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 4.8 CiteScore 10.8

JMIR Mental Health (JMH, ISSN 2368-7959(Journal Impact Factor™ 4.8, (Journal Citation Reports™ from Clarivate, 2024)) is a premier, open-access, peer-reviewed journal indexed in PubMed Central and PubMed, MEDLINEScopus, Sherpa/Romeo, DOAJ, EBSCO/EBSCO Essentials, ESCI, PsycINFOCABI and SCIE.

JMIR Mental Health has 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. This includes formative evaluation and system descriptions, theoretical papers, review papers, viewpoint/vision papers, and rigorous evaluations related to digital psychiatry, e-mental health, and clinical informatics in psychiatry/psychology.

JMIR Mental Health received a CiteScore of 10.8, placing it in the 92nd percentile (#43 of 567) as a Q1 journal in the field of Psychiatry and Mental Health.

Recent Articles

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Theme Issue 2023 : Responsible Design, Integration, and Use of Generative AI in Mental Health

Large language model (LLM)-powered services are gaining popularity in various applications due to their exceptional performance in many tasks, such as sentiment analysis and question answering. Recently, research has been exploring their potential use in digital health contexts, particularly in the mental health domain. However, implementing LLM-enhanced conversational artificial intelligence (CAI) presents significant ethical, technical, and clinical challenges. In this work, we discuss two challenges that affect the utilization of LLM-enhanced CAI for individuals with mental health issues, focusing on the use case of depressed patients: the tendency to humanize LLM-enhanced CAI and their lack of contextualized robustness. Our approach is interdisciplinary, relying on considerations from philosophy, psychology, and computer science. We argue that the humanization of LLM-enhanced CAI hinges on the reflection of what it means to simulate “human-like” features with LLMs and what role these systems should have in interactions with humans. Further, to ensure contextualizing robustness of LLMs requires considering the specificities of language production in depressed individuals, as well as its evolution over time. Finally, we provide a series of recommendations to foster the responsible design and deployment of LLM-enhanced CAI for the therapeutic support of individuals with depression.

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Social Anxiety Disorder (SAD)

Social Anxiety Disorder (SAD) is one of the most prevalent psychological disorders, and is generally co-occurring with elevated shame levels. Previous shame-specific interventions can significantly improve outcomes in social anxiety treatments. Recent review suggests that integrating a more direct shame intervention could potentially increase the effectiveness of Cognitive Behavioral Therapy. The Web-based CBT (WCBT) has proven efficacy, sustaining benefits for six months to four years. Previous evidence indicated that shame predicted the reduction of social anxiety and mediated between engagements in exposure and changes in social anxiety during WCBT.

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Reviews in Digital Mental Health

Text-based digital media platforms have revolutionized communication and information sharing, providing valuable access to knowledge and understanding in the fields of mental health and suicide prevention.

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Transdiagnostic Mental Health Interventions

Internet-based cognitive behavioral interventions (iCBTs) are efficacious treatments for depression and anxiety. However, it is unknown whether adding human guidance is feasible and beneficial within a large educational setting.

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Theme Issue 2023 : Responsible Design, Integration, and Use of Generative AI in Mental Health

The focus of debates about conversational artificial intelligence (CAI) has largely been on social and ethical concerns that arise when we speak to machines—what is gained and what is lost when we replace our human interlocutors, including our human therapists, with AI. In this viewpoint, we focus instead on a distinct and growing phenomenon: letting machines speak for us. What is at stake when we replace our own efforts at interpersonal engagement with CAI? The purpose of these technologies is, in part, to remove effort, but effort has enormous value, and in some cases, even intrinsic value. This is true in many realms, but especially in interpersonal relationships. To make an effort for someone, irrespective of what that effort amounts to, often conveys value and meaning in itself. We elaborate on the meaning, worth, and significance that may be lost when we relinquish effort in our interpersonal engagements as well as on the opportunities for self-understanding and growth that we may forsake.

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Problematic Internet Use, Online Gambling and Game Addiction

For people experiencing substance use or gambling disorders, web-based peer-supported forums are a space where they can share their experiences, gather around a collective goal, and find mutual support. Web-based peer support can help to overcome barriers to attending face-to-face meetings by enabling people experiencing addiction to seek support beyond their physical location and with the benefit of anonymity if desired. Understanding who participates in web-based peer-supported forums (and how), and the principles underpinning forums, can also assist those interested in designing or implementing similar platforms.

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Mobile Health in Psychiatry

Internet-based cognitive behavioral therapy (CBT) and stand-alone mindfulness meditation interventions are gaining empirical support for a wide variety of mental health conditions. In this study, we test the efficacy of web-based therapist-guided mindfulness-based cognitive behavioral therapy (CBT-M) for body dysmorphic disorder (BDD), a psychiatric disorder characterized by preoccupations with perceived defects in appearance.

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Theme Issue 2023 : Responsible Design, Integration, and Use of Generative AI in Mental Health

Recent breakthroughs in artificial intelligence (AI) language models have elevated the vision of using conversational AI support for mental health, with a growing body of literature indicating varying degrees of efficacy. In this paper, we ask when, in therapy, it will be easier to replace humans and, conversely, in what instances, human connection will still be more valued. We suggest that empathy lies at the heart of the answer to this question. First, we define different aspects of empathy and outline the potential empathic capabilities of humans versus AI. Next, we consider what determines when these aspects are needed most in therapy, both from the perspective of therapeutic methodology and from the perspective of patient objectives. Ultimately, our goal is to prompt further investigation and dialogue, urging both practitioners and scholars engaged in AI-mediated therapy to keep these questions and considerations in mind when investigating AI implementation in mental health.

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Innovations in Mental Health Systems

In many countries, healthcare professionals are legally obliged to share information from electronic health records with patients. However, concerns have been raised regarding the sharing of notes with adolescents in mental health care, and healthcare professionals have called for recommendations to guide this practice.

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Depression and Mood Disorders; Suicide Prevention

Cognitive symptoms are an underrecognized aspect of depression that are often untreated. High-frequency cognitive assessment holds promise for improving disease and treatment monitoring. Although we have previously found it feasible to remotely assess cognition and mood in this capacity, further work is needed to ascertain the optimal methodology to implement and synthesize these techniques.

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Diagnostic Tools in Mental Health

Schizophrenia is a complex mental disorder characterized by significant cognitive and neurobiological alterations. Impairments in cognitive function and eye movement have been known to be promising biomarkers for schizophrenia. However, cognitive assessment methods require specialized expertise. To date, data on simplified measurement tools for assessing both cognitive function and eye movement in patients with schizophrenia are lacking.

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Depression and Mood Disorders; Suicide Prevention

There is evidence from meta-analyses and systematic reviews that digital mental health interventions for depression, anxiety, and stress-related disorders tend to be cost-effective. However, no such evidence exists for guided digital mental health care in low and middle-income countries (LMICs) facing humanitarian crises, where the needs are highest. Step-by-Step (SbS), a digital mental health intervention for depression, anxiety, and stress-related disorders, proved to be effective for Lebanese citizens and war-affected Syrians residing in Lebanon. Assessing the cost-effectiveness of SbS is crucial because Lebanon’s overstretched health care system must prioritize cost-effective treatment options in the face of continuing humanitarian and economic crises.

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Preprints Open for Peer-Review

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