Goddard Austin V, Su Audrey Y, Xiang Yu, Bryan Craig J
Department of Electrical and Computer Engineering, The University of Utah, Salt Lake City, UT, United States.
Department of Biostatistics, Brown University, Providence, RI, United States.
Front Psychiatry. 2024 Nov 18;15:1425416. doi: 10.3389/fpsyt.2024.1425416. eCollection 2024.
Suicide disproportionately affects the military and veteran population, yet the task of identifying those at an increased risk of suicidal behavior remains challenging. In the face of this complex issue, novel machine learning methods have been applied to study the relationship between suicide and potential risk factors, but are often not generalizable to new and unseen samples. Herein, we examine the problem of prediction on unknown environments, commonly known as environment-wise domain adaptation, as it relates to the prediction of suicidal beliefs, measured with items from the Suicide Cognitions Scale (SCS). We adapt several recently invariance-based models trained using a sample consisting of people without any prior suicidal ideation (SI) to the prediction of suicidal beliefs of those with prior SI. In addition, we examine the possible causal relations regarding the SCS. Using a prospective sample of 2744 primary care patients with 17 risk and protective factors, we show that, to some extent, these methods are able to generalize to a new environment, namely, a sample with prior SI. Additionally, our results indicate suicidal ideation and suicidal behavior are likely to be causal children of SCS.
自杀对军人和退伍军人的影响尤为严重,但识别那些有自杀行为高风险的人仍然具有挑战性。面对这一复杂问题,新型机器学习方法已被应用于研究自杀与潜在风险因素之间的关系,但这些方法往往无法推广到新的、未见过的样本。在此,我们研究了未知环境下的预测问题,即通常所说的环境层面的域适应问题,因为它与用自杀认知量表(SCS)项目测量的自杀信念预测有关。我们将几个最近基于不变性的模型进行了调整,这些模型是使用由没有任何先前自杀意念(SI)的人组成的样本进行训练的,用于预测有先前SI的人的自杀信念。此外,我们研究了与SCS相关的可能因果关系。通过对2744名初级保健患者的前瞻性样本进行研究,这些患者具有17种风险和保护因素,我们表明,在一定程度上,这些方法能够推广到新的环境,即有先前SI的样本。此外,我们的结果表明自杀意念和自杀行为可能是SCS的因果子因素。