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基于机器学习对首发精神病患者的两个独立样本的早期症状缓解进行预测。

Prediction of Early Symptom Remission in Two Independent Samples of First-Episode Psychosis Patients Using Machine Learning.

机构信息

First Department of Psychiatry, National and Kapodistrian University of Athens Medical School, Eginition Hospital, Athens, Greece.

Melbourne Neuropsychiatry Centre, Department of Psychiatry, The University of Melbourne and Melbourne Health, Carlton South, Victoria, Australia.

出版信息

Schizophr Bull. 2022 Jan 21;48(1):122-133. doi: 10.1093/schbul/sbab107.

Abstract

BACKGROUND

Validated clinical prediction models of short-term remission in psychosis are lacking. Our aim was to develop a clinical prediction model aimed at predicting 4-6-week remission following a first episode of psychosis.

METHOD

Baseline clinical data from the Athens First Episode Research Study was used to develop a Support Vector Machine prediction model of 4-week symptom remission in first-episode psychosis patients using repeated nested cross-validation. This model was further tested to predict 6-week remission in a sample of two independent, consecutive Danish first-episode cohorts.

RESULTS

Of the 179 participants in Athens, 120 were male with an average age of 25.8 years and average duration of untreated psychosis of 32.8 weeks. 62.9% were antipsychotic-naïve. Fifty-seven percent attained remission after 4 weeks. In the Danish cohort, 31% attained remission. Eleven clinical scale items were selected in the Athens 4-week remission cohort. These included the Duration of Untreated Psychosis, Personal and Social Performance Scale, Global Assessment of Functioning and eight items from the Positive and Negative Syndrome Scale. This model significantly predicted 4-week remission status (area under the receiver operator characteristic curve (ROC-AUC) = 71.45, P < .0001). It also predicted 6-week remission status in the Danish cohort (ROC-AUC = 67.74, P < .0001), demonstrating reliability.

CONCLUSIONS

Using items from common and validated clinical scales, our model significantly predicted early remission in patients with first-episode psychosis. Although replicated in an independent cohort, forward testing between machine learning models and clinicians' assessment should be undertaken to evaluate the possible utility as a routine clinical tool.

摘要

背景

缺乏针对精神病短期缓解的经过验证的临床预测模型。我们的目的是开发一种临床预测模型,旨在预测首发精神病患者在经历一个发作后 4-6 周的缓解情况。

方法

使用雅典首发研究的基线临床数据,通过重复嵌套交叉验证,为首发精神病患者建立一个用于预测 4 周症状缓解的支持向量机预测模型。该模型进一步在两个独立的丹麦首发队列中进行测试,以预测 6 周的缓解情况。

结果

在雅典的 179 名参与者中,有 120 名男性,平均年龄为 25.8 岁,未治疗的精神病平均持续时间为 32.8 周。62.9%的患者为抗精神病药物初治患者。57%的患者在 4 周后缓解。在丹麦队列中,有 31%的患者缓解。在雅典的 4 周缓解队列中选择了 11 个临床量表项目。这些项目包括未治疗的精神病持续时间、个人和社会表现量表、总体功能评估和阳性和阴性综合征量表的 8 个项目。该模型显著预测了 4 周的缓解状态(接收器操作特征曲线下面积(ROC-AUC)为 71.45,P<0.0001)。它还预测了丹麦队列的 6 周缓解状态(ROC-AUC=67.74,P<0.0001),证明了其可靠性。

结论

使用常见且经过验证的临床量表项目,我们的模型显著预测了首发精神病患者的早期缓解。虽然在独立队列中得到了复制,但应进行机器学习模型与临床医生评估之间的前瞻性测试,以评估其作为常规临床工具的可能效用。

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