Posttraumatic Stress Disorder (PTSD) is a psychiatric condition affecting nearly a quarter of the United States war veterans who return from war zones. Treatment for PTSD typically consists of a combination of in-session therapy and medication. However; patients often experience their most severe PTSD symptoms outside of therapy sessions. Mobile health applications may address this gap, but their effectiveness is limited by the current gap in continuous monitoring and detection capabilities enabling timely intervention. The goal of this article is to develop a novel method to detect hyperarousal events using physiological and activity-based machine learning algorithms. Physiological data including heart rate and body acceleration as well as self-reported hyperarousal events were collected using a tool developed for commercial off-the-shelf wearable devices from 99 United States veterans diagnosed with PTSD over several days. The data were used to develop four machine learning algorithms: Random Forest, Support Vector Machine, Logistic Regression and XGBoost. The XGBoost model had the best performance in detecting onset of PTSD symptoms with over 83% accuracy and an AUC of 0.70. Post-hoc SHapley Additive exPlanations (SHAP) additive explanation analysis showed that algorithm predictions were correlated with average heart rate, minimum heart rate and average body acceleration. Findings show promise in detecting onset of PTSD symptoms which could be the basis for developing remote and continuous monitoring systems for PTSD. Such systems may address a vital gap in just-in-time interventions for PTSD self-management outside of scheduled clinical appointments.
翻译:创伤后精神失常症(PSTSD)是一种精神病症状,影响到从战区返回的美国退伍军人中近四分之一的人。创伤后精神创伤综合症(PTSD)的治疗通常包括各种会话治疗和药物的结合。然而,病人经常在治疗疗程外经历其最严重的创伤后精神创伤综合症症状。移动医疗应用可以弥补这一差距,但由于目前持续监测和检测能力的差距,无法及时干预,因此其有效性受到限制。本文章的目的是开发一种新颖的方法,利用生理和基于活动的机器学习算法来检测超常事件。收集了包括心脏率和身体加速率以及自我报告的超声波异体事件在内的生理学数据,这些数据通常包括结合在治疗疗程外可磨损性商业设备开发的工具,这些工具是99名被诊断为PTSTSD的99名美国退伍军人在治疗疗程外出现最严重的创伤后精神创伤后精神创伤后精神错乱症。XGBO模型在检测PTS的83%以上的PTS症状和AUC0.70的连续诊断系统方面表现最佳表现。SSHapley Ad-ad-adal-ad-adrial-adalalimalimalalalalal exislevational resadalislationalationalalalalal resmlationalalal resmalmaismalmasmasmasmasmasmasmasmasmas可以显示这种预估测算的预算算的预算法的预算算法,这种预算算算算算算算算算算算算算算的预算的这种最最最最最低的预的预的预的预估的预估测算法的PS。