Don't miss the moment: a systematic review of ecological momentary assessment in suicide research

L Kivelä, WAJ van der Does, H Riese… - Frontiers in digital …, 2022 - frontiersin.org
Suicide and suicide-related behaviors are prevalent yet notoriously difficult to predict.
Specifically, short-term predictors and correlates of suicide risk remain largely unknown …

Translating promise into practice: a review of machine learning in suicide research and prevention

OJ Kirtley, K van Mens, M Hoogendoorn… - The Lancet …, 2022 - thelancet.com
In ever more pressured health-care systems, technological solutions offering scalability of
care and better resource targeting are appealing. Research on machine learning as a …

[图书][B] Managing suicidal risk: A collaborative approach

DA Jobes - 2023 - books.google.com
Now in an extensively revised third edition with 65% new material, this is the authoritative
presentation of the Collaborative Assessment and Management of Suicidality (CAMS) …

Prediction of suicide attempts using clinician assessment, patient self-report, and electronic health records

MK Nock, AJ Millner, EL Ross, CJ Kennedy… - JAMA network …, 2022 - jamanetwork.com
Importance Half of the people who die by suicide make a health care visit within 1 month of
their death. However, clinicians lack the tools to identify these patients. Objective To predict …

Mapping the timescale of suicidal thinking

DDL Coppersmith, O Ryan… - Proceedings of the …, 2023 - National Acad Sciences
This study aims to identify the timescale of suicidal thinking, leveraging real-time monitoring
data and a number of different analytic approaches. Participants were 105 adults with past …

The use of advanced technology and statistical methods to predict and prevent suicide

EM Kleiman, CR Glenn, RT Liu - Nature reviews psychology, 2023 - nature.com
In the past decade, two themes have emerged across suicide research. First, according to
meta-analyses, the ability to predict and prevent suicidal thoughts and behaviours is weaker …

The performance of machine learning models in predicting suicidal ideation, attempts, and deaths: A meta-analysis and systematic review

K Kusuma, M Larsen, JC Quiroz, M Gillies… - Journal of psychiatric …, 2022 - Elsevier
Research has posited that machine learning could improve suicide risk prediction models,
which have traditionally performed poorly. This systematic review and meta-analysis …

Just-in-time adaptive interventions for suicide prevention: Promise, challenges, and future directions

DDL Coppersmith, W Dempsey, EM Kleiman… - Psychiatry, 2022 - Taylor & Francis
The suicide rate (currently 14 per 100,000) has barely changed in the United States over the
past 100 years. There is a need for new ways of preventing suicide. Further, research has …

Suicidal thinking as affect regulation.

DDL Coppersmith, Y Millgram, EM Kleiman… - … and clinical science, 2023 - psycnet.apa.org
Nine percent of people worldwide report thinking about suicide at some point during their
lives. A fundamental question we currently lack a clear answer to is: why do suicidal …

Training the next generation of clinical psychological scientists: A data-driven call to action

DG Gee, KA DeYoung, KA McLaughlin… - Annual review of …, 2022 - annualreviews.org
The central goal of clinical psychology is to reduce the suffering caused by mental health
conditions. Anxiety, mood, psychosis, substance use, personality, and other mental …