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Background:
Systematic Review

Electronic Health Records: A Gateway to AI-Driven Multimorbidity Solutions—A Comprehensive Systematic Review

by
Ignatios Ioakeim-Skoufa
1,2,3,4,5,*,
Celeste Cebollada-Herrera
2,
Concepción Marín-Bárcena
6,
Vitor Roque
7,
Fátima Roque
8,9,
Kerry Atkins
10,
Miguel Ángel Hernández-Rodríguez
4,11,
Mercedes Aza-Pascual-Salcedo
3,5,12,
Ana Fanlo-Villacampa
2,
Helena Coelho
9,
Carmen Lasala-Aza
13,
Rubén Ledesma-Calvo
2,
Antonio Gimeno-Miguel
3,5 and
Jorge Vicente-Romero
2,*
1
Department of Drug Statistics, Division of Health Data and Digitalisation, Norwegian Institute of Public Health, 0213 Oslo, Norway
2
Department of Pharmacology, Physiology and Legal and Forensic Medicine, Faculty of Medicine, University of Zaragoza, 50009 Zaragoza, Spain
3
EpiChron Research Group on Chronic Diseases, Aragon Health Sciences Institute (IACS), Aragon Health Research Institute (IIS Aragón), Miguel Servet University Hospital, 50009 Zaragoza, Spain
4
Drug Utilisation Work Group, Spanish Society of Family and Community Medicine (semFYC), 08009 Barcelona, Spain
5
Research Network on Chronicity, Primary Care and Health Promotion (RICAPPS), Institute of Health Carlos III (ISCIII), 28029 Madrid, Spain
6
Scientific Society for Biomedical Research, 07010 Palma de Mallorca, Spain
7
Techn&Art—Technology, Restoration and Arts Enhancement Center, Polytechnic University of Guarda, 6300-559 Guarda, Portugal
8
BRIDGES—Biotechnology Research, Innovation and Design for Health Products, Polytechnic University of Guarda, 6300-559 Guarda, Portugal
9
Portuguese Society of Health Care Pharmacists (SPFCS), 3000-316 Coimbra, Portugal
10
Drug Utilisation Section, Technology Assessment and Access Division, Australian Government Department of Health and Aged Care, Canberra, ACT 2606, Australia
11
Support and Planning Unit, Directorate of the Canary Islands Health Service, 38006 Santa Cruz de Tenerife, Spain
12
Primary Care Pharmacy Service Zaragoza III, Aragon Health Service (SALUD), 50017 Zaragoza, Spain
13
Pharmacy Service, Virgen de la Victoria University Hospital, 29010 Malaga, Spain
*
Authors to whom correspondence should be addressed.
J. Clin. Med. 2025, 14(10), 3434; https://doi.org/10.3390/jcm14103434
Submission received: 4 April 2025 / Revised: 6 May 2025 / Accepted: 12 May 2025 / Published: 14 May 2025
(This article belongs to the Special Issue Chronicity, Multimorbidity, and Medication Appropriateness)

Abstract

:
Background/Objectives: Artificial intelligence (AI) plays an important role in real-world health research. It can address the complexities of chronic diseases and their associated negative outcomes. This systematic review aims to identify the applications of AI that utilize real-world health data for populations with multiple chronic conditions. Methods: A systematic search was performed in MEDLINE and EMBASE following PRISMA guidelines. Studies were included if they applied AI methods using data from electronic health records for patients with multimorbidity. Results: Forty-four studies met the inclusion criteria. The review revealed AI applications identifying disease clusters, predicting comorbidities, and estimating health outcomes such as mortality, adverse drug reactions, and hospital readmissions. Commonly used AI techniques included clustering methods, XGBoost, random forest, and neural networks. These methods helped identify risk factors, predict disease progression, and optimize treatment plans. Conclusions: This study emphasizes the increasing role of AI in understanding and managing multimorbidity. Integrating AI into healthcare systems can enhance resource allocation, improve care delivery efficiency, and support personalized treatment strategies. However, further research is needed to overcome existing limitations, particularly the lack of standardized performance metrics, which affects model comparability. Future research should adhere to commonly recommended evaluation practices to improve reproducibility and meta-analysis.

1. Introduction

Multimorbidity, defined as the presence of multiple chronic conditions in an individual, is the most common clinical presentation of chronicity in adults [1,2,3]. Over the past 20 years, its prevalence has risen dramatically, with the elderly being the most affected group [1]. While the likelihood of experiencing multimorbidity increases with age, the majority of individuals with multiple chronic conditions are actually under the age of 65 [1,4]. This trend suggests a broader shift in chronic disease patterns that affect people of all ages.
Multimorbidity can significantly deteriorate patients’ quality of life, and impact their physical, emotional, and social well-being, as well as that of their caregivers. It is linked to higher rates of healthcare utilization, often characterized by fragmented and uncoordinated care, along with an increased risk of polypharmacy, drug interactions, adverse events, and inappropriate prescribing [3,5,6,7,8,9,10,11]. Addressing these challenges requires a transition from disease-specific guidelines to more holistic, person-centered care models [12]. Effective prevention and management strategies could alleviate the burden on both individuals and public healthcare systems [4,13,14].
Policymakers face pressure to develop sustainable, evidence-based solutions that address the complex needs of chronic patients, especially those living with multimorbidity. There is an urgent need to design and implement effective strategies to prevent the onset and clinical evolution of multimorbidity by identifying high-risk individuals [1,15]. Despite some promising care models, robust evidence of their effectiveness remains limited [16].
Electronic health records (EHRs) provide a valuable source of real-world data to study patterns and risks associated with multimorbidity. Through various statistical methods, large-scale studies utilizing EHRs have characterized populations with multimorbidity, identified associated risks, and mapped multimorbidity patterns and trajectories over time [17,18,19,20,21,22]. Traditionally employed in epidemiological analyses, EHRs are now increasingly being examined through the lens of artificial intelligence (AI) and machine learning (ML). These technologies can analyze large datasets to classify diagnoses, uncover hidden associations, predict future complications, and support personalized screening strategies [23,24]. For example, various ongoing initiatives utilize data from the Clinical Practice Research Datalink (CPRD) to investigate the applications of AI in multimorbidity research [25]. One such initiative, the AIM-CISC program, leverages CPRD data to identify common combinations of long-term conditions and develop AI tools aimed at reducing adverse events [26]. Similarly, the CoMPuTE project applies AI techniques to identify individuals who are more likely to develop multimorbidity over time [27]. Despite this expanding body of research, there is a need to synthesize and evaluate how AI has been applied to EHRs in populations with multimorbidity. This review aims to fill that gap.

2. Materials and Methods

We conducted a systematic review of the peer-reviewed literature in MEDLINE and EMBASE, following the Preferred Reporting Items for Systematic reviews and Meta-Analyses (PRISMA) statement guidelines [28]. The detailed PRISMA checklist is provided in the Supplementary Material. The search strategy combined algorithms for multimorbidity, artificial intelligence, and electronic health records (see Appendix A).
Multimorbidity was defined as the presence of two or more chronic conditions, without limitation to specific diseases. This definition was consistently applied in both the search strategy and the screening process for inclusion and exclusion criteria. Studies were included if they involved the analysis of any combination of chronic diseases and utilized artificial intelligence methods within electronic health records.
In this study, we included articles that met all the following criteria: (i) original articles; (ii) the full text is available; (iii) the paper is in English or Spanish; and (iv) it answers the research question. To properly address this last criterion, we applied the Patient/Population, Intervention, Comparison, and Outcomes (PICO) model [29], as shown in Figure 1.
We performed the literature review on 1 December 2024. Three researchers independently screened titles, abstracts, and full text when considered necessary, in pairs, following a double-blind method, to exclude irrelevant articles. Disagreements regarding study inclusion were resolved through structured discussion among all co-authors until consensus was reached. Reference lists of the included studies were also manually screened to identify additional eligible articles.
We collected data on several aspects, including the year of publication, country, study period, study type, follow-up duration, clinical setting, patient age, study population, disease classification, list of diseases, medications, drug classification, laboratory tests, social and lifestyle factors, health-related quality of life, study aims, sample size, outcomes, main findings, conclusions, limitations, and funding sources.
Additionally, we extracted variables related to AI, such as the AI tool used, the aim of the study, the type of data analyzed, whether supervised or unsupervised methods were employed, performance metrics (including accuracy, precision, recall, F1 score, and other relevant metrics), and details on missing data.
To evaluate the overall reliability of the evidence, we applied the Grading of Recommendations Assessment, Development, and Evaluation (GRADE) framework [30,31], which is effective for synthesizing findings from a wide range of observational studies. Considering the exploratory nature of this review and the significant differences in study designs, populations, data sources, and analytical methods, we determined that GRADE was an appropriate and sufficient approach to assess the strength of the existing evidence in this emerging field. A detailed report of this assessment can be found in the Supplementary Material, Table S1.

3. Results

Literature Search Results

A total of 252 studies were identified through searches in MEDLINE (109 results) and EMBASE (143 results), as shown in the flow chart in Figure 2. In the initial stages, 59 instances of duplicate content were excluded, and 77 articles were identified as ineligible by automated tools. Of the remaining 116 publications, 5 were not retrieved for screening, resulting in 111 articles available for review. From these, 22 records were excluded because they were not original research, and 51 records were excluded for not addressing the topic of the study. This led to the inclusion of 38 articles in the review after the screening process. Additionally, by screening the titles of the references of the included studies, we identified 25 articles to be potentially relevant. Among these, six studies met the inclusion criteria and were included in the review. Before analysis, the dataset underwent a final deduplication procedure to eliminate any identical entries. Ultimately, the search process concluded with the inclusion of a total of 44 articles [3,17,32,33,34,35,36,37,38,39,40,41,42,43,44,45,46,47,48,49,50,51,52,53,54,55,56,57,58,59,60,61,62,63,64,65,66,67,68,69,70,71,72,73], the majority of which were retrospective observational studies.
Most of these studies employed AI techniques to cluster populations based on clinical characteristics, such as chronic diseases. They also aimed to identify clinical trajectories, tracking how multimorbidity clusters evolve over time, and to make predictions regarding future comorbidities, negative outcomes (including drug-related side effects and adverse reactions, as well as mortality), and health service utilization.
Table 1 summarizes general information about the included studies. Most of these studies aimed to identify individuals with similar clinical profiles, commonly referred to as multimorbidity clusters or networks [17,34,35,36,37,41,45,48,53,58,62,64,65,67,71]. They also explored different clinical trajectories [43,60,66], known as multimorbidity trajectories, examined the use of healthcare services [38,42,47], and predicted additional comorbidities or negative outcomes, including mortality [3,39,44,50,52,55,56,68,69,70], adverse drug reactions, and drug–drug interactions [40,61,62]. For a more detailed description of the included studies, please see the Supplementary Information. Common AI approaches applied in these studies included clustering methods (such as k-means or fuzzy c-means clustering) [34,48,58,62,63,64,65], Extreme Gradient Boosting (XGBoost) [3,37,39,69], random forest [3,39,40,56], and neural networks [3,17,35,44,52,55,57,68].
Out of the 44 studies included in the analysis, only 23 provided detailed performance metrics. Among these studies, there was significant variation in the metrics used to evaluate model performance. The most commonly reported metrics were precision, recall, accuracy, F1-score, and Area Under the Receiver-Operating Characteristic Curve (AUC). A summary of the range of reported values can be found in Table 2.

4. Discussion

This systematic review underlined applications of artificial intelligence in the study of multimorbidity. Research efforts focused on identifying individuals with similar clinical characteristics, often referred to as multimorbidity patterns, clusters, or networks. These studies also examined clinical paths and investigated patterns of healthcare utilization. Additionally, they aimed to predict the onset of further comorbidities or adverse outcomes, such as mortality, harmful drug reactions, and drug–drug interactions. Common analytical techniques included clustering, XGBoost, random forest, and neural networks.
The type of metrics used to assess performance varied significantly among studies. We observed that the most common metrics included precision, recall, accuracy, F1-score, and AUC. Due to methodological differences in the assessment of the performance of the AI models between studies, it was not possible to make any meaningful comparisons. This variability, along with differences in study design, disease focus, medication types, and clinical settings, further limited the comparability and generalizability of the findings. Another important observation was that many studies did not report detailed performance metrics, which made it difficult to assess validity and reliability. Transparent reporting that adheres to commonly recommended performance evaluation strategies is important to enhance reproducibility and facilitate plausible comparisons and meta-analyses.

4.1. Multimorbidity Patterns and Future Comorbidities

With cluster analyses, we can identify groups of patients with similar clinical profiles, also known as multimorbidity patterns. Common clustering techniques include K-means, hierarchical clustering, and fuzzy c-means. These methods help identify subtypes of multimorbidity by grouping patients with similar disease patterns, generating hypotheses and providing valuable insights into common disease pathways [34,48,58,62,63,64,65,74,75,76].
Advanced machine learning techniques, such as XGBoost, random forest, and neural networks, are widely used for predicting multimorbidity and other health outcomes. XGBoost, a gradient boosting algorithm, builds multiple weak learners in a sequential way, which make it effective for risk stratification and predicting the likelihood of patients developing additional chronic conditions. Its capability to manage imbalanced datasets is particularly useful for addressing rare multimorbidity patterns [3,37,39,69,74,75,76].
Random forest is an ensemble learning method that constructs multiple decision trees based on random subsets of data and averages their predictions. This approach reduces variance and overfitting while helping to identify key risk factors for multimorbidity. It classifies patients into multimorbidity clusters based on their disease profiles and highlights the most influential features, such as age, lifestyle, and specific diseases, in the progression of multimorbidity [3,39,40,56,74,75,76].
Neural networks, especially deep learning models, are effective for analyzing high-dimensional and complex datasets. These networks consist of multiple layers of artificial neurons that process data hierarchically. Denoising autoencoders, a specific type of neural network, are used to extract meaningful features from noisy medical data, enhancing the interpretability of large datasets. Furthermore, neural networks are valuable for predicting disease progression and supporting feature reduction, transforming high-dimensional medical data into more understandable formats [3,17,35,44,52,55,57,68,74,75,76].
It is projected that predictive analytics using AI will be one of the major digital health technologies to have a significant impact over the next 20 years [24]. Our review identified studies employing AI to predict comorbidities, including cardiovascular events [44,56,69]. Research is ongoing in the development of mortality risk estimation models based on the clinical profile of patients [55,68]. The most common techniques employed in predictive analytics with AI include advanced regression models and machine learning algorithms. Examples of such techniques include neural networks, decision trees, random forests and gradient boosting. As predictive analytics is increasingly incorporated into electronic health records, its use will become more pervasive. These tools can be used by healthcare professionals in daily clinical practice and in health policy-making to improve and individualize screening programs, leading to better allocation of clinical resources [24].
Although these models are often used for similar tasks, they differ in interpretability, computational complexity, and suitability for different types of clinical data. Tree-based methods like random forest and XGBoost are generally more interpretable and robust for tabular data; they often perform well with limited data and missing values. In contrast, neural networks—especially deep architectures—tend to require more data and computational resources, but they excel at capturing complex, non-linear relationships and handling unstructured data, such as clinical notes or longitudinal sequences. Therefore, selecting an AI model should depend not only on predictive accuracy but also on contextual factors such as data characteristics, clinical applicability, and explainability.

4.2. Drug Utilization and Drug-Related Adverse Events

Multimorbidity patients pose a treatment challenge due to the simultaneous presence of multiple diseases with different therapeutic requirements. Drug recommendation systems are AI prescription support algorithms that learn from the diagnoses and prescriptions in patients’ electronic health records to recommend more appropriate treatments, according to patients’ needs and with fewer drug–drug interactions. The findings in this regard substantiate the efficacy of drug recommendation systems, which enhance the efficiency of clinical decision-making while preserving or optimizing the safety of prescriptions [49,59,63,72].
Polypharmacy, the simultaneous use of multiple medications, is a common finding among individuals with multimorbidity. Although definitions of polypharmacy can vary across studies [77,78], it is widely recognized that the use of multiple medications increases the risk of inappropriate prescriptions, therapeutic cascades, adverse events, drug–drug interactions, drug–disease interactions, low adherence to treatment, increased healthcare utilization, and even mortality [1,9,79,80,81]. The application of advanced technological tools for patients with multimorbidity has shown promising results in predicting adverse drug reactions, identifying drug interactions, flagging potentially inappropriate medications, and preventing other drug-related negative outcomes [40,61,62]. For instance, using random forest models, Fahmi A et al. (2023) were able to predict he risks of adverse drug reactions and emergency hospital admissions [40]. Their results suggested that these models could be useful in prioritizing medication reviews.

4.3. Use of Healthcare Services

The utilization of healthcare services by chronic patients with multimorbidity is an important challenge for public health systems worldwide but also for the patients and their caregivers. In this systematic review, we found reports of AI techniques that could facilitate the extraction of psychosocial factors and a subsequent demonstration of their association with an elevated risk of hospitalization and emergency room visits [38]. This example underscores the importance of studying the factors contributing to a higher use of healthcare services to properly design and implement targeted interventions [82,83,84,85,86].
Additionally, comorbidity profiles in patients with schizophrenia were associated with higher readmission rates and use of psychiatric services. This underscores the need for an integrated psychiatric care model. Such comprehensive models would improve the monitoring and management of comorbidities in this patient demographic [38,42,47].

4.4. Clinical Scores

Scores developed using ML tools are presented as tools with great potential, as they lack the limitations of traditional scores, such as the use of a single dataset and being restricted to specific demographic groups. Most risk scores used in clinical practice are disease-specific, a limited approach that does not fully capture the heterogeneity of patients with multiple chronic conditions that are interrelated in variable ways. In contrast, ML models, which are developed using large datasets from patient records, have the capacity to offer highly predictive risk scales that are customizable, intuitive, and generalizable [54,73].

4.5. Limitations and Strengths

This study has several limitations that are common in most systematic reviews. However, we conducted a comprehensive literature search with clearly defined terms that allowed us to capture most relevant studies and thus to minimize the omission of relevant studies. The choice of databases, specifically MEDLINE and EMBASE, may be seen as a limitation since they do not encompass all pertinent literature. Furthermore, including only articles in English and Spanish could introduce a language bias. There is also a concern regarding publication bias, which occurs when non-significant results are less likely to be published. A significant limitation of this work is related to the quality and restrictions of each of the studies included.
All the studies included in this review were observational, and as no clinical trials were identified, the overall level of evidence of the included studies was low according to the GRADE framework. This rating reflects the inherent limitations of non-experimental designs, such as potential confounding factors and biases. Nevertheless, these studies provide valuable insights into the application of artificial intelligence in the context of multimorbidity, based on real-world data. While the findings should be interpreted with caution, they are very useful in generating hypotheses, informing clinical and policy discussions, and highlighting areas that require future high-quality research.
We observed considerable variability among the studies included in our analysis, particularly regarding study design, the AI methods employed (such as machine learning, natural language processing, and deep learning), data sources, definitions of outcomes, target populations, and the reporting of performance metrics. This variability led us to decide against conducting a meta-analysis. Due to important methodological and clinical differences among the studies that made it impossible to achieve a meaningful quantitative synthesis, we concluded that a narrative synthesis approach would be more appropriate for summarizing the existing evidence and identifying research gaps.
Given the novelty and rapid growth of this field, this systematic review is a crucial step in synthesizing the current evidence base. As more high-quality and standardized research becomes available, an updated systematic review should be conducted in the near future to include emerging studies and perform a meta-analysis.
Conversely, the review’s strengths include the utilization of a standardized and rigorous methodology, in accordance with PRISMA guidelines, and a comprehensive literature search conducted with clearly defined terms in the largest databases covering most of the studies on the topic (MEDLINE and EMBASE). The establishment of explicit inclusion and exclusion criteria aimed to enhance the transparency of the selection process, thereby improving the validity and reproducibility of the results.

4.6. Clinical Applications and Future Perspectives

This study shows the increasing role of AI in predictive analytics within the health sciences, particularly in addressing multimorbidity. AI has shown promising results in predicting clinical profiles and outcomes for chronic patients. This comprehensive review highlights several key opportunities where AI can significantly enhance patient care, including the identification of multimorbidity patterns, risk assessment, and the exploration of relationships between clinical profiles, additional comorbidities, medication use, health outcomes, medical and surgical procedures, utilization of healthcare services, and socio-economic variables.
A number of studies featured in this review focus on the prediction of adverse events, such as cardiovascular complications, hypertension, and stroke. The use of AI algorithms allows us to design and implement timely preventive interventions to improve patient outcomes, manage critical cases more effectively, and offer proper and high-quality care, while optimizing resource allocation and reducing the burden on the healthcare system. The capacity of AI tools to analyze large datasets in real time can boost the precision and effectiveness of such interventions.
As AI becomes an important tool in clinical research that is based on large datasets with information validated and recorded by healthcare professionals, the potential for transforming clinical practice and healthcare policy is significant. Predictive analytics can help healthcare providers to efficiently allocate resources and improve care delivery. It can also support research in advancing personalized medicine, identifying more accurate, effective, and patient-centered healthcare solutions, something that is particularly important for individuals with multiple chronic diseases.
Further studies are needed to refine predictive models and study their validity and applicability across different healthcare settings and populations. It is important to evaluate the real-world impact of AI-driven tools on clinical outcomes, care coordination, and healthcare utilization in patients with multimorbidity through well-conducted interventional studies. With solid evidence, we can achieve a safe and effective integration of AI into healthcare systems.

5. Conclusions

This systematic review highlights the transformative potential of AI in the study and clinical management of multimorbidity. By using information from large datasets from EHRs, we can apply AI models to identify complex disease patterns, predict additional comorbidities, and improve risk assessments for patients with multiple chronic conditions. These advancements empower healthcare providers to intervene proactively, in order to reduce the risk of adverse events such as cardiovascular complications, mortality, and hospitalizations, ultimately leading to improved patient outcomes.
AI models, such as XGBoost, random forest, and neural networks, allow us to assess risks, improve care delivery, and facilitate decision-making. In addition, they can assist us in addressing inappropriate polypharmacy, by identifying potential adverse reactions, drug–drug interactions, and other drug-related negative outcomes.
The use of AI in healthcare can improve resource allocation, enhance care efficiency, and facilitate the development of personalized treatment strategies. As the field evolves, there is a need for future research aiming to improve the performance of the models and ensure they can be effectively applied across different clinical settings and populations. Future research should focus on addressing existing gaps and limitations, such as the need for more detailed and standardized reporting, and on exploring AI’s potential to optimize healthcare delivery in real-world contexts. Conducting pragmatic clinical trials and interventional studies will be crucial for evaluating the impact of AI-driven tools on clinical outcomes, care coordination, and resource utilization. By generating high-quality evidence of AI technologies’ effectiveness in improving patient outcomes, these studies will lay a solid foundation for the safe and efficient integration of AI into healthcare systems, particularly for patients dealing with multimorbidity.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/jcm14103434/s1, Table S1: A general overview of the studies included in the systematic review; File S1. PRISMA checklist: PRISMA 2020 main checklist and abstract checklist.

Author Contributions

Conceptualization, I.I.-S.; methodology, I.I.-S. and J.V.-R.; formal analysis, I.I.-S., K.A. and J.V.-R.; investigation, I.I.-S., C.C.-H., M.A.-P.-S., R.L.-C. and J.V.-R.; resources, I.I.-S., H.C., C.L.-A. and J.V.-R.; data curation, I.I.-S., C.C.-H., C.M.-B., V.R., F.R., A.F.-V. and J.V.-R.; writing—original draft preparation, I.I.-S. and J.V.-R.; writing—review and editing, C.C.-H., C.M.-B., V.R., F.R., K.A., M.Á.H.-R., M.A.-P.-S., A.F.-V., H.C., C.L.-A., R.L.-C., A.G.-M. and J.V.-R.; visualization, I.I.-S. and J.V.-R.; supervision, I.I.-S. and J.V.-R.; project administration, I.I.-S. and J.V.-R. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by Gobierno de Aragón (grant number B01_23R) and by the Carlos III Institute of Health, Ministry of Science and Innovation (Spain), through the Research Network on Chronicity, Primary Care, and Health Promotion (RICAPPS) awarded on the call for the creation of Health Outcomes-Oriented Cooperative Research Networks (grant numbers RD21/0016/0019, RD24/0005/0013), funded with European Union’s Next Generation EU funds and cofunded by the European Union.

Data Availability Statement

Data are contained within the article and Supplementary Materials.

Conflicts of Interest

The authors declare no conflicts of interest.

Appendix A. Literature Search Strategy

The search strategy was a combination of three components: #1 (Multimorbidity) AND #2 (Artificial Intelligence) AND #3 (Electronic Health records). Below are the search algorithms for each component.

Appendix A.1. Search Strategy in Medline

Appendix A.1.1. #1—Multimorbidity

(“multiple chronic conditions”[MeSH Terms] OR “multimorbidity”[MeSH Terms] OR “multiple chronic conditions”[Title/Abstract] OR “multimorbi*”[Title/Abstract] OR “multi morbi*”[Title/Abstract] OR “pluripatholog*”[Title/Abstract] OR “multidiseas*”[Title/Abstract] OR “multi diseas*”[Title/Abstract] OR “multiple conditions”[Title/Abstract] OR “multiple diseases”[Title/Abstract] OR “multiple health problems”[Title/Abstract] OR “multiple diagnos*”[Title/Abstract])

Appendix A.1.2. #2—Artificial Intelligence

(“Artificial Intelligence”[MeSH Terms] OR “Computer Heuristics”[MeSH Terms] OR “Expert Systems”[MeSH Terms] OR “Fuzzy Logic”[MeSH Terms] OR “Knowledge Bases”[MeSH Terms] OR “Machine Learning”[MeSH Terms] OR “Natural Language Processing”[MeSH Terms] OR “neural networks, computer”[MeSH Terms] OR “Robotics”[MeSH Terms] OR “Sentiment Analysis”[MeSH Terms] OR “Unsupervised Machine Learning”[MeSH Terms] OR “Supervised Machine Learning”[MeSH Terms] OR “Deep Learning”[MeSH Terms] OR “Data Mining”[MeSH Terms] OR “Support Vector Machine”[MeSH Terms] OR “Random Forest”[MeSH Terms] OR “Artificial Intelligence”[Title/Abstract] OR “Computer Heuristics”[Title/Abstract] OR “expert syst*”[Title/Abstract] OR “Fuzzy Logic”[Title/Abstract] OR “Knowledge Bases”[Title/Abstract] OR “Machine Learning”[Title/Abstract] OR “Natural Language Processing”[Title/Abstract] OR “neural networ*”[Title/Abstract] OR “Robotics”[Title/Abstract] OR “Sentiment Analysis”[Title/Abstract] OR “Machine Learning”[Title/Abstract] OR “Deep Learning”[Title/Abstract] OR “Data Mining”[Title/Abstract] OR “Support Vector Machine”[Title/Abstract] OR “Random Forest”[Title/Abstract] OR “cognitive analytics”[Title/Abstract] OR “cognitive syst*”[Title/Abstract] OR “general ai”[Title/Abstract] OR “strong ai”[Title/Abstract] OR “narrow ai”[Title/Abstract] OR “weak ai”[Title/Abstract] OR “input laye*”[Title/Abstract] OR “output laye*”[Title/Abstract] OR “hidden laye*”[Title/Abstract] OR “generative adversarial networ*”[Title/Abstract] OR “junction tre*”[Title/Abstract] OR “nearest neighb*”[Title/Abstract] OR “reinforced learning”[Title/Abstract])

Appendix A.1.3. #3—Electronic Health Records

(“electronic health records”[MeSH Terms] OR “health records, personal”[MeSH Terms] OR “medical records”[MeSH Terms] OR “electronic recor*”[Title/Abstract] OR “health recor*”[Title/Abstract] OR “medical recor*”[Title/Abstract] OR “patient recor*”[Title/Abstract] OR “personal health information”[Title/Abstract] OR “health diar*”[Title/Abstract] OR “medical transcrip*”[Title/Abstract] OR “health data”[Title/Abstract] OR “patient data”[Title/Abstract] OR “medical history”[Title/Abstract] OR “clinical history”[Title/Abstract])

Appendix A.2. Search Strategy in Embase

Appendix A.2.1. #1—Multimorbidity

‘multiple chronic conditions’/de OR ‘multimorbidity’/de OR ‘multiple chronic conditions’:ab,ti OR ‘multimorbi*’:ab,ti OR ‘multi morbi*’:ab,ti OR ‘pluripatholog*’:ab,ti OR ‘multidiseas’:ab,ti OR ‘multi diseas*’:ab,ti OR ‘multiple conditions’:ab,ti OR ‘multiple diseases’:ab,ti OR ‘multiple health problems’:ab,ti OR ‘multiple diagnos’:ab,ti

Appendix A.2.2. #2—Artificial Intelligence

‘Artificial Intelligence’/de OR ‘Computer Heuristics’/de OR ‘Expert Systems’/de OR ‘Fuzzy Logic’/de OR ‘Knowledge Bases’/de OR ‘Machine Learning’/de OR ‘Natural Language Processing’/de OR ‘neural networks, computer’/de OR ‘Robotics’/de OR ‘Sentiment Analysis’/de OR ‘Unsupervised Machine Learning’/de OR ‘Supervised Machine Learning’/de OR ‘Deep Learning’/de OR ‘Data Mining’/de OR ‘Support Vector Machine’/de OR ‘Random Forest’/de OR ‘Artificial Intelligence’:ab,ti OR ‘Computer Heuristics’:ab,ti OR ‘expert syst*’:ab,ti OR ‘Fuzzy Logic’:ab,ti OR ‘Knowledge Bases’:ab,ti OR ‘Machine Learning’:ab,ti OR ‘Natural Language Processing’:ab,ti OR ‘neural networ*’:ab,ti OR ‘Robotics’:ab,ti OR ‘Sentiment Analysis’:ab,ti OR ‘Machine Learning’:ab,ti OR ‘Deep Learning’:ab,ti OR ‘Data Mining’:ab,ti OR ‘Support Vector Machine’:ab,ti OR ‘Random Forest’:ab,ti OR ‘cognitive analytics’:ab,ti OR ‘cognitive syst*’:ab,ti OR ‘general ai’:ab,ti OR ‘strong ai’:ab,ti OR ‘narrow ai’:ab,ti OR ‘weak ai’:ab,ti OR ‘input laye*’:ab,ti OR ‘output laye*’:ab,ti OR ‘hidden laye*’:ab,ti OR ‘generative adversarial networ*’:ab,ti OR ‘junction tre*’:ab,ti OR ‘nearest neighb*’:ab,ti OR ‘reinforced learning’:ab,ti

Appendix A.2.3. #3—Electronic Health Records

‘electronic health records’/de OR ‘health records, personal’/de OR ‘medical records’/de OR ‘electronic recor*’:ab,ti OR ‘health recor*’:ab,ti OR ‘medical recor*’:ab,ti OR ‘patient recor*’:ab,ti OR ‘personal health information’:ab,ti OR ‘health diar*’:ab,ti OR ‘medical transcrip*’:ab,ti OR ‘health data’:ab,ti OR ‘patient data’:ab,ti OR ‘medical history’:ab,ti OR ‘clinical history’:ab,ti

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Figure 1. Application of the Patient/Population, Intervention, Comparison, and Outcomes (PICO) model to assess suitability of the identified articles for inclusion in the systematic review.
Figure 1. Application of the Patient/Population, Intervention, Comparison, and Outcomes (PICO) model to assess suitability of the identified articles for inclusion in the systematic review.
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Figure 2. PRISMA 2020 flow diagram.
Figure 2. PRISMA 2020 flow diagram.
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Table 1. Characteristics of the included studies in the systematic review.
Table 1. Characteristics of the included studies in the systematic review.
Author, Year [Ref]CountryClinical
Setting
Study
Population
Medication
Usage
LaboratorySocial/
Lifestyle
Quality of Life, Health-RelatedSample Size (n)AI Approach aAI ObjectiveGrade Score
Ageno A et al., 2023 [32]SpainPrimary careMultimorbidityYesNoNoNo320ML algorithmsPredict risk factorsLow ⨁⨁◯◯
Bendayan R et al., 2022 [33]EnglandSpecialized careSevere mental illnessYesYesYesNo17,500NLP (MedCAT)Extract physical health dataLow ⨁⨁◯◯
Bolt H et al., 2023 [34]EnglandHospitalAcute Kidney InjuryNoNoNoNo133,488ClusteringProfile clusters of underlying comorbiditiesLow ⨁⨁◯◯
Chushig-Muzo D et al., 2022 [35]SpainHospitalGeneral populationYesNoNoNo15,162Denoising autoencoderProfile progression of chronic patientsLow ⨁⨁◯◯
Cruz-Ávila HA et al., 2020 [36]MexicoHospitalCardiovascular diseasesNoNoNoNo34,099CVCEstimate molecular relationships behind multimorbidityLow ⨁⨁◯◯
Dashtban A et al., 2023 [37]UKPrimary careChronic Kidney DiseaseYesYesYesNo350,067XGBoost, NB,
K-NN, DT
Profile clusters of chronic kidney diseaseLow ⨁⨁◯◯
Dorr DA et al., 2022 [38]USAHospitalMultimorbidityNoNoYesNo76,479LRPredict health care utilizationLow ⨁⨁◯◯
Dworzynski P et al., 2020 [39]DenmarkHospitalType 2 diabetes mellitusYesNoNoNo203,517RLR, LR, RF, XGBoostPredict future onset of chronic disease comorbiditiesLow ⨁⨁◯◯
Fahmi A et al., 2023 [40]UKHospitalPolypharmacyYesNoYesNo532,732RFPredict ADR riskLow ⨁⨁◯◯
Fränti P et al., 2022 [41]FinlandPrimary care and hospitalGeneral populationNoNoNoNo3,800,000M-algorithmProfile multimorbidity clustersLow ⨁⨁◯◯
Han X et al., 2022 [42]ChinaHospitalSchizophrenia and related disordersNoNoNoNo8252Association Rule Mining (ARM)Predict health care utilizationLow ⨁⨁◯◯
Hayward CJ et al., 2023 [43]EnglandHospitalGeneral populationNoNoYesNo375,669AI-powered process miningEstimate disease trajectoriesLow ⨁⨁◯◯
Hossain ME et al., 2021 [44]AustraliaGeneralType 2 diabetes mellitusNoNoNoNo344LR, SVM, DT, RF,
NB, K-NN
Predict comorbid riskLow ⨁⨁◯◯
Josephson CB et al., 2023 [45]UKPrimary care and hospitalEpilepsyYesNoYesNo1,032,129NLP (CALIBRE)Profile clusters of premature mortalityLow ⨁⨁◯◯
Khader F et al., 2023 [46]USA and GermanyHospitalAdmitted to ICU bNoYesNoNo81,558MDLImprove diagnostic performanceLow ⨁⨁◯◯
Kueper JK et al., 2022 [47]CanadaPrimary CareGeneral populationNoNoYesNo221,047Primary-care decision support toolImprove diagnostic decisionLow ⨁⨁◯◯
Lai FTT et al., 2021 [48]China and SwitzerlandHospitalGeneral populationNoNoNoNo20,000Hierarchical clusteringProfile multimorbid inpatientsLow ⨁⨁◯◯
Li R et al., 2023 [49]ChinaHospitalGeneral populationYesNoNoNo6350PIMNet.Improve the medication recommendationLow ⨁⨁◯◯
Linden T et al., 2021 [50]USAGeneralEpilepsyYesYesNoNo132,265DeepLORIPredict risk for common comorbiditiesLow ⨁⨁◯◯
Lip GYH et al., 2022 [51]USAHospitalGeneral populationNoNoNoNo4,289,481ANNIdentify the relationships among comorbidity and other variablesLow ⨁⨁◯◯
Lu H et al., 2022 [52]AustraliaGeneralChronic patientsNoNoNoNo19,828ANNPredict the comorbid risk of chronic diseases and their comorbiditiesLow ⨁⨁◯◯
Ma H et al., 2022 [53]ChinaHospitalAdmitted to hospitalNoNoNoNo144,207Data miningIdentify associations between diseasesLow ⨁⨁◯◯
Mahajan A et al., 2021 [54]USAGeneralGeneral populationYesYesYesNo992,868ML algorithmsPredict multimorbidity risk scoresLow ⨁⨁◯◯
Nielsen AB et al., 2019 [55]DenmarkHospitalAdmitted to ICU bNoYesNoNo11,896ANNImproves mortality predictionsLow ⨁⨁◯◯
Nikolaou V et al., 2021 [56]UKHospitalCOPD c and cardiovascular comorbidityYesNoNoNo6883RF, DT, XGBoost, MLRPredict cardiovascular comorbiditiesLow ⨁⨁◯◯
Oh SH et al., 2021 [57]South KoreaGeneralGeneral populationNoNoNoNoUnclearCNN-based modelPredict similarity in multiple diseasesLow ⨁⨁◯◯
Prior TS et al., 2021 [58]DenmarkHospitalIdiopathic pulmonary fibrosisYesYesNoYes150Self-organizing mapsProfile comorbidity clustersLow ⨁⨁◯◯
Sae-Ang, A et al., 2022 [59]ThailandPrimary careDiabetes, hypertension, or cardiovascular diseaseYesNoNoNo3925LR, NN, RF, MLPImprove the drug prescription and verificationLow ⨁⨁◯◯
Shi X et al., 2021 [60]BelgiumPrimary careMultimorbidityNoNoNoNo65,939Markov chains and WARM, Weighted Association Rule MiningEstimate chronic conditions relationsLow ⨁⨁◯◯
Siebenhuener K et al., 2017 [61]SwitzerlandHospitalMultimorbidityYesNoNoNo1039ML algorithmsEstimate combinations of chronic diseases and medicationsLow ⨁⨁◯◯
Stafford G et al., 2021 [62]SpainPrimary careGeneral populationYesNoYesNo916,619ClusteringProfile multimorbidity and polypharmacy clustersLow ⨁⨁◯◯
Strauss MJ et al., 2021 [17]AustriaHospitalGeneral populationNoNoNoNo478,575ANNIdentify disease phenotypesLow ⨁⨁◯◯
Sun M et al., 2023 [63]ChinaHospitalAdmitted to ICU bYesNoNoNo6350Hierarchical clusteringImprove the medication recommendationLow ⨁⨁◯◯
Uddin S et al., 2022 [3]AustraliaGeneralChronic patientsNoNoNoNo29,100LR, K-NN, NB, RF, XGBoost, MLP, CNNPredict disease comorbidity and multimorbidityLow ⨁⨁◯◯
Verhoeff M et al., 2023 [64]NetherlandsHospitalOncologic patients with multimorbidityNoNoNoNo22,133Fuzzy c-means clusteringProfile multimorbidity clustersLow ⨁⨁◯◯
Violan C et al., 2019 [65]SpainPrimary careGeneral populationYesNoYesNo916,619Fuzzy c-means
clustering
Profile multimorbidity clustersLow ⨁⨁◯◯
Wang T et al., 2022 [66]UKHospitalSevere mental illnessNoNoNoNo7728Temporal bipartite network modelEstimate hospitalization and multimorbidity profilesLow ⨁⨁◯◯
Wesołowski S et al., 2022 [67]USAHospitalMother–child pairsYesNoYesNo1,659,372Poisson Binomial-based ComorbidityPredict cardiovascular outcomesLow ⨁⨁◯◯
Yang F et al., 2022 [68]ChinaHospitalAdmitted to ICU bNoNoNoNo7491RNN, MTL, LSTM-NN, RETAIN,
Deepcare, DeepMPM-w/o-β, DeepMPM
Predict mortality riskLow ⨁⨁◯◯
Ye C et al., 2018 [69]USAPrimary care and hospitalGeneral populationYesYesYesNo1,504,437XGBoostPredict hypertension riskLow ⨁⨁◯◯
Zhang Y et al., 2015 [70]USAHospitalChronic kidney disease patients with multimorbidityYesYesNoNo664ML algorithmPredict future stateLow ⨁⨁◯◯
Zhao B et al., 2023 [71]USAHospitalAdmitted to CCU dNoNoNoNo46,511Graphical modelingImprove diagnostic
decision
Low ⨁⨁◯◯
Zheng H et al., 2021 [72]USAPrimary careType 2 diabetes mellitusYesYesYesNo16,665Reinforcement
learning
Improve health outcomesLow ⨁⨁◯◯
Zulman DM et al., 2015 [73]USAPrimary Care and HospitalHypertensionYesYesNoNo5997Decision Support
Systems (ATHENA—HTN)
Identify comorbidity
interrelatedness
Low ⨁⨁◯◯
a ANN (Artificial Neural Network), CNN (convolutional neural network), CVC (Comorbidity Network), DeepLORI (Deep personalized LOngitudinal convolutional RIsk model), DeepMPM (mortality risk prediction model based on deep learning), DT (decision tree), K-NN (K-nearest neighbor), LR (logistic regression), LSTM-NN (Long Short-Term Memory Neural Network), MDL (Multimodal Deep Learning), ML (machine learning), MLP (Multilayer Perceptron), MLR (multinomial logistic regression), MTL (multi-task learning), NB (Naïve Bayes), NLP (natural language processing), PIMNet (Patient Information Mining Network), RF (random forest), RLR (reference logistic regression), RNN (Recurrent Neural Network), SVM (Support Vector Machine). b ICU (Intensive Care Unit). c COPD (Chronic Obstructive Pulmonary Disease). d CCU (Critical Care Unit).
Table 2. Overview of performance metrics reported across included studies.
Table 2. Overview of performance metrics reported across included studies.
Study [Ref]Model aPrecisionRecallAccuracyF1 ScoreOther b
Bendayan R et al., 2022 [33]NLP0.82–1.000.85–1.00 0.91–1.00
Cruz-Ávila HA et al., 2020 [36]CVC Jaccard: 0.121–0.828
Dashtban A et al., 2023 [37]XGBoost 0.950.84–0.97Se: 0.81–0.98
NB 0.59–0.650.09–0.84Se: 0.22–0.84
K-NN 0.780.59–0.86Se: 0.44–0.97
DT 0.920.78–0.95Se: 0.77–0.97
Dorr DA et al., 2022 [38]LR C-index: 0.53–0.81
Dworzynski P et al., 2020 [39]RLR AUC: 0.66–0.74
LR AUC: 0.68–0.77
RF AUC: 0.67–0.77
XGBoost AUC: 0.69–0.80
Fahmi A et al., 2023 [40]RF C-index: 0.62–0.66; DOR: 4.06–7.16
Hossain ME et al., 2021 [44]LR0.830.830.830.83
SVM0.830.830.830.83
DT0.840.920.830.88
RF0.801.000.870.89
NB0.820.750.790.78
K-NN0.770.830.790.80
Khader F et al., 2023 [46]MDL AUC: 0.70–0.77; Sp: 0.65–0.72; Se: 0.66–0.70; PPV: 0.34–0.40
Li R et al., 2023 [49]PIMNet 0.69PRAUC: 0.76; Jaccard: 0.54
Linden T et al., 2021 [50]DeepLORI Uno’s C-index: 0.72–0.77
Lip GYH et al., 2022 [51]LR C-index: 0.95
ANN C-index: 0.90
Lu H et al., 2022 [52]ANN 0.70–0.90 AUC: 0.76–0.90; mAP: 0.47–0.68; NDCG: 0.54–0.74
Mahajan A et al., 2021 [54]ML AUC: 0.82–0.89; Sp: 0.75–0.83; Se: 0.72–0.82
Nielsen AB et al., 2019 [55]ANN AUC: 0.79; DOR: 0.41; PPV: 0.59
Nikolaou V et al., 2021 [56]RF 0.86 Sp: 0.17–0.96; Se: 0.00–0.87; PPV: 0.00–0.98; NPV: 0.02–0.99
DT 0.34 Sp: 0.14–0.97; Se: 0.06–0.88; PPV: 0.21–0.35; NPV: 0.69–0.79
XGBoost 0.39 Sp: 0.15–0.97; Se: 0.06–0.89; PPV: 0.22–0.40; NPV: 0.70–0.84
MLR 0.33 Sp: 0.15–0.97; Se: 0.05–0.90; PPV: 0.15–0.42; NPV: 0.74–0.86
Oh SH et al., 2021 [57]CNN0.52–0.850.61–0.890.54–0.860.55–0.92
Sae-Ang A et al., 2022 [59]NN0.450.75 Hit: 0.97; NDCG: 0.77; Macro-AP: 0.25; Micro-AP: 0.62; Macro-AUC: 0.71; Micro-AUC: 0.88
LR0.450.75 Hit: 0.97; NDCG: 0.77; Macro-AP: 0.23; Micro-AP: 0.63; Macro-AUC: 0.69; Micro-AUC: 0.89
RF0.460.76 Hit: 0.97; NDCG: 0.76; Macro-AP: 0.33; Micro-AP: 0.64; Macro-AUC: 0.73; Micro-AUC: 0.89
MLP0.460.76 Hit: 0.97; NDCG: 0.79; Macro-AP: 0.32; Micro-AP: 0.67; Macro-AUC: 0.76; Micro-AUC: 0.90
Strauss MJ et al., 2021 [17]ANN0.00–1.000.00–1.00 0.04–0.78
Sun M et al., 2023 [63]HC 0.63PRAUC: 0.71; Jaccard: 0.48
Uddin S et al., 2022 [3]LR0.750.740.740.73
K-NN0.760.760.760.75
NB0.610.630.630.54
RF0.880.870.870.87
XGBoost0.950.950.950.95
MLP0.840.740.740.75
CNN0.920.920.920.92
Yang F et al., 2022 [68]RNN0.740.76 0.75AUC: 0.83
MTL0.620.58 0.59AUC: 0.64
LSTM-NN0.760.75 0.76AUC: 0.83
RETAIN0.760.78 0.77AUC: 0.83
Deepcare0.790.77 0.78AUC: 0.79
DeepMPM-w/o-β0.770.78 0.77AUC: 0.84
DeepMPM0.770.80 0.78AUC: 0.85
Ye C et al., 2018 [69]XGBoost AUC: 0.87–0.92; Sp: 0.03–0.61; Se: 0.07–0.35; PPV: 0.01–0.51
Zhang Y et al., 2015 [70]ML 0.07–0.75 FN: 0.00; FP: 0.00–0.25
a ANN (Artificial Neural Network), CNN (convolutional neural network), CVC (Comorbidity Network), DeepLORI (Deep personalized LOngitudinal convolutional RIsk model), DeepMPM (mortality risk prediction model based on deep learning), DT (decision tree), HC (hierarchical clustering), K-NN (K-nearest neighbor), LR (logistic regression), LSTM-NN (Long Short-Term Memory Neural Network), MDL (Multimodal Deep Learning), ML (machine learning), MLP (Multilayer Perceptron), MLR (multinomial logistic regression), MTL (multi-task learning), NB (Naïve Bayes), NLP (natural language processing), PIMNet (Patient Information Mining Network), RF (random forest), RLR (reference logistic regression), RNN (Recurrent Neural Network), SVM (Support Vector Machine). b AUC (Area Under the Receiver-Operating Characteristic Curve), DOR (Diagnostic Odds Ratio), Hit (hit rate), FN (false negative), FP (false positive), Macro-AP (macro average precision), mAP (mean average precision), Micro-AP (micro average precision), NDCG (Normalized discounted cumulative gain), NPV (negative predictive value), PPV (positive predictive value), PRAUC (Area Under the Precision–Recall Curve), Se (Sensitivity), Sp (Specificity).
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Ioakeim-Skoufa, I.; Cebollada-Herrera, C.; Marín-Bárcena, C.; Roque, V.; Roque, F.; Atkins, K.; Hernández-Rodríguez, M.Á.; Aza-Pascual-Salcedo, M.; Fanlo-Villacampa, A.; Coelho, H.; et al. Electronic Health Records: A Gateway to AI-Driven Multimorbidity Solutions—A Comprehensive Systematic Review. J. Clin. Med. 2025, 14, 3434. https://doi.org/10.3390/jcm14103434

AMA Style

Ioakeim-Skoufa I, Cebollada-Herrera C, Marín-Bárcena C, Roque V, Roque F, Atkins K, Hernández-Rodríguez MÁ, Aza-Pascual-Salcedo M, Fanlo-Villacampa A, Coelho H, et al. Electronic Health Records: A Gateway to AI-Driven Multimorbidity Solutions—A Comprehensive Systematic Review. Journal of Clinical Medicine. 2025; 14(10):3434. https://doi.org/10.3390/jcm14103434

Chicago/Turabian Style

Ioakeim-Skoufa, Ignatios, Celeste Cebollada-Herrera, Concepción Marín-Bárcena, Vitor Roque, Fátima Roque, Kerry Atkins, Miguel Ángel Hernández-Rodríguez, Mercedes Aza-Pascual-Salcedo, Ana Fanlo-Villacampa, Helena Coelho, and et al. 2025. "Electronic Health Records: A Gateway to AI-Driven Multimorbidity Solutions—A Comprehensive Systematic Review" Journal of Clinical Medicine 14, no. 10: 3434. https://doi.org/10.3390/jcm14103434

APA Style

Ioakeim-Skoufa, I., Cebollada-Herrera, C., Marín-Bárcena, C., Roque, V., Roque, F., Atkins, K., Hernández-Rodríguez, M. Á., Aza-Pascual-Salcedo, M., Fanlo-Villacampa, A., Coelho, H., Lasala-Aza, C., Ledesma-Calvo, R., Gimeno-Miguel, A., & Vicente-Romero, J. (2025). Electronic Health Records: A Gateway to AI-Driven Multimorbidity Solutions—A Comprehensive Systematic Review. Journal of Clinical Medicine, 14(10), 3434. https://doi.org/10.3390/jcm14103434

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