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Development and Validation of a Dynamic Risk Prediction Model to Forecast Psychosis Onset in Patients at Clinical High Risk

机译:动态风险预测模型的开发与验证预测临床高风险患者精神病发作

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摘要

The prediction of outcomes in patients at Clinical High Risk for Psychosis (CHR-P) almost exclusively relies on static data obtained at a single snapshot in time (ie, baseline data). Although the CHR-P symptoms are intrinsically evolving over time, available prediction models cannot be dynamically updated to reflect these changes. Hence, the aim of this study was to develop and internally validate a dynamic risk prediction model (joint model) and to implement this model in a user-friendly online risk calculator. Furthermore, we aimed to explore the prognostic performance of extended dynamic risk prediction models and to compare static with dynamic prediction. One hundred ninety-six CHR-P patients were recruited as part of the “Basel Früherkennung von Psychosen” (FePsy) study. Psychopathology and transition to psychosis was assessed at regular intervals for up to 5 years using the Brief Psychiatric Rating Scale-Expanded (BPRS-E). Various specifications of joint models were compared with regard to their cross-validated prognostic performance. We developed and internally validated a joint model that predicts psychosis onset from BPRS-E disorganization and years of education at baseline and BPRS-E positive symptoms during the follow-up with good prognostic performance. The model was implemented as online risk calculator (http://www.fepsy.ch/DPRP/). The use of extended joint models slightly increased the prognostic accuracy compared to basic joint models, and dynamic models showed a higher prognostic accuracy than static models. Our results confirm that extended joint modeling could improve the prediction of psychosis in CHR-P patients. We implemented the first online risk calculator that can dynamically update psychosis risk prediction.
机译:在精神病(CHR-P)的临床高风险下患者的结果预测几乎完全依赖于在一次快照(即基线数据)上获得的静态数据。虽然CHR-P症状随着时间的推移本质上发展,但不能动态更新可用的预测模型以反映这些变化。因此,本研究的目的是开发和内部验证动态风险预测模型(联合模型),并在用户友好的在线风险计算器中实现该模型。此外,我们旨在探讨扩展动态风险预测模型的预后性能,并与动态预测比较静态。招募了一百九十六名CHR-P患者,作为“巴塞尔弗鲁克伦迁徙冯灵活”(FEPSY)研究的一部分。使用短暂的精神额定扩展(BPRS-E)定期评估精神病理学和到精神病的过渡。与其交叉验证的预后性能进行比较各种规格的联合模型。我们开发和内部验证了一个联合模型,预测BPRS-E在基线的BPRS-E紊乱和多年教育中的心理疾病和BPRS-E在随访期间的阳性症状中的患者疾病。该模型实施为在线风险计算器(http://www.fepsy.ch/dprp/)。与基本联合模型相比,使用扩展接头模型的使用略微提高了预后精度,并且动态模型显示比静态模型更高的预后精度。我们的结果证实,扩展的联合建模可以改善CHR-P患者心理学的预测。我们实施了第一款在线风险计算器,可以动态更新精神病风险预测。

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