可穿戴传感器可以帮助诊断PTSD

Andrea K. Webb, Ashley L. Vincent, Alvin Jin, M. Pollack
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引用次数: 10

摘要

创伤后应激障碍(PTSD)目前是通过与创伤事件相关的主观经历报告来诊断的。需要更客观的措施来协助临床医生进行诊断。记录了58名参与者的生理活动。无创伤/无创伤后应激障碍组的参与者没有创伤暴露,也没有创伤后应激障碍诊断。创伤暴露/无创伤后应激障碍参与者经历过创伤性事件但没有创伤后应激障碍。PTSD参与者经历过创伤性事件并患有PTSD。收集基线和情绪唤起刺激相关的传感器数据。从每个传感器流中提取特征并提交统计分析。在观看两个虚拟现实视频时,存在显著的群体差异。将特征提交判别函数分析以评估分类精度。分类准确率在89 ~ 92%之间。这项研究的结果表明,从可穿戴传感器获得的客观生理测量有助于PTSD的诊断。
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Wearable sensors can assist in PTSD diagnosis
Post-traumatic stress disorder (PTSD) currently is diagnosed via subjective reports of experiences related to the traumatic event. More objective measures are needed to assist clinicians in diagnosis. Physiological activity was recorded from 58 participants. Participants in the No Trauma/No PTSD group had no trauma exposure and no PTSD diagnosis. Trauma Exposed/No PTSD participants had experienced a traumatic event but did not have PTSD. PTSD participants had experienced a traumatic event and had PTSD. Baseline and emotionally evocative stimulus-related sensor data were collected. Features were extracted from each sensor stream and submitted to statistical analysis. Significant group differences were present during the viewing of two virtual reality videos. Features were submitted to discriminant function analysis to assess classification accuracy. Classification accuracy was between 89 and 92%. The results from this study suggest the utility of objective physiological measures obtained from wearable sensors in assisting with PTSD diagnosis.
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