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Utilization of machine learning for prediction of post-traumatic stress: a re-examination of cortisol in the prediction and pathways to non-remitting PTSD

机译:利用机器学习预测创伤后应激:预测中皮质醇的重新检查以及通​​往不缓解PTSD的途径

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摘要

To date, studies of biological risk factors have revealed inconsistent relationships with subsequent post-traumatic stress disorder (PTSD). The inconsistent signal may reflect the use of data analytic tools that are ill equipped for modeling the complex interactions between biological and environmental factors that underlay post-traumatic psychopathology. Further, using symptom-based diagnostic status as the group outcome overlooks the inherent heterogeneity of PTSD, potentially contributing to failures to replicate. To examine the potential yield of novel analytic tools, we reanalyzed data from a large longitudinal study of individuals identified following trauma in the general emergency room (ER) that failed to find a linear association between cortisol response to traumatic events and subsequent PTSD. First, latent growth mixture modeling empirically identified trajectories of post-traumatic symptoms, which then were used as the study outcome. Next, support vector machines with feature selection identified sets of features with stable predictive accuracy and built robust classifiers of trajectory membership (area under the receiver operator characteristic curve (AUC)=0.82 (95% confidence interval (CI)=0.80–0.85)) that combined clinical, neuroendocrine, psychophysiological and demographic information. Finally, graph induction algorithms revealed a unique path from childhood trauma via lower cortisol during ER admission, to non-remitting PTSD. Traditional general linear modeling methods then confirmed the newly revealed association, thereby delineating a specific target population for early endocrine interventions. Advanced computational approaches offer innovative ways for uncovering clinically significant, non-shared biological signals in heterogeneous samples.
机译:迄今为止,对生物学危险因素的研究表明与随后的创伤后应激障碍(PTSD)的关系不一致。不一致的信号可能反映了数据分析工具的使用不足,这些数据分析工具不足以对造成创伤后精神病理学基础的生物学和环境因素之间的复杂相互作用进行建模。此外,将基于症状的诊断状态用作组结果会忽略PTSD的固有异质性,从而可能导致复制失败。为了检查新型分析工具的潜在产量,我们重新分析了来自大型急诊研究的数据,该研究涉及在普通急诊室(ER)受创伤后确定的个体,该个体未能找到对创伤事件的皮质醇反应与随后的PTSD之间的线性关联。首先,潜在生长混合物建模根据经验确定了创伤后症状的轨迹,然后将其用作研究结果。接下来,具有特征选择功能的支持向量机确定了具有稳定预测精度的特征集,并建立了轨迹隶属度的鲁棒分类器(接收器操作员特征曲线(AUC)下的区域= 0.82(95%置信区间(CI)= 0.80-0.85))结合了临床,神经内分泌,心理生理和人口统计学信息。最终,图形归纳算法揭示了一条独特的路径,从儿童期进入急诊室时通过下层皮质醇引起的创伤到不缓解的PTSD。然后,传统的通用线性建模方法确认了新近揭示的关联,从而勾勒出早期内分泌干预的特定目标人群。先进的计算方法为发现异质样品中具有临床意义的,非共享的生物信号提供了创新的方法。

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