weights of all sub-criteria were computed. The global weight was computed by taking the product of respective dimensions with their sub-criteria. The pairwise comparison matrices for the seven dimensions are shown in
Table 3, and the pairwise comparisons of sub-criteria are shown in
Table 4,
Table 5,
Table 6,
Table 7,
Table 8,
Table 9,
Table 10 and
Table 11. The pairwise comparison of three alternatives with respect to three sub-criteria to enhance security criteria/dimensions is shown in
Table 11,
Table 12 and
Table 13. The other results were computed similarly and are incorporated in
Table 14.
Furthermore, all three options, i.e., Abha Private Hospital (APH), Asir General Hospital (AGH), and Al Haya Hospital (AHH), were compared for each sub-criteria of the seven dimensions of service quality. Then, their results were calculated to assess the healthcare services, and the global weight of all three alternatives was computed by taking the product of the sub-criterion global weight with the local weight of the three alternatives. Finally, the summation of all three alternative global weights was taken. The alternative with a higher summation value is the best, while the one with the most negligible value is considered the worst. The synthesized comparison matrix is shown in
Table 14.
The MCDM helps analyze dimensions, main criteria, and sub-criteria critically to facilitate making a decision as to which hospital has the best healthcare system (alternatives). Since the best healthcare system plays a vital role in the selection of a hospital for any health organization, patients can choose based on the facility provided. The selected alternative (hospital) must be in a position to cater to the patient’s needs. Looking to the requirements, AHP-based modeling has been used in the present condition. The AHP has excellent potential to evaluate and rank the dimensions and sub-criteria that are significant decision-making parameters when selecting a hospital. Based on the chosen dimensions and subfactors, the people involved in the health system can run it smoothly and effectively, as it is made easy for those in charge to constantly evaluate, track, and manage the criteria to fit with their strategic goals. Since expensive infrastructure (hardware and software) technologies are required to ensure that the healthcare system works well and is solid, ranking dimensions and sub-criteria can help with planning and managing resources. AHP and ranking, followed by comparison, can be used to determine the correct order of importance for the dimension, sub-criteria, and choice of hospital.
The AHP provides the ranking of dimensions of the healthcare system as reliability > tangibles > security >assurance > responsiveness >empathy >constancy, where ‘>’ indicate preference over another. From the result, it may be concluded that the reliability dimension plays a significant role. In contrast, constancy plays a comparatively less significant role in deciding the preference of the healthcare system, as shown in
Figure 4. The prioritization of this service quality dimension helps the organization understand the importance of each dimension so that the manager can use these weights and the importance of dimensions in strategic decision-making. All the sub-criteria of a dimension are compared to the goal to achieve. Thus, 31 sub-criteria of the seven dimensions were calculated, as were the various relationships between these factors. Based on the sub-criteria for tangible dimensions, hygiene > equipment > building layout > appearance > space. From the weightage in
Figure 5, it may be concluded that the hygiene sub-criterion plays a significant role. In contrast, space plays a comparatively less significant role in deciding the preference among tangible dimensions. The results of other dimensions’ sub-criteria are shown in
Figure 5.
From the sub-criteria global weight, as shown in
Figure 6, the sub-criterion hospital infection is a highly influential sub-criterion, while completeness is given the least priority.
From the result of alternative pairwise comparison and global weight, as shown in
Figure 7, the AHP provides the ranking of alternatives, i.e., hospital as APH > AHH > AGH. This indicates that the preference for the Abha private hospital is higher, and the Abha government hospital ranks as the lowest healthcare facility to the patient.