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Journal Article

Citation

Dwyer A, De Almeida Neto A, Estival D, Li W, Lam-Cassettari C, Antoniou M. JMIR Ment. Health 2021; 8(2).

Copyright

(Copyright © 2021, JMIR Publications)

DOI

10.2196/19478

PMID

unavailable

Abstract

BACKGROUND: People living in rural and remote areas have poorer access to mental health services than those living in cities. They are also less likely to seek help because of self-stigma and entrenched stoic beliefs about help seeking as a sign of weakness. E-mental health services can span great distances to reach those in need and offer a degree of privacy and anonymity exceeding that of traditional face-to-face counseling and open up possibilities for identifying at-risk individuals for targeted intervention.

OBJECTIVE: This scoping review maps the research that has explored text-based e-mental health counseling services and studies that have used language use patterns to predict mental health status. In doing so, one of the aims was to determine whether text-based counseling services have the potential to circumvent the barriers faced by clients in rural and remote communities using technology and whether text-based communications, in particular, can be used to identify individuals at risk of psychological distress or self-harm.

METHODS: We conducted a comprehensive electronic literature search of PsycINFO, PubMed, ERIC, and Web of Science databases for articles published in English through November 2020.

RESULTS: Of the 9134 articles screened, 70 met the eligibility criteria and were included in the review. There is preliminary evidence to suggest that text-based, real-time communication with a qualified therapist is an effective form of e-mental health service delivery, particularly for individuals concerned with stigma and confidentiality. There is also converging evidence that text-based communications that have been analyzed using computational linguistic techniques can be used to accurately predict progress during treatment and identify individuals at risk of serious mental health conditions and suicide.

CONCLUSIONS: This review reveals a clear need for intensified research into the extent to which text-based counseling (and predictive models using modern computational linguistics tools) may help deliver mental health treatments to underserved groups such as regional communities, identify at-risk individuals for targeted intervention, and predict progress during treatment. Such approaches have implications for policy development to improve intervention accessibility in at-risk and underserved populations. © Anne Dwyer, Abílio de Almeida Neto, Dominique Estival, Weicong Li, Christa Lam-Cassettari, Mark Antoniou.


Language: en

Keywords

adolescent; adult; human; mental health; suicide; systematic review; child; female; male; Review; Mental health services; psychotherapy; depression; health; Counseling; natural language processing; telehealth; psychoeducation; rural area; urban area; mental disease; psychological aspect; health care delivery; distress syndrome; mental health service; self concept; social status; patient satisfaction; analgesia; self disclosure; mental health care personnel; suburban area; clinical outcome; Natural language processing; text messaging; Text messaging; Mobile health; e-counseling

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