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Forecasting individual risk for long-term Posttraumatic Stress Disorder in emergency medical settings using biomedical data: A machine learning multicenter cohort study

机译:使用生物医学数据预测急诊医疗环境中长期前动态应激障碍的个体风险:机器学习多中心队列研究

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摘要

The necessary requirement of a traumatic event preceding the development of Posttraumatic Stress Disorder, theoretically allows for administering preventive and early interventions in the early aftermath of such events. Machine learning models including biomedical data to forecast PTSD outcome after trauma are highly promising for detection of individuals most in need of such interventions. In the current study, machine learning was applied on biomedical data collected within 48 h post-trauma to forecast individual risk for long-term PTSD, using a multinominal approach including the full spectrum of common PTSD symptom courses within one prognostic model for the first time. N = 417 patients (37.2% females; mean age 46.09 ± 15.88) admitted with (suspected) serious injury to two urban Academic Level-1 Trauma Centers were included. Routinely collected biomedical information (endocrine measures, vital signs, pharmacotherapy, demographics, injury and trauma characteristics) upon ED admission and subsequent 48 h was used. Cross-validated multi-nominal classification of longitudinal self-reported symptom severity (IES-R) over 12 months and bimodal classification of clinician-rated PTSD diagnosis (CAPS-IV) at 12 months post-trauma was performed using extreme Gradient Boosting and evaluated on hold-out sets. SHapley Additive exPlanations (SHAP) values were used to explain the derived models in human-interpretable form.
机译:在理性应激障碍开发前的创伤事件的必要要求,从理论上允许在此类事件的早期疗程中管理预防性和早期干预措施。机器学习模型,包括生物医学数据,以预测PTSD结果在创伤后高度有希望检测最需要此类干预措施的个人。在目前的研究中,应用机器学习在创伤后48小时内收集的生物医学数据,以预测使用多语言方法,包括第一次预后模型中的全谱的普通症症状课程的全谱。 n = 417名患者(37.2%的女性;平均年龄46.09±15.88)录取(疑似)对两个城市学术一级-1个创伤中心的严重伤害。在ED入院和随后的48小时时,常规收集的生物医学信息(内分泌措施,生命体征,药物治疗,人口统计学,损伤和创伤特征)。使用极端梯度提升和评估,进行12个月纵向自我报告的症状严重程度(IES-R)12个月和临床医生诊断(CAPS-IV)的双峰分类,进行了交叉验证的多标称分类。在持有的套装上。福芙尼添加剂解释(Shap)值用于解释人可解释形式的衍生模型。

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