Department of Biostatistics,Mailman School of Public Health,Columbia University,New York,NY,USA.
Department of Psychiatry,Columbia University,New York,NY,USA.
Psychol Med. 2019 May;49(7):1128-1137. doi: 10.1017/S003329171800171X. Epub 2018 Jun 28.
The authors developed a practical and clinically useful model to predict the risk of psychosis that utilizes clinical characteristics empirically demonstrated to be strong predictors of conversion to psychosis in clinical high-risk (CHR) individuals. The model is based upon the Structured Interview for Psychosis Risk Syndromes (SIPS) and accompanying clinical interview, and yields scores indicating one's risk of conversion.
Baseline data, including demographic and clinical characteristics measured by the SIPS, were obtained on 199 CHR individuals seeking evaluation in the early detection and intervention for mental disorders program at the New York State Psychiatric Institute at Columbia University Medical Center. Each patient was followed for up to 2 years or until they developed a syndromal DSM-4 disorder. A LASSO logistic fitting procedure was used to construct a model for conversion specifically to a psychotic disorder.
At 2 years, 64 patients (32.2%) converted to a psychotic disorder. The top five variables with relatively large standardized effect sizes included SIPS subscales of visual perceptual abnormalities, dysphoric mood, unusual thought content, disorganized communication, and violent ideation. The concordance index (c-index) was 0.73, indicating a moderately strong ability to discriminate between converters and non-converters.
The prediction model performed well in classifying converters and non-converters and revealed SIPS measures that are relatively strong predictors of conversion, comparable with the risk calculator published by NAPLS (c-index = 0.71), but requiring only a structured clinical interview. Future work will seek to externally validate the model and enhance its performance with the incorporation of relevant biomarkers.
作者开发了一种实用且具有临床意义的模型,用于预测精神病风险,该模型利用了经过实证研究证实的临床特征,这些特征是临床高风险(CHR)个体向精神病转化的强有力预测指标。该模型基于精神病风险综合征结构化访谈(SIPS)和伴随的临床访谈,产生表明个体转化风险的分数。
在哥伦比亚大学纽约州精神卫生研究所的早期发现和干预精神障碍计划中,对 199 名寻求评估的 CHR 个体进行了包括 SIPS 测量的人口统计学和临床特征的基线数据收集。每位患者随访时间最长为 2 年,或直到他们出现 DSM-4 障碍综合征。使用 LASSO 逻辑拟合程序构建了专门用于转换为精神病障碍的模型。
在 2 年内,64 名患者(32.2%)转换为精神病障碍。具有相对较大标准化效应大小的前五个变量包括 SIPS 子量表的视觉感知异常、情绪低落、异常思维内容、沟通混乱和暴力观念。一致性指数(c-index)为 0.73,表明区分转换者和非转换者的能力中等偏强。
该预测模型在分类转换者和非转换者方面表现良好,并揭示了 SIPS 测量指标是转换的相对较强预测指标,与 NAPLS 发布的风险计算器(c-index = 0.71)相当,但仅需要进行结构化临床访谈。未来的工作将寻求外部验证该模型,并通过纳入相关生物标志物来提高其性能。