| Literature DB >> 27813129 |
John P Pestian1, Michael Sorter2, Brian Connolly1, Kevin Bretonnel Cohen3, Cheryl McCullumsmith4, Jeffry T Gee5, Louis-Philippe Morency6, Stefan Scherer7, Lesley Rohlfs7.
Abstract
Death by suicide demonstrates profound personal suffering and societal failure. While basic sciences provide the opportunity to understand biological markers related to suicide, computer science provides opportunities to understand suicide thought markers. In this novel prospective, multimodal, multicenter, mixed demographic study, we used machine learning to measure and fuse two classes of suicidal thought markers: verbal and nonverbal. Machine learning algorithms were used with the subjects' words and vocal characteristics to classify 379 subjects recruited from two academic medical centers and a rural community hospital into one of three groups: suicidal, mentally ill but not suicidal, or controls. By combining linguistic and acoustic characteristics, subjects could be classified into one of the three groups with up to 85% accuracy. The results provide insight into how advanced technology can be used for suicide assessment and prevention.Entities:
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Year: 2016 PMID: 27813129 DOI: 10.1111/sltb.12312
Source DB: PubMed Journal: Suicide Life Threat Behav ISSN: 0363-0234