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1.
Sci Rep ; 14(1): 12601, 2024 06 01.
Article in English | MEDLINE | ID: mdl-38824162

ABSTRACT

Data categorization is a top concern in medical data to predict and detect illnesses; thus, it is applied in modern healthcare informatics. In modern informatics, machine learning and deep learning models have enjoyed great attention for categorizing medical data and improving illness detection. However, the existing techniques, such as features with high dimensionality, computational complexity, and long-term execution duration, raise fundamental problems. This study presents a novel classification model employing metaheuristic methods to maximize efficient positives on Chronic Kidney Disease diagnosis. The medical data is initially massively pre-processed, where the data is purified with various mechanisms, including missing values resolution, data transformation, and the employment of normalization procedures. The focus of such processes is to leverage the handling of the missing values and prepare the data for deep analysis. We adopt the Binary Grey Wolf Optimization method, a reliable subset selection feature using metaheuristics. This operation is aimed at improving illness prediction accuracy. In the classification step, the model adopts the Extreme Learning Machine with hidden nodes through data optimization to predict the presence of CKD. The complete classifier evaluation employs established measures, including recall, specificity, kappa, F-score, and accuracy, in addition to the feature selection. Data related to the study show that the proposed approach records high levels of accuracy, which is better than the existing models.


Subject(s)
Medical Informatics , Renal Insufficiency, Chronic , Humans , Renal Insufficiency, Chronic/diagnosis , Medical Informatics/methods , Machine Learning , Deep Learning , Algorithms , Male , Female , Middle Aged
2.
Brief Bioinform ; 25(4)2024 May 23.
Article in English | MEDLINE | ID: mdl-38836701

ABSTRACT

Biomedical data are generated and collected from various sources, including medical imaging, laboratory tests and genome sequencing. Sharing these data for research can help address unmet health needs, contribute to scientific breakthroughs, accelerate the development of more effective treatments and inform public health policy. Due to the potential sensitivity of such data, however, privacy concerns have led to policies that restrict data sharing. In addition, sharing sensitive data requires a secure and robust infrastructure with appropriate storage solutions. Here, we examine and compare the centralized and federated data sharing models through the prism of five large-scale and real-world use cases of strategic significance within the European data sharing landscape: the French Health Data Hub, the BBMRI-ERIC Colorectal Cancer Cohort, the federated European Genome-phenome Archive, the Observational Medical Outcomes Partnership/OHDSI network and the EBRAINS Medical Informatics Platform. Our analysis indicates that centralized models facilitate data linkage, harmonization and interoperability, while federated models facilitate scaling up and legal compliance, as the data typically reside on the data generator's premises, allowing for better control of how data are shared. This comparative study thus offers guidance on the selection of the most appropriate sharing strategy for sensitive datasets and provides key insights for informed decision-making in data sharing efforts.


Subject(s)
Biological Science Disciplines , Information Dissemination , Humans , Medical Informatics/methods
3.
Health Informatics J ; 30(2): 14604582241259331, 2024.
Article in English | MEDLINE | ID: mdl-38856153

ABSTRACT

The challenges of IT adoption in the healthcare sector have generated much interest across a range of research communities, including Information Systems (IS) and Health Informatics (HI). Given their long-standing interest in IT design, development, implementation, and adoption to improve productivity and support organisational transformation, the IS and HI fields are highly correlated in their research interests. Nevertheless, the two fields serve different academic audiences, have different research foci, and theorise IT artifacts differently. We investigate the dyadic relationship between health information systems (HIS) research in IS and HI through the communication patterns between the two fields. We present the citation analysis results of HIS research published in IS and HI journals between 2000 and 2020. The results revealed that despite the two fields sharing a common interest, communication between them is limited and only about specific topics. Potentially relevant ideas and theories generated in IS have not yet been sufficiently recognised by HI scholars and incorporated into the HI literature. However, the upward trend of HIS publications in IS indicates that IS has the potential to contribute more to HI.


Subject(s)
Bibliometrics , Medical Informatics , Scholarly Communication , Humans , Medical Informatics/methods , Scholarly Communication/trends , Information Systems/statistics & numerical data
5.
J Med Internet Res ; 26: e52399, 2024 05 13.
Article in English | MEDLINE | ID: mdl-38739445

ABSTRACT

BACKGROUND: A large language model (LLM) is a machine learning model inferred from text data that captures subtle patterns of language use in context. Modern LLMs are based on neural network architectures that incorporate transformer methods. They allow the model to relate words together through attention to multiple words in a text sequence. LLMs have been shown to be highly effective for a range of tasks in natural language processing (NLP), including classification and information extraction tasks and generative applications. OBJECTIVE: The aim of this adapted Delphi study was to collect researchers' opinions on how LLMs might influence health care and on the strengths, weaknesses, opportunities, and threats of LLM use in health care. METHODS: We invited researchers in the fields of health informatics, nursing informatics, and medical NLP to share their opinions on LLM use in health care. We started the first round with open questions based on our strengths, weaknesses, opportunities, and threats framework. In the second and third round, the participants scored these items. RESULTS: The first, second, and third rounds had 28, 23, and 21 participants, respectively. Almost all participants (26/28, 93% in round 1 and 20/21, 95% in round 3) were affiliated with academic institutions. Agreement was reached on 103 items related to use cases, benefits, risks, reliability, adoption aspects, and the future of LLMs in health care. Participants offered several use cases, including supporting clinical tasks, documentation tasks, and medical research and education, and agreed that LLM-based systems will act as health assistants for patient education. The agreed-upon benefits included increased efficiency in data handling and extraction, improved automation of processes, improved quality of health care services and overall health outcomes, provision of personalized care, accelerated diagnosis and treatment processes, and improved interaction between patients and health care professionals. In total, 5 risks to health care in general were identified: cybersecurity breaches, the potential for patient misinformation, ethical concerns, the likelihood of biased decision-making, and the risk associated with inaccurate communication. Overconfidence in LLM-based systems was recognized as a risk to the medical profession. The 6 agreed-upon privacy risks included the use of unregulated cloud services that compromise data security, exposure of sensitive patient data, breaches of confidentiality, fraudulent use of information, vulnerabilities in data storage and communication, and inappropriate access or use of patient data. CONCLUSIONS: Future research related to LLMs should not only focus on testing their possibilities for NLP-related tasks but also consider the workflows the models could contribute to and the requirements regarding quality, integration, and regulations needed for successful implementation in practice.


Subject(s)
Delphi Technique , Natural Language Processing , Humans , Machine Learning , Delivery of Health Care/methods , Medical Informatics/methods
6.
J Biomed Inform ; 154: 104653, 2024 Jun.
Article in English | MEDLINE | ID: mdl-38734158

ABSTRACT

Many approaches in biomedical informatics (BMI) rely on the ability to define, gather, and manipulate biomedical data to support health through a cyclical research-practice lifecycle. Researchers within this field are often fortunate to work closely with healthcare and public health systems to influence data generation and capture and have access to a vast amount of biomedical data. Many informaticists also have the expertise to engage with stakeholders, develop new methods and applications, and influence policy. However, research and policy that explicitly seeks to address the systemic drivers of health would more effectively support health. Intersectionality is a theoretical framework that can facilitate such research. It holds that individual human experiences reflect larger socio-structural level systems of privilege and oppression, and cannot be truly understood if these systems are examined in isolation. Intersectionality explicitly accounts for the interrelated nature of systems of privilege and oppression, providing a lens through which to examine and challenge inequities. In this paper, we propose intersectionality as an intervention into how we conduct BMI research. We begin by discussing intersectionality's history and core principles as they apply to BMI. We then elaborate on the potential for intersectionality to stimulate BMI research. Specifically, we posit that our efforts in BMI to improve health should address intersectionality's five key considerations: (1) systems of privilege and oppression that shape health; (2) the interrelated nature of upstream health drivers; (3) the nuances of health outcomes within groups; (4) the problematic and power-laden nature of categories that we assign to people in research and in society; and (5) research to inform and support social change.


Subject(s)
Medical Informatics , Humans , Medical Informatics/methods , Biomedical Research
9.
Clin Imaging ; 107: 110069, 2024 Mar.
Article in English | MEDLINE | ID: mdl-38237327

ABSTRACT

In a traditionally male-dominated field, the journey of Dr. Andriole represents a pioneering path in the realms of radiology and medical imaging informatics. Her career has not only reshaped the landscape of radiology but also championed diversity, equity, and inclusion in healthcare technology. Through a comprehensive exploration of Dr. Andriole's career trajectory, we navigate her transition from analog to digital radiology, her influential role in pioneering picture archiving communication systems (PACS), and her dedication to mentorship and education in the field. Dr. Andriole's journey underscores the growing influence of women in radiology and informatics, exemplified by her Gold Medal accolades from esteemed organizations. Dr. Andriole's career serves as a beacon for aspiring radiologists and informaticians, emphasizing the significance of passion, mentorship, and collaborative teamwork in advancing the fields of radiology and informatics.


Subject(s)
Medical Informatics , Radiology Information Systems , Radiology , Male , Female , Humans , Radiology/education , Radiography , Medical Informatics/methods , Diagnostic Imaging
10.
JMIR Mhealth Uhealth ; 11: e35917, 2023 02 24.
Article in English | MEDLINE | ID: mdl-36826986

ABSTRACT

BACKGROUND: Patient-generated health data (PGHD) collected from innovative wearables are enabling health care to shift to outside clinical settings through remote patient monitoring (RPM) initiatives. However, PGHD are collected continuously under the patient's responsibility in rapidly changing circumstances during the patient's daily life. This poses risks to the quality of PGHD and, in turn, reduces their trustworthiness and fitness for use in clinical practice. OBJECTIVE: Using a sociotechnical health informatics lens, we developed a data quality management (DQM) guideline for PGHD captured from wearable devices used in RPM with the objective of investigating how DQM principles can be applied to ensure that PGHD can reliably inform clinical decision-making in RPM. METHODS: First, clinicians, health information specialists, and MedTech industry representatives with experience in RPM were interviewed to identify DQM challenges. Second, these stakeholder groups were joined by patient representatives in a workshop to co-design potential solutions to meet the expectations of all the stakeholders. Third, the findings, along with the literature and policy review results, were interpreted to construct a guideline. Finally, we validated the guideline through a Delphi survey of international health informatics and health information management experts. RESULTS: The guideline constructed in this study comprised 19 recommendations across 7 aspects of DQM. It explicitly addressed the needs of patients and clinicians but implied that there must be collaboration among all stakeholders to meet these needs. CONCLUSIONS: The increasing proliferation of PGHD from wearables in RPM requires a systematic approach to DQM so that these data can be reliably used in clinical care. The developed guideline is an important next step toward safe RPM.


Subject(s)
Medical Informatics , Wearable Electronic Devices , Humans , Medical Informatics/methods , Delivery of Health Care , Monitoring, Physiologic
11.
J Assoc Physicians India ; 71(10): 83-88, 2023 Oct.
Article in English | MEDLINE | ID: mdl-38716529

ABSTRACT

Digital technology has encompassed all aspects of healthcare. There are many international and national organizations, guidelines, and formats available in health information systems (HIS), but many are presently still not being used in India. The aim is to give a flawless, secure, and user-friendly health information technology (IT) system for Indian healthcare. We discuss the timeline of digital technology in hospital administration, administrative applications, and the importance of clinical quality in health. Clinical perspectives of clinical information systems (CIS), both in acute as well as chronic clinical care models. Cross-integration of healthcare in IT (HIT) in electronic health records (EHR) or electronic medical records (EMRs), in chronic disease management (CDM) systems, and in clinical decision support systems (CDSS) are elaborated. Also, practical strategic application methods are discussed. The limitations of the current HIS software in India are mostly used for transaction reporting, prescription, and administrative tools. They lack CIS and strategic business applications as compared to mature multinational company (MNC) HIS software. Along with this, various features and levels of HIS Software, challenges of HIT adoption, Indian health IT standards, and the future framework of IT in health in India are systematically analyzed. We aim at all physicians in India and at all levels of practice, from individuals, group practices, health institutes, or corporate hospitals, and to encourage them to make strategic use of CIS and strategic IT applications in their individual practice and hospital management. This will improve clinical outcomes, patient safety, practitioner performance, adherence to treatment guidelines, and reduction in medical errors, along with efficiency improvements and cost reductions. How to cite this article: Taneja D, Kulkarni SV, Sinha S, et al. Digital Technology in Hospital Administration: A Strategic Choice. J Assoc Physicians India 2023;71(10):83-88.


Subject(s)
Hospital Administration , Humans , India , Hospital Administration/methods , Digital Technology , Decision Support Systems, Clinical , Electronic Health Records , Medical Informatics/methods , Health Information Systems
12.
Biomed Res Int ; 2022: 7139904, 2022.
Article in English | MEDLINE | ID: mdl-35198638

ABSTRACT

This article uses the real medical records and web pages of Chinese medicine diagnosis and treatment of hepatitis B to extract structured medical knowledge, and obtains a total of 8,563 entities, 96,896 relationships, 32 entity types, and 40 relationship types. The structured data was stored in the Neo4j graph structure database, and a knowledge graph of Chinese medical diagnosis and treatment of hepatitis B was constructed. The knowledge map is used as a structured data source to provide high-quality knowledge information for the medical question and answer system based on hepatitis B disease. Applying the deep learning method to the question identification and knowledge response of the question answering system makes the hepatitis B medical intelligent question answering system has important research and application significance. The question-and-answer system takes aim at hepatitis B, a public health problem in the world and leverages the advantages of traditional Chinese medicine for diagnosis and treatment. It provides a reference for doctors' disease diagnosis, treatment, and patient self-care. Its value is important for the treatment of hepatitis B disease.


Subject(s)
Hepatitis B/therapy , Medical Informatics/methods , Medicine, Chinese Traditional , Algorithms , Databases, Factual , Humans
13.
Comput Math Methods Med ; 2022: 8677118, 2022.
Article in English | MEDLINE | ID: mdl-35154360

ABSTRACT

This study was aimed at exploring the new management mode of medical information processing and emergency first aid nursing management under the new artificial intelligence technology. This study will use the artificial intelligence algorithm to optimize medical information processing and emergency first aid nursing management process, in order to improve the efficiency of emergency department and first aid efficiency. The successful rescue rates of hemorrhagic shock, coma, dyspnea, and more than three organs injury were 96.7%, 92.5%, 93.7%, and 87.2%, respectively, after the emergency first aid nursing mode was used in the hospital emergency center. The success rates of first aid within three years were compared, which were 91.8%, 93.4%, and 94.2%, respectively, showing an increasing trend year by year. 255 emergency patients in five batches in June and five batches in July were selected as the research objects by convenience sampling method. Among them, 116 cases in June were taken as the experimental group, and 139 cases in July were taken as the control group, which was used to verify the efficiency of the design model in this study. The results showed that the triage time of the two groups was 8.16 ± 2.07 min and 19.21 ± 6.36 min, respectively, and the difference was statistically significant (P < 0.01). The triage coincidence rates were 96.35% and 90.04%, respectively, and the difference was statistically significant (P < 0.05). The research proved that the design of intelligent medical information processing and emergency first aid nursing management research model can effectively improve the triage efficiency of the wounded, assist the efficiency of emergency nursing of medical staff, and improve the survival rate of emergency patients, which is worthy of clinical promotion.


Subject(s)
Artificial Intelligence , Emergency Nursing/organization & administration , First Aid/nursing , Medical Informatics/methods , Adolescent , Adult , Aged , Algorithms , Child , Child, Preschool , China , Computational Biology , Emergency Nursing/statistics & numerical data , Emergency Service, Hospital/organization & administration , Emergency Service, Hospital/statistics & numerical data , Female , First Aid/statistics & numerical data , Humans , Male , Medical Informatics/statistics & numerical data , Middle Aged , Young Adult
14.
BMC Bioinformatics ; 22(Suppl 1): 599, 2021 Dec 17.
Article in English | MEDLINE | ID: mdl-34920708

ABSTRACT

BACKGROUND: Natural language processing (NLP) and text mining technologies for the extraction and indexing of chemical and drug entities are key to improving the access and integration of information from unstructured data such as biomedical literature. METHODS: In this paper we evaluate two important tasks in NLP: the named entity recognition (NER) and Entity indexing using the SNOMED-CT terminology. For this purpose, we propose a combination of word embeddings in order to improve the results obtained in the PharmaCoNER challenge. RESULTS: For the NER task we present a neural network composed of BiLSTM with a CRF sequential layer where different word embeddings are combined as an input to the architecture. A hybrid method combining supervised and unsupervised models is used for the concept indexing task. In the supervised model, we use the training set to find previously trained concepts, and the unsupervised model is based on a 6-step architecture. This architecture uses a dictionary of synonyms and the Levenshtein distance to assign the correct SNOMED-CT code. CONCLUSION: On the one hand, the combination of word embeddings helps to improve the recognition of chemicals and drugs in the biomedical literature. We achieved results of 91.41% for precision, 90.14% for recall, and 90.77% for F1-score using micro-averaging. On the other hand, our indexing system achieves a 92.67% F1-score, 92.44% for recall, and 92.91% for precision. With these results in a final ranking, we would be in the first position.


Subject(s)
Information Storage and Retrieval , Medical Informatics , Pharmaceutical Preparations , Medical Informatics/methods , Semantics , Unified Medical Language System
15.
PLoS One ; 16(12): e0262067, 2021.
Article in English | MEDLINE | ID: mdl-34972171

ABSTRACT

Integration between information systems is critical, especially in the healthcare domain, since interoperability requirements are related to patients' data confidentiality, safety, and satisfaction. The goal of this study is to propose a solution based on the integration between queue management solution (QMS) and the electronic medical records (EMR), using Health Level Seven (HL7) protocols and Extensible Markup Language (XML). The proposed solution facilitates the patient's self-check-in within a healthcare organization in UAE. The solution aims to help in minimizing the waiting times within the outpatient department through early identification of patients who hold the Emirates national ID cards, i.e., whether an Emirati or expatriates. The integration components, solution design, and the custom-designed XML and HL7 messages were clarified in this paper. In addition, the study includes a simulation experiment through control and intervention weeks with 517 valid appointments. The experiment goal was to evaluate the patient's total journey and each related clinical stage by comparing the "routine-based identification" with the "patient's self-check-in" processes in case of booked appointments. As a key finding, the proposed solution is efficient and could reduce the "patient's journey time" by more than 14 minutes and "time to identify" patients by 10 minutes. There was also a significant drop in the waiting time to triage and the time to finish the triage process. In conclusion, the proposed solution is considered innovative and can provide a positive added value for the patient's whole journey.


Subject(s)
Appointments and Schedules , Data Collection , Electronic Health Records , Health Level Seven , Medical Informatics/methods , Outpatients , Systems Integration , Computer Security , Confidentiality , Delivery of Health Care , Humans , Patient Safety , Patient Satisfaction , Programming Languages , Risk Assessment , Software , Triage , United Arab Emirates , Workflow
16.
Biomed Pharmacother ; 143: 112228, 2021 Nov.
Article in English | MEDLINE | ID: mdl-34649354

ABSTRACT

Coronavirus disease 2019 (COVID-19), which is a respiratory illness associated with high mortality, has been classified as a pandemic. The major obstacles for the clinicians to contain the disease are limited information availability, difficulty in disease diagnosis, predicting disease prognosis, and lack of disease monitoring tools. Additionally, the lack of valid therapies has further contributed to the difficulties in containing the pandemic. Recent studies have reported that the dysregulation of the immune system leads to an ineffective antiviral response and promotes pathological immune response, which manifests as ARDS, myocarditis, and hepatitis. In this study, a novel platform has been described for disseminating information to physicians for the diagnosis and monitoring of patients with COVID-19. An adjuvant approach using compounds that can potentiate antiviral immune response and mitigate COVID-19-induced immune-mediated target organ damage has been presented. A prolonged beneficial effect is achieved by implementing algorithm-based individualized variability measures in the treatment regimen.


Subject(s)
Antiviral Agents/immunology , Antiviral Agents/therapeutic use , COVID-19 Drug Treatment , COVID-19/diagnosis , Chemotherapy, Adjuvant/methods , Medical Informatics/methods , Algorithms , COVID-19/immunology , Disease Management , Disease Progression , Gastrointestinal Tract/immunology , Humans , Immunity, Cellular , Immunity, Humoral , Severity of Illness Index
17.
Sci Rep ; 11(1): 20317, 2021 10 13.
Article in English | MEDLINE | ID: mdl-34645863

ABSTRACT

In cytological examination, suspicious cells are evaluated regarding malignancy and cancer type. To assist this, we previously proposed an automated method based on supervised learning that classifies cells in lung cytological images as benign or malignant. However, it is often difficult to label all cells. In this study, we developed a weakly supervised method for the classification of benign and malignant lung cells in cytological images using attention-based deep multiple instance learning (AD MIL). Images of lung cytological specimens were divided into small patch images and stored in bags. Each bag was then labeled as benign or malignant, and classification was conducted using AD MIL. The distribution of attention weights was also calculated as a color map to confirm the presence of malignant cells in the image. AD MIL using the AlexNet-like convolutional neural network model showed the best classification performance, with an accuracy of 0.916, which was better than that of supervised learning. In addition, an attention map of the entire image based on the attention weight allowed AD MIL to focus on most malignant cells. Our weakly supervised method automatically classifies cytological images with acceptable accuracy based on supervised learning without complex annotations.


Subject(s)
Deep Learning , Image Interpretation, Computer-Assisted/methods , Lung Neoplasms/diagnostic imaging , Lung/diagnostic imaging , Supervised Machine Learning , Adenocarcinoma/diagnostic imaging , Carcinoma, Squamous Cell/diagnostic imaging , Chromatin/chemistry , Humans , Image Processing, Computer-Assisted/methods , Medical Informatics/methods , Neural Networks, Computer , Pattern Recognition, Automated , Reproducibility of Results , Retrospective Studies , Small Cell Lung Carcinoma/diagnostic imaging , Thorax
18.
Biomed Res Int ; 2021: 5556941, 2021.
Article in English | MEDLINE | ID: mdl-34676261

ABSTRACT

A new master-slave binary grey wolf optimizer (MSBGWO) is introduced. A master-slave learning scheme is introduced to the grey wolf optimizer (GWO) to improve its ability to explore and get better solutions in a search space. Five high-dimensional biomedical datasets are used to test the ability of MSBGWO in feature selection. The experimental results of MSBGWO are superior in terms of classification accuracy, precision, recall, F-measure, and number of features selected when compared to those of the binary grey wolf optimizer version 2 (BGWO2), binary genetic algorithm (BGA), binary particle swarm optimization (BPSO), differential evolution (DE) algorithm, and sine-cosine algorithm (SCA).


Subject(s)
Algorithms , Machine Learning , Medical Informatics/methods , Neoplasms/classification , Pattern Recognition, Automated/methods , Computer Simulation , Databases, Factual , Female , Humans , Male , Neoplasms/metabolism , Neoplasms/pathology
19.
Biomed Res Int ; 2021: 2555622, 2021.
Article in English | MEDLINE | ID: mdl-34497846

ABSTRACT

Feature selection is the process of decreasing the number of features in a dataset by removing redundant, irrelevant, and randomly class-corrected data features. By applying feature selection on large and highly dimensional datasets, the redundant features are removed, reducing the complexity of the data and reducing training time. The objective of this paper was to design an optimizer that combines the well-known metaheuristic population-based optimizer, the grey wolf algorithm, and the gradient descent algorithm and test it for applications in feature selection problems. The proposed algorithm was first compared against the original grey wolf algorithm in 23 continuous test functions. The proposed optimizer was altered for feature selection, and 3 binary implementations were developed with final implementation compared against the two implementations of the binary grey wolf optimizer and binary grey wolf particle swarm optimizer on 6 medical datasets from the UCI machine learning repository, on metrics such as accuracy, size of feature subsets, F-measure, accuracy, precision, and sensitivity. The proposed optimizer outperformed the three other optimizers in 3 of the 6 datasets in average metrics. The proposed optimizer showed promise in its capability to balance the two objectives in feature selection and could be further enhanced.


Subject(s)
Big Data , Diagnosis, Computer-Assisted/methods , Machine Learning , Medical Informatics/methods , Pattern Recognition, Automated/standards , Algorithms , Computer Simulation , Humans , Models, Statistical , Reproducibility of Results
20.
Health Serv Res ; 56 Suppl 1: 1006-1036, 2021 10.
Article in English | MEDLINE | ID: mdl-34363220

ABSTRACT

OBJECTIVE: To review evidence regarding the use of Health Information Technology (health IT) interventions aimed at improving care for people living with multiple chronic conditions (PLWMCC) in order to identify critical knowledge gaps. DATA SOURCES: We searched MEDLINE, CINAHL, PsycINFO, EMBASE, Compendex, and IEEE Xplore databases for studies published in English between 2010 and 2020. STUDY DESIGN: We identified studies of health IT interventions for PLWMCC across three domains as follows: self-management support, care coordination, and algorithms to support clinical decision making. DATA COLLECTION/EXTRACTION METHODS: Structured search queries were created and validated. Abstracts were reviewed iteratively to refine inclusion and exclusion criteria. The search was supplemented by manually searching the bibliographic sections of the included studies. The search included a forward citation search of studies nested within a clinical trial to identify the clinical trial protocol and published clinical trial results. Data were extracted independently by two reviewers. PRINCIPAL FINDINGS: The search yielded 1907 articles; 44 were included. Nine randomized controlled trials (RCTs) and 35 other studies including quasi-experimental, usability, feasibility, qualitative studies, or development/validation studies of analytic models were included. Five RCTs had positive results, and the remaining four RCTs showed that the interventions had no effect. The studies address individual patient engagement and assess patient-centered outcomes such as quality of life. Few RCTs assess outcomes such as disability and none assess mortality. CONCLUSIONS: Despite a growing body of literature on health IT interventions or multicomponent interventions including a health IT component for chronic disease management, current evidence for applying health IT solutions to improve care for PLWMCC is limited. The body of literature included in this review provides critical information on the state of the science as well as the many gaps that need to be filled for digital health to fulfill its promise in supporting care delivery that meets the needs of PLWMCC.


Subject(s)
Clinical Decision-Making/methods , Delivery of Health Care/organization & administration , Medical Informatics/methods , Multiple Chronic Conditions/therapy , Quality Improvement/organization & administration , Self-Management/methods , Adult , Aged , Aged, 80 and over , Female , Humans , Male , Middle Aged
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