JMIR Medical Informatics

Clinical informatics, decision support for health professionals, electronic health records, and eHealth infrastructures.

Editor-in-Chief:

Christian Lovis, MD, MPH, FACMI, Division of Medical Information Sciences, University Hospitals of Geneva (HUG), University of Geneva (UNIGE), Switzerland


Impact Factor 3.1 CiteScore 7.9

JMIR Medical Informatics (JMI, ISSN 2291-9694, Journal Impact Factor™ 3.1) (Editor-in-chief: Christian Lovis, MD, MPH, FACMI) is an open-access journal that focuses on the challenges and impacts of clinical informatics, digitalization of care processes, clinical and health data pipelines from acquisition to reuse, including semantics, natural language processing, natural interactions, meaningful analytics and decision support, electronic health records, infrastructures, implementation, and evaluation (see Focus and Scope).

JMIR Medical Informatics adheres to rigorous quality standards, involving a rapid and thorough peer-review process, professional copyediting, and professional production of PDF, XHTML, and XML proofs.

In 2024, JMIR Medical Informatics received a Journal Impact Factor™ of 3.1 (5-Year Journal Impact Factor: 3.5) (Source: Clarivate Journal Citation Reports™, 2024) and a Scopus CiteScore™ of 7.9, placing it in the 78th percentile (#30 of 138) and the 77th percentile (#14 of 59) as a Q1 journal in the fields of Health Informatics and Health Information Management. The journal is indexed in MEDLINEPubMedPubMed CentralDOAJ, Scopus, and SCIE (Clarivate)

Recent Articles

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AI Language Models in Health Care

Informed consent forms (ICFs) for clinical trials have become increasingly complex, often hindering participant comprehension and engagement due to legal jargon and lengthy content. The recent advances in large language models (LLMs) present an opportunity to streamline the ICF creation process while improving readability, understandability, and actionability.

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AI Language Models in Health Care

The recent introduction of generative artificial intelligence (AI) as an interactive consultant has sparked interest in evaluating its applicability in medical discussions and consultations, particularly within the domain of depression.

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Decision Support for Health Professionals

Healthcare is facing enormous challenges. The recent pandemic has caused a global reflection on how clinical and organisational processes should be organised, optimising decision-making among managers and Healthcare professionals to deliver increasingly patient-centric care. Efficiency in surgical scheduling is particularly critical, affecting waiting list management and being susceptible to suboptimal decisions due to its complexity and constraints.

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AI Language Models in Health Care

Infectious diseases have consistently been a significant concern in public health, requiring proactive measures to safeguard societal well-being. In this regard, regular monitoring activities play a crucial role in mitigating the adverse effects of diseases on society. To monitor disease trends, various organizations, such as the World Health Organization (WHO) and the European Centre for Disease Prevention and Control (ECDC), collect diverse surveillance data and make them publicly accessible. However, these platforms primarily present surveillance data in English, which creates language barriers for non–English-speaking individuals and global public health efforts to accurately observe disease trends. This challenge is particularly noticeable in regions such as the Middle East, where specific infectious diseases, such as Middle East respiratory syndrome coronavirus (MERS-CoV), have seen a dramatic increase. For such regions, it is essential to develop tools that can overcome language barriers and reach more individuals to alleviate the negative impacts of these diseases.

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Implementation Report

The adoption of digital systems requires processes for quality assurance and uptake of standards to achieve universal health coverage. The World Health Organization (WHO) developed the Digital Adaptation Kits (DAKs) within the SMART(Standards-based, Machine-readable, Adaptive, Requirements-based, and Testable) Guidelines framework to support the uptake of standards and recommendations through digital systems. DAKs are a software neutral mechanism for translating narrative guidelines to support the design of digital systems. However, a systematic process is needed for implementing and ensuring the impact of DAKs in country contexts.

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Machine Learning

Diabetic retinopathy (DR) is the leading cause of preventable blindness worldwide. Machine learning (ML) systems can enhance DR in community-based screening. However, predictive power models for usability and performance are still being determined.

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AI Language Models in Health Care

Chronic kidney disease (CKD) is a prevalent condition with significant global health implications. Early detection and management are critical to prevent disease progression and complications. Deep learning models using retinal images have emerged as potential non-invasive screening tools for CKD, though their performance may be limited, especially in identifying individuals with proteinuria and in specific subgroups.

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Ontologies, Classifications, and Coding

Over the last 10-15 years, US health care and the practice of medicine itself have been transformed by a proliferation of digital medicine and digital therapeutic products (collectively, digital health tools [DHTs]). While a number of DHT classifications have been proposed to help organize these tools for discovery, retrieval, and comparison by health care organizations seeking to potentially implement them, none have specifically addressed that organizations considering their implementation approach the DHT discovery process with one or more specific outcomes in mind. An outcomes-based DHT ontology could therefore be valuable not only for health systems seeking to evaluate tools that influence certain outcomes, but also for regulators and vendors seeking to ascertain potential substantial equivalence to predicate devices.

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Machine Learning

Modern lifestyle risk factors, like physical inactivity and poor nutrition, contribute to rising rates of obesity and chronic diseases like type 2 diabetes and heart disease. Particularly personalized interventions have been shown to be effective for long-term behavior change. Machine learning can be used to uncover insights without predefined hypotheses, revealing complex relationships and distinct population clusters. New data-driven approaches, such as the factor probabilistic distance clustering algorithm, provide opportunities to identify potentially meaningful clusters within large and complex datasets.

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Electronic Health Records

Physician surveys provide indispensable insights into physician experience, but the question of whether responders are representative can limit confidence in conclusions. Ubiquitously-collected electronic health record (EHR) usage data may improve understanding of the experiences of survey non-responders in relation to responders, providing clues regarding their well-being.

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Digital Health Meta-Research and Bibliographic Studies

The benefits of smart contracts (SCs) for sustainable health care are a relatively recent topic that has gathered attention given its relationship with trust and the advantages of decentralization, immutability, and traceability introduced in health care. Nevertheless, more studies need to explore the role of SCs in this sector based on the frameworks propounded in the literature that reflect business logic that has been customized, automatized, and prioritized, as well as system trust. This study addressed this lacuna.

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Machine Learning

Chronic heart failure (CHF) is a serious threat to human health, with high morbidity and mortality rates, imposing a heavy burden on the health care system and society. With the abundance of medical data and the rapid development of machine learning (ML) technologies, new opportunities are provided for in-depth investigation of the mechanisms of CHF and the construction of predictive models. The introduction of health ecology research methodology enables a comprehensive dissection of CHF risk factors from a wider range of environmental, social, and individual factors. This not only helps to identify high-risk groups at an early stage but also provides a scientific basis for the development of precise prevention and intervention strategies.

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Preprints Open for Peer-Review

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