Machine learning models predict PTSD severity and functional impairment: A personalized medicine approach for uncovering complex associations among heterogeneous symptom profiles.

IF 2.7 2区 心理学 Q2 PSYCHIATRY
Anna H Park, Herry Patel, James Mirabelli, Stephanie J Eder, David Steyrl, Brigitte Lueger-Schuster, Frank Scharnowski, Charlene O'Connor, Patrick Martin, Ruth A Lanius, Margaret C McKinnon, Andrew A Nicholson
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引用次数: 0

Abstract

Objective: Posttraumatic stress disorder (PTSD) is a debilitating psychiatric illness, experienced by approximately 10% of the population. Heterogeneous presentations that include heightened dissociation, comorbid anxiety and depression, and emotion dysregulation contribute to the severity of PTSD, in turn, creating barriers to recovery. There is an urgent need to use data-driven approaches to better characterize complex psychiatric presentations with the aim of improving treatment outcomes. We sought to determine if machine learning models could predict PTSD-related illness in a real-world treatment-seeking population using self-report clinical data.

Method: Secondary clinical data from 2017 to 2019 included pretreatment measures such as trauma-related symptoms, other mental health symptoms, functional impairment, and demographic information from adults admitted to an inpatient unit for PTSD in Canada (n = 393). We trained two nonlinear machine learning models (extremely randomized trees) to identify predictors of (a) PTSD symptom severity and (b) functional impairment. We assessed model performance based on predictions in novel subsets of patients.

Results: Approximately 43% of the variance in PTSD symptom severity (R²avg = .43, R²median = .44, p = .001) was predicted by symptoms of anxiety, dissociation, depression, negative trauma-related beliefs about others, and emotion dysregulation. In addition, 32% of the variance in functional impairment scores (R²avg = .32, R²median = .33, p = .001) was predicted by anxiety, PTSD symptom severity, cognitive dysfunction, dissociation, and depressive symptoms.

Conclusions: Our results reinforce that dissociation, cooccurring anxiety and depressive symptoms, maladaptive trauma appraisals, cognitive dysfunction, and emotion dysregulation are critical targets for trauma-related interventions. Machine learning models can inform personalized medicine approaches to maximize trauma recovery in real-world inpatient populations. (PsycInfo Database Record (c) 2025 APA, all rights reserved).

机器学习模型预测创伤后应激障碍的严重程度和功能障碍:一种个性化的医学方法,用于揭示异质性症状之间的复杂关联。
目的:创伤后应激障碍(PTSD)是一种使人衰弱的精神疾病,大约有10%的人患有这种疾病。异质性表现包括高度分离、共病焦虑和抑郁以及情绪失调,这些都加重了创伤后应激障碍的严重程度,反过来又造成了康复的障碍。迫切需要使用数据驱动的方法来更好地表征复杂的精神病学表现,以改善治疗结果。我们试图确定机器学习模型是否可以使用自我报告的临床数据来预测现实世界中寻求治疗的人群中的ptsd相关疾病。方法:2017年至2019年的次要临床数据包括预处理措施,如创伤相关症状、其他精神健康症状、功能障碍和加拿大一家创伤后应激障碍住院单位的成年人(n = 393)的人口统计信息。我们训练了两个非线性机器学习模型(极度随机树)来识别(a)创伤后应激障碍症状严重程度和(b)功能障碍的预测因子。我们基于对新患者亚群的预测来评估模型的性能。结果:大约43%的PTSD症状严重程度方差(R²avg = .43, R²中位数= .44,p = .001)是由焦虑、分离、抑郁、对他人的负面创伤相关信念和情绪失调等症状预测的。此外,32%的功能障碍评分方差(R²avg = 0.32, R²中位数= 0.33,p = .001)由焦虑、PTSD症状严重程度、认知功能障碍、分离和抑郁症状预测。结论:我们的研究结果强调,分离、同时出现的焦虑和抑郁症状、适应不良的创伤评估、认知功能障碍和情绪失调是创伤相关干预的关键目标。机器学习模型可以为个性化医疗方法提供信息,以最大限度地提高现实世界住院患者的创伤恢复。(PsycInfo数据库记录(c) 2023 APA,版权所有)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
11.20
自引率
3.20%
发文量
427
期刊介绍: Psychological Trauma: Theory, Research, Practice, and Policy publishes empirical research on the psychological effects of trauma. The journal is intended to be a forum for an interdisciplinary discussion on trauma, blending science, theory, practice, and policy. The journal publishes empirical research on a wide range of trauma-related topics, including: -Psychological treatments and effects -Promotion of education about effects of and treatment for trauma -Assessment and diagnosis of trauma -Pathophysiology of trauma reactions -Health services (delivery of services to trauma populations) -Epidemiological studies and risk factor studies -Neuroimaging studies -Trauma and cultural competence
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