Department of Psychiatry, Li Ka Shing Faculty of Medicine, The University of Hong Kong, Hong Kong SAR.
Department of Psychiatry, Perelman School of Medicine, Brain Behavior Laboratory, University of Pennsylvania, Philadelphia, PA 19104, USA.
Schizophr Bull. 2022 Sep 1;48(5):1043-1052. doi: 10.1093/schbul/sbac057.
Patients with schizophrenia have a significant risk of self-harm. We aimed to explore the dynamic relationship between symptomatology, functioning and deliberate self-harm (DSH) and evaluate the feasibility of developing a self-harm risk prediction tool for patients with first-episode schizophrenia (FES).
Patients with FES (n = 1234) were followed up for 36 months. Symptomatology, functioning, treatment adherence and self-harm information were obtained monthly over the follow-up period. A time-varying vector autoregressive (VAR) model was used to study the contribution of clinical variables to self-harm over the 36th month. Random forest models for self-harm were established to classify the individuals with self-harm and predict future self-harm events.
Over a 36-month period, 187 patients with FES had one or more self-harm events. The depressive symptoms contributed the most to self-harm prediction during the first year, while the importance of positive psychotic symptoms increased from the second year onwards. The random forest model with all static information and symptom instability achieved a good area under the receiver operating characteristic curve (AUROC = 0.77 ± 0.023) for identifying patients with DSH. With a sliding window analysis, the averaged AUROC of predicting a self-event was 0.65 ± 0.102 (ranging from 0.54 to 0.78) with the best model being 6-month predicted future 6-month self-harm for month 11-23 (AUROC = 0.7).
Results highlight the importance of the dynamic relationship of depressive and positive psychotic symptoms with self-harm and the possibility of self-harm prediction in FES with longitudinal clinical data.
精神分裂症患者有很高的自残风险。本研究旨在探讨症状、功能与蓄意自伤(DSH)之间的动态关系,并评估为首发精神分裂症(FES)患者开发自伤风险预测工具的可行性。
对 1234 例 FES 患者进行 36 个月的随访。在随访期间,每月收集症状、功能、治疗依从性和自伤信息。采用时变向量自回归(VAR)模型研究临床变量对第 36 个月自伤的贡献。建立用于自伤的随机森林模型,以区分有自伤行为的个体并预测未来的自伤事件。
在 36 个月的时间里,187 例 FES 患者发生了一次或多次自伤事件。在第一年,抑郁症状对自伤预测的贡献最大,而阳性精神病症状的重要性从第二年开始增加。具有所有静态信息和症状不稳定性的随机森林模型在识别有 DSH 的患者方面取得了良好的受试者工作特征曲线下面积(AUROC = 0.77 ± 0.023)。通过滑动窗口分析,预测自伤事件的平均 AUROC 为 0.65 ± 0.102(范围为 0.54 至 0.78),最佳模型为第 11-23 个月预测未来 6 个月的自伤(AUROC = 0.7)。
结果强调了抑郁和阳性精神病症状与自伤之间动态关系的重要性,以及使用纵向临床数据对 FES 进行自伤预测的可能性。