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JMIR Mental Health

Internet interventions, technologies, and digital innovations for mental health and behavior change.

JMIR Mental Health is the official journal of the Society of Digital Psychiatry

Editor-in-Chief:

John Torous, MD, MBI, Harvard Medical School, USA


Impact Factor 5.8 More information about Impact Factor CiteScore 10.2 More information about CiteScore

JMIR Mental Health (JMH, ISSN 2368-7959Journal Impact Factor 5.8, Journal Citation Reports 2025 from Clarivate) is a premier, open-access, peer-reviewed journal with a unique focus on digital health and Internet/mobile interventions, technologies, and electronic innovations (software and hardware) for mental health, addictions, online counseling, and behavior change. The journal publishes research on system descriptions, theoretical frameworks, review papers, viewpoint/vision papers, and rigorous evaluations that advance evidence-based care, improve accessibility, and enhance the effectiveness of digital mental health solutions. It also explores innovations in digital psychiatry, e-mental health, and clinical informatics in psychiatry and psychology, with an emphasis on improving patient outcomes and expanding access to care.

The journal is indexed in PubMed Central and PubMed, MEDLINEScopus, Sherpa/Romeo, DOAJ, EBSCO/EBSCO Essentials, SCIE, PsycINFO and CABI.

JMIR Mental Health received a Journal Impact Factor of 5.8 (ranked Q1 #25/288 journals in the category Psychiatry, Journal Citation Reports 2025 from Clarivate).

JMIR Mental Health received a Scopus CiteScore of 10.2 (2024), placing it in the 93rd percentile (#35 of 580) as a Q1 journal in the field of Psychiatry and Mental Health.

Recent Articles

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Viewpoints and Opinions on Mental Health

Research on artificial intelligence (AI) and mental health has focused largely on harms at deployment, including chatbot safety, sycophancy, and AI-associated delusions. Less attention has been paid to a prior question: whether the human-generated text and preference judgments that shape large language models are themselves clinically reliable, particularly when self-report may be distorted. This Viewpoint aims to develop the clinical psychiatric construct of collusion—the uncritical acceptance of an unreliable account—as an analytic lens for AI training and deployment, and to argue that the clinical reliability of training and preference data should be treated as an explicit trustworthy-AI criterion in mental-health–relevant systems. A conceptual synthesis of psychiatry, clinical psychology, and AI safety literature was undertaken. The analysis distinguishes three pipeline layers: pretraining corpora, preference data and posttraining methods, and deployment-time interaction. It maps the clinical construct of collusion against adjacent technical concepts, including sycophancy, reward overoptimization, grounding, refusal training, red-teaming, and live monitoring. The synthesis suggests that collusion-like dynamics are least applicable at the pretraining layer and most applicable at the preference-data and deployment layers, where unassessed user or labeler input can be reinforced without corroboration. Existing mitigations, including data curation, Constitutional AI, reward-model evaluation, grounded generation, refusal training, red-teaming, and postdeployment monitoring, address parts of this problem. However, these approaches are not yet organized around a clinically informed account of when self-report is unreliable. The central novelty is therefore not a generic claim about bias, but the proposal that clinical self-report reliability should be assessed as a distinct data-quality and governance dimension. Trustworthy-AI frameworks for mental-health–relevant applications should incorporate clinical expertise in self-report reliability into preference-data design, red-teaming, and postmarket surveillance. Adding the clinical reliability of training and preference data as an explicit criterion could complement existing technical safeguards while leaving empirical evaluation of clinician involvement as an open research agenda.

Young woman with afro hair using smartphone in bed
Clinical Mental Health Informatics

Artificial intelligence (AI)–based conversational tools are rapidly expanding within mental health care as a means of increasing access and scalability. At the same time, these systems introduce distinct safety risks arising from both user disclosures (eg, self-harm ideation) and inappropriate or inadequate AI responses.

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Substance Abuse

Cognitive behaviorally based interventions have broad appeal and potential for impact when treating adult alcohol and other drug use. Digitally delivered cognitive behaviorally based interventions (dCBIs) may offer this impact with the benefit of increased accessibility. Although prior reviews have indicated the benefits of dCBIs on substance use outcomes, the extension to psychosocial functioning outcomes is unknown.

Seniors and younger adults playing dominoes together, fostering intergenerational connection.
Happiness

Positive aging, a concept found in positive psychology, serves as the theoretical foundation for this study. To age positively, one must manage hidden or unrecognized challenges, show flexibility in behavior and thought, adopt a positive outlook on problems involving regression, and make decisions that promote one’s well-being.

Doctor in white coat using a tablet in a bright office
Reviews in Digital Mental Health

Large language models (LLMs) are poised to transform mental health care, offering advanced capabilities in diagnosis, prognosis, and decision support. Since their inception, numerous mental health-focused LLMs have emerged in the scientific literature, reflecting the growing interest in leveraging these models across various clinical applications. With a broad range of models available, diverse optimization strategies, and multiple use cases, reviewing the current landscape is critical to understanding where future impact lies.

Woman sticks out tongue as instructed by phone app for health check.
Diagnostic Tools in Mental Health

Tardive dyskinesia (TD) is a common, often underrecognized movement disorder resulting from long-term antipsychotic use, yet its detection in routine mental health care remains inconsistent despite the availability of structured rating scales.

UK map with glowing network connections and icons representing digital services, data, and people.
Reviews in Digital Mental Health

Digital mental health interventions (DMHIs) have been widely promoted to improve access to mental health care within the UK National Health Service (NHS), particularly following the COVID-19 pandemic. In 2015, a total of 48 technologies were reportedly used in NHS services in England, but over the past decade, substantial changes to regulatory requirements, evidence standards, and procurement processes have reshaped the digital mental health landscape. There is limited clarity regarding which DMHIs are currently being formally procured and funded by NHS mental health services across the United Kingdom.

Doctor explains brain scan results to patient on laptop.
Reviews in Digital Mental Health

Major depressive disorder (MDD) affects approximately 1 in 6 adults during their lifetime, yet antidepressant selection relies predominantly on trial-and-error, with response rates of only 42% to 53%. While machine learning (ML) models have shown promise in predicting treatment outcomes, most focus on single treatments rather than comparative selection across therapeutic alternatives, limiting their clinical utility for the medication choice decisions that clinicians face in practice.

Woman working on laptop with data visualizations, outdoor picnic scene in background
Methods and New Tools in Mental Health Research

Well-being is a cornerstone of public health and social progress; yet, its determinants are multifaceted and dynamic. As behavioral data become increasingly available and artificial intelligence (AI) systems gain prominence, scalable assessments of well-being are becoming more feasible. However, to be useful in practice, such systems must remain understandable to the people they aim to support. Explainable AI is therefore essential to foster trust and enable reflection.

Preprints Open for Peer Review

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