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Gender Differences in Machine Learning Models of Trauma and Suicidal Ideation in Veterans of the Iraq and Afghanistan Wars

机译:伊拉克和阿富汗战争退伍军人的创伤和自杀意念的机器学习模型中的性别差异

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摘要

Suicide rates among recent veterans have led to interest in risk identification. Evidence of gender-and trauma-specific predictors of suicidal ideation necessitates the use of advanced computational methods capable of elucidating these important and complex associations. In this study, we used machine learning to examine gender-specific associations between predeployment and military factors, traumatic deployment experiences, and psychopathology and suicidal ideation (SI) in a national sample of veterans deployed during the Iraq and Afghanistan conflicts (n = 2,244). Classification, regression tree analyses, and random forests were used to identify associations with SI and determine their classification accuracy. Findings converged on several associations for men that included depression, posttraumatic stress disorder (PTSD), and somatic complaints. Sexual harassment during deployment emerged as a key factor that interacted with PTSD and depression and demonstrated a stronger association with SI among women. Classification accuracy for SI presence or absence was good based on the receiver operating characteristic area under the curve, men = .91, women = .92. The risk for SI was classifiable with good accuracy, with associations that varied by gender. The use of machine learning analyses allowed for the discovery of rich, nuanced results that should be replicated in other samples and may eventually be a basis for the development of gender-specific actuarial tools to assess SI risk among veterans.
机译:最近的退伍军人中的自杀率引起了对风险识别的兴趣。自杀念头的性别和创伤特定预测因子的证据需要使用能够阐明这些重要而复杂的关联的高级计算方法。在这项研究中,我们使用机器学习检查了伊拉克和阿富汗冲突期间部署的全国退伍军人样本中部署前与军事因素,创伤部署经历以及心理病理学和自杀观念(SI)之间的特定性别关联(n = 2,244) 。使用分类,回归树分析和随机森林来识别与SI的关联并确定其分类准确性。研究结果集中于几个与男性有关的协会,包括抑郁症,创伤后应激障碍(PTSD)和躯体不适。部署过程中的性骚扰已成为与PTSD和抑郁症相互作用的关键因素,并显示出女性中与SI的关联性更强。根据接收器在曲线下的工作特征区域,SI有无的分类准确度良好,男性为0.91,女性为0.92。 SI的风险可以很好地分类,并且因性别而异。机器学习分析的使用允许发现丰富的细微差别的结果,这些结果应在其他样本中复制,并且最终可能成为开发针对性别的精算工具以评估退伍军人中SI风险的基础。

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