Black Dog Institute, University of New South Wales, Randwick, NSW, Australia.
School of Computer Science and Engineering, University of New South Wales, Kensington, NSW, Australia.
Aust N Z J Psychiatry. 2023 Jul;57(7):1016-1022. doi: 10.1177/00048674231152159. Epub 2023 Jan 30.
Prior research suggests there are observable behaviours preceding suicide attempts in public places. However, there are currently no ways to continually monitor such sites, limiting the potential to intervene. In this mixed-methods study, we examined the acceptability and feasibility of using an automated computer system to identify crisis behaviours.
First, we conducted a large-scale acceptability survey to assess public perceptions on research using closed-circuit television and artificial intelligence for suicide prevention. Second, we identified crisis behaviours at a frequently used cliff location by manual structured analysis of closed-circuit television footage. Third, we configured a computer vision algorithm to identify crisis behaviours and evaluated its sensitivity and specificity using test footage.
Overall, attitudes were positive towards research using closed-circuit television and artificial intelligence for suicide prevention, including among those with lived experience. The second study revealed that there are identifiable behaviours, including repetitive pacing and an extended stay. Finally, the automated behaviour recognition algorithm was able to correctly identify 80% of acted crisis clips and correctly reject 90% of acted non-crisis clips.
The results suggest that using computer vision to detect behaviours preceding suicide is feasible and well accepted by the community and may be a feasible method of initiating human contact during a crisis.
先前的研究表明,在公共场所发生自杀企图前存在可观察到的行为。然而,目前尚无持续监测此类场所的方法,这限制了进行干预的可能性。在这项混合方法研究中,我们研究了使用自动化计算机系统识别危机行为的可接受性和可行性。
首先,我们进行了一项大规模的可接受性调查,以评估公众对闭路电视和人工智能用于预防自杀的研究的看法。其次,我们通过对闭路电视录像的手动结构化分析,确定了一个经常被使用的悬崖地点的危机行为。第三,我们配置了一个计算机视觉算法来识别危机行为,并使用测试录像来评估其灵敏度和特异性。
总体而言,公众对使用闭路电视和人工智能预防自杀的研究持积极态度,包括有自杀经历的人。第二项研究表明,存在可识别的行为,包括重复踱步和长时间停留。最后,自动行为识别算法能够正确识别 80%的模拟危机片段,正确拒绝 90%的模拟非危机片段。
研究结果表明,使用计算机视觉来检测自杀前的行为是可行的,并且得到了社区的广泛认可,这可能是在危机期间主动与人接触的一种可行方法。