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使用机器学习研究创伤性脑损伤后自杀意念:创伤性脑损伤模型系统国家数据库研究。

Using Machine Learning to Examine Suicidal Ideation After Traumatic Brain Injury: A Traumatic Brain Injury Model Systems National Database Study.

机构信息

From the Department of Psychiatry, Massachusetts General Hospital, Boston, Massachusetts (LBF, JEC, JTG); Department of Psychiatry, Harvard Medical School, Boston, Massachusetts (LBF, JEC); Central Virginia Veterans Affairs Health Care System, Richmond, Virginia (DWK, PBP); Sheltering Arms Institute, Richmond, Virginia (DWK); Virginia Commonwealth University Health System, Richmond, Virginia (DWK); Departments of Psychology and Physical Medicine and Rehabilitation, Virginia Commonwealth University, Richmond, Virginia (PBP); Department of Physical Medicine and Rehabilitation, UT Southwestern Medical Center, Dallas, Texas (SBJ); Department of Rehabilitation Counseling, Virginia Commonwealth University, Richmond, Virginia (KWG); Department of Psychology, University of Alabama, Birmingham, Alabama (JPN); Department of Physical Medicine and Rehabilitation, Indiana University School of Medicine, Indianapolis, Indiana (FMH); Rehabilitation Hospital of Indiana, Indianapolis, Indiana (FMH); Mayo Clinic College of Medicine and Science Rochester, Minnesota (TFB); Departments of Physical Medicine & Rehabilitation and Neuroscience, Center for Neuroscience, Safar Center for Resuscitation Research, Clinical and Translational Science Institute, University of Pittsburgh, Pittsburgh, Pennsylvania (AKW); Moss Rehabilitation Research Institute, Elkins Park, Pennsylvania (ARR); Department of Physical Medicine and Rehabilitation, Spaulding Rehabilitation Hospital, Boston, Massachusetts (JTG, RDZ); Department of Physical Medicine and Rehabilitation, Massachusetts General Hospital, Boston, Massachusetts (RDZ); Department of Physical Medicine and Rehabilitation, Brigham and Women's Hospital, Boston, Massachusetts (RDZ); and Department of Physical Medicine and Rehabilitation, Harvard Medical School, Boston, Massachusetts (RDZ).

出版信息

Am J Phys Med Rehabil. 2023 Feb 1;102(2):137-143. doi: 10.1097/PHM.0000000000002054. Epub 2022 Jun 8.

Abstract

OBJECTIVE

The aim of the study was to predict suicidal ideation 1 yr after moderate to severe traumatic brain injury.

DESIGN

This study used a cross-sectional design with data collected through the prospective, longitudinal Traumatic Brain Injury Model Systems network at hospitalization and 1 yr after injury. Participants who completed the Patient Health Questionnaire-9 suicide item at year 1 follow-up ( N = 4328) were included.

RESULTS

A gradient boosting machine algorithm demonstrated the best performance in predicting suicidal ideation 1 yr after traumatic brain injury. Predictors were Patient Health Questionnaire-9 items (except suicidality), Generalized Anxiety Disorder-7 items, and a measure of heavy drinking. Results of the 10-fold cross-validation gradient boosting machine analysis indicated excellent classification performance with an area under the curve of 0.882. Sensitivity was 0.85 and specificity was 0.77. Accuracy was 0.78 (95% confidence interval, 0.77-0.79). Feature importance analyses revealed that depressed mood and guilt were the most important predictors of suicidal ideation, followed by anhedonia, concentration difficulties, and psychomotor disturbance.

CONCLUSIONS

Overall, depression symptoms were most predictive of suicidal ideation. Despite the limited clinical impact of the present findings, machine learning has potential to improve prediction of suicidal behavior, leveraging electronic health record data, to identify individuals at greatest risk, thereby facilitating intervention and optimization of long-term outcomes after traumatic brain injury.

摘要

目的

本研究旨在预测中重度创伤性脑损伤后 1 年的自杀意念。

设计

本研究采用了横断面设计,数据在住院期间和损伤后 1 年通过前瞻性、纵向创伤性脑损伤模型系统网络收集。在 1 年随访时完成患者健康问卷-9 自杀项目的参与者(N=4328)被纳入研究。

结果

梯度提升机算法在预测创伤性脑损伤后 1 年的自杀意念方面表现最佳。预测因子为患者健康问卷-9 项目(除自杀性外)、广泛性焦虑障碍-7 项和重度饮酒测量值。10 折交叉验证梯度提升机分析的结果表明,分类性能优异,曲线下面积为 0.882。敏感性为 0.85,特异性为 0.77。准确性为 0.78(95%置信区间,0.77-0.79)。特征重要性分析显示,抑郁情绪和内疚感是自杀意念的最重要预测因素,其次是快感缺失、注意力困难和精神运动障碍。

结论

总体而言,抑郁症状是自杀意念最具预测性的因素。尽管目前研究结果的临床影响有限,但机器学习具有利用电子健康记录数据提高自杀行为预测的潜力,从而识别出风险最大的个体,从而促进创伤性脑损伤后的干预和长期预后优化。

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