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预测处于高危精神状态(ARMS)个体发生精神病转化的风险:多变量模型揭示了非精神病前驱症状的影响。

Predicting the individual risk of psychosis conversion in at-risk mental state (ARMS): a multivariate model reveals the influence of nonpsychotic prodromal symptoms.

机构信息

INSERM, Laboratoire Physiopathologie Des Maladies Psychiatriques, IPNP, UMR 1266, Institut de Psychiatrie (CNRS GDR 3557), Paris, France.

GHNE, Site de Orsay. Domaine du Grand Mesnil, Voie Kastler, 91440, Bures sur Yvette, France.

出版信息

Eur Child Adolesc Psychiatry. 2020 Nov;29(11):1525-1535. doi: 10.1007/s00787-019-01461-y. Epub 2019 Dec 23.

Abstract

To improve the prediction of the individual risk of conversion to psychosis in UHR subjects, by considering all CAARMS' symptoms at first presentation and using a multivariate machine learning method known as logistic regression with Elastic-net shrinkage. 46 young individuals who sought help from the specialized outpatient unit at Sainte-Anne hospital and who met CAARMS criteria for UHR were assessed, among whom 27 were reassessed at follow-up (22.4 ± 6.54 months) and included in the analysis. Elastic net logistic regression was trained, using CAARMS items at baseline to predict individual evolution between converters (UHR-P) and non-converters (UHR-NP). Elastic-net was used to select the few CAARMS items that best predict the clinical evolution. All validations and significances of predictive models were computed with non-parametric re-sampling strategies that provide robust estimators even when the distributional assumption cannot be guaranteed. Among the 25 CAARMS items, the Elastic net selected 'obsessive-compulsive symptoms' and 'aggression/dangerous behavior' as risk factors for conversion while 'anhedonia' and 'mood swings/lability' were associated with non-conversion at follow-up. In the ten-fold stratified cross-validation, the classification achieved 81.8% of sensitivity (P = 0.035) and 93.7% of specificity (P = 0.0016). Non-psychotic prodromal symptoms bring valuable information to improve the prediction of conversion to psychosis. Elastic net logistic regression applied to clinical data is a promising way to switch from group prediction to an individualized prediction.

摘要

为了提高对 UHR 受试者向精神病转化的个体风险的预测,通过考虑 CAARMS 的所有症状在首次出现时,并使用一种称为具有弹性网络收缩的逻辑回归的多元机器学习方法。评估了 46 名从 Sainte-Anne 医院专门门诊寻求帮助并符合 CAARMS 对 UHR 标准的年轻人,其中 27 名在随访时重新评估(22.4±6.54 个月)并纳入分析。使用基线 CAARMS 项目对弹性网络逻辑回归进行了训练,以预测转换者(UHR-P)和非转换者(UHR-NP)之间的个体演变。弹性网络用于选择最佳预测临床演变的少数 CAARMS 项目。使用非参数重采样策略计算了所有预测模型的验证和显着性,即使不能保证分布假设,这些策略也提供了稳健的估计器。在 25 个 CAARMS 项目中,弹性网络选择了“强迫症症状”和“攻击性/危险行为”作为转换的危险因素,而“快感缺失”和“情绪波动/不稳定性”与随访时的非转换相关。在十折分层交叉验证中,分类达到 81.8%的敏感性(P=0.035)和 93.7%的特异性(P=0.0016)。非精神病前驱症状提供了有价值的信息,可提高对精神病转化的预测。应用于临床数据的弹性网络逻辑回归是从群体预测转向个体化预测的一种有前途的方法。

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