2023
DOI: 10.2196/47225
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Public Surveillance of Social Media for Suicide Using Advanced Deep Learning Models in Japan: Time Series Study From 2012 to 2022

Abstract: Background Social media platforms have been increasingly used to express suicidal thoughts, feelings, and acts, raising public concerns over time. A large body of literature has explored the suicide risks identified by people’s expressions on social media. However, there is not enough evidence to conclude that social media provides public surveillance for suicide without aligning suicide risks detected on social media with actual suicidal behaviors. Corroborating this alignment is a crucial foundat… Show more

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Cited by 6 publications
(2 citation statements)
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“…Applications relating to service improvement included LLM integration to improve crisis counseling services [57,59] and improving existing mental health chatbots [77]. Applications to training included enhancing training, clinical procedures, and best practices among mental health and medical professionals [59,82]. Improved policy was noted as of clinical relevance [59,82], as there may be a lack of policy safeguarding vulnerable people and the use of LLMs [52].…”
Section: Clinical Applicationsmentioning
confidence: 99%
See 1 more Smart Citation
“…Applications relating to service improvement included LLM integration to improve crisis counseling services [57,59] and improving existing mental health chatbots [77]. Applications to training included enhancing training, clinical procedures, and best practices among mental health and medical professionals [59,82]. Improved policy was noted as of clinical relevance [59,82], as there may be a lack of policy safeguarding vulnerable people and the use of LLMs [52].…”
Section: Clinical Applicationsmentioning
confidence: 99%
“…Applications to training included enhancing training, clinical procedures, and best practices among mental health and medical professionals [59,82]. Improved policy was noted as of clinical relevance [59,82], as there may be a lack of policy safeguarding vulnerable people and the use of LLMs [52]. Cost effectiveness and increasing the quality of data annotation were also noted [47], as was use in public health surveillance, potentially allowing practitioners to track the prevalence of infrequent conditions [50].…”
Section: Clinical Applicationsmentioning
confidence: 99%