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去结构预测试风险富集以优化对临床高风险个体精神病预测。

Deconstructing Pretest Risk Enrichment to Optimize Prediction of Psychosis in Individuals at Clinical High Risk.

机构信息

King's College London, Institute of Psychiatry, Psychology, and Neuroscience, London, United Kingdom2Outreach and Support in South London service, South London and the Maudsley National Health Service Foundation Trust, London, United Kingdom.

King's College London, Institute of Psychiatry, Psychology, and Neuroscience, London, United Kingdom3Department of Clinical and Experimental Medicine, University of Pisa, Pisa, Italy.

出版信息

JAMA Psychiatry. 2016 Dec 1;73(12):1260-1267. doi: 10.1001/jamapsychiatry.2016.2707.

Abstract

IMPORTANCE

Pretest risk estimation is routinely used in clinical medicine to inform further diagnostic testing in individuals with suspected diseases. To our knowledge, the overall characteristics and specific determinants of pretest risk of psychosis onset in individuals undergoing clinical high risk (CHR) assessment are unknown.

OBJECTIVES

To investigate the characteristics and determinants of pretest risk of psychosis onset in individuals undergoing CHR assessment and to develop and externally validate a pretest risk stratification model.

DESIGN, SETTING, AND PARTICIPANTS: Clinical register-based cohort study. Individuals were drawn from electronic, real-world, real-time clinical records relating to routine mental health care of CHR services in South London and the Maudsley National Health Service Trust in London, United Kingdom. The study included nonpsychotic individuals referred on suspicion of psychosis risk and assessed by the Outreach and Support in South London CHR service from 2002 to 2015. Model development and validation was performed with machine-learning methods based on Least Absolute Shrinkage and Selection Operator for Cox proportional hazards model.

MAIN OUTCOMES AND MEASURES

Pretest risk of psychosis onset in individuals undergoing CHR assessment. Predictors included age, sex, age × sex interaction, race/ethnicity, socioeconomic status, marital status, referral source, and referral year.

RESULTS

A total of 710 nonpsychotic individuals undergoing CHR assessment were included. The mean age was 23 years. Three hundred ninety-nine individuals were men (56%), their race/ethnicity was heterogenous, and they were referred from a variety of sources. The cumulative 6-year pretest risk of psychosis was 14.55% (95% CI, 11.71% to 17.99%), confirming substantial pretest risk enrichment during the recruitment of individuals undergoing CHR assessment. Race/ethnicity and source of referral were associated with pretest risk enrichment. The predictive model based on these factors was externally validated, showing moderately good discrimination and sufficient calibration. It was used to stratify individuals undergoing CHR assessment into 4 classes of pretest risk (6-year): low, 3.39% (95% CI, 0.96% to 11.56%); moderately low, 11.58% (95% CI, 8.10% to 16.40%); moderately high, 23.69% (95% CI, 16.58% to 33.20%); and high, 53.65% (95% CI, 36.78% to 72.46%).

CONCLUSIONS AND RELEVANCE

Significant risk enrichment occurs before individuals are assessed for a suspected CHR state. Race/ethnicity and source of referral are associated with pretest risk enrichment in individuals undergoing CHR assessment. A stratification model can identify individuals at differential pretest risk of psychosis. Identification of these subgroups may inform outreach campaigns and subsequent testing and eventually optimize psychosis prediction.

摘要

重要性

在临床医学中,预测风险通常用于告知疑似疾病患者进一步进行诊断性检查。据我们所知,正在接受临床高风险(CHR)评估的个体中,精神病发作的预测风险的总体特征和具体决定因素尚不清楚。

目的

调查正在接受 CHR 评估的个体中精神病发作预测风险的特征和决定因素,并开发和外部验证预测风险分层模型。

设计、地点和参与者:临床登记为基础的队列研究。个体来自于伦敦南部的南伦敦 CHR 服务机构和伦敦的莫兹利国民保健信托基金的实时、真实世界的电子临床记录,这些记录与常规精神保健有关。该研究纳入了因疑似精神病风险而转介的非精神病个体,并由 2002 年至 2015 年的南伦敦外展和支持 CHR 服务进行评估。基于最小绝对收缩和选择算子的 Cox 比例风险模型的机器学习方法进行了模型开发和验证。

主要结果和测量

正在接受 CHR 评估的个体中精神病发作的预测风险。预测因素包括年龄、性别、年龄×性别交互作用、种族/民族、社会经济地位、婚姻状况、转介来源和转介年份。

结果

共纳入 710 名正在接受 CHR 评估的非精神病个体。平均年龄为 23 岁。399 名男性(56%),他们的种族/民族混杂,来自各种来源。精神病发作的 6 年预测风险为 14.55%(95%CI,11.71%至 17.99%),这证实了在招募正在接受 CHR 评估的个体期间,预测风险存在实质性富集。种族/民族和转介来源与预测风险富集有关。基于这些因素的预测模型进行了外部验证,显示出中等良好的区分度和充分的校准度。它被用于将正在接受 CHR 评估的个体分为 4 个预测风险等级(6 年):低,3.39%(95%CI,0.96%至 11.56%);中度低,11.58%(95%CI,8.10%至 16.40%);中度高,23.69%(95%CI,16.58%至 33.20%);高,53.65%(95%CI,36.78%至 72.46%)。

结论和相关性

在个体被评估疑似 CHR 状态之前,就已经存在显著的风险富集。种族/民族和转介来源与正在接受 CHR 评估的个体的预测风险富集有关。分层模型可以识别精神病预测风险不同的个体。识别这些亚组可能有助于开展外展活动和后续检测,最终优化精神病预测。

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