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首发精神病治疗抵抗风险的临床预测模型的开发和初步评估:精神分裂症治疗抵抗预测(SPIRIT)。

Development and initial evaluation of a clinical prediction model for risk of treatment resistance in first-episode psychosis: Schizophrenia Prediction of Resistance to Treatment (SPIRIT).

机构信息

School of Medicine, Keele University, Newcastle-under-Lyme, UK; National Institute for Health and Care Research (NIHR), UK; and St George's Hospital, Midlands Partnership University NHS Foundation Trust, Stafford, UK.

Institute of Applied Health Research, College of Medical and Dental Sciences, University of Birmingham, Birmingham, UK; and National Institute for Health and Care Research (NIHR) Birmingham Biomedical Research Centre, Birmingham, UK.

出版信息

Br J Psychiatry. 2024 Sep;225(3):379-388. doi: 10.1192/bjp.2024.101.

Abstract

BACKGROUND

A clinical tool to estimate the risk of treatment-resistant schizophrenia (TRS) in people with first-episode psychosis (FEP) would inform early detection of TRS and overcome the delay of up to 5 years in starting TRS medication.

AIMS

To develop and evaluate a model that could predict the risk of TRS in routine clinical practice.

METHOD

We used data from two UK-based FEP cohorts (GAP and AESOP-10) to develop and internally validate a prognostic model that supports identification of patients at high-risk of TRS soon after FEP diagnosis. Using sociodemographic and clinical predictors, a model for predicting risk of TRS was developed based on penalised logistic regression, with missing data handled using multiple imputation. Internal validation was undertaken via bootstrapping, obtaining optimism-adjusted estimates of the model's performance. Interviews and focus groups with clinicians were conducted to establish clinically relevant risk thresholds and understand the acceptability and perceived utility of the model.

RESULTS

We included seven factors in the prediction model that are predominantly assessed in clinical practice in patients with FEP. The model predicted treatment resistance among the 1081 patients with reasonable accuracy; the model's C-statistic was 0.727 (95% CI 0.723-0.732) prior to shrinkage and 0.687 after adjustment for optimism. Calibration was good (expected/observed ratio: 0.999; calibration-in-the-large: 0.000584) after adjustment for optimism.

CONCLUSIONS

We developed and internally validated a prediction model with reasonably good predictive metrics. Clinicians, patients and carers were involved in the development process. External validation of the tool is needed followed by co-design methodology to support implementation in early intervention services.

摘要

背景

一种用于评估首发精神病患者(FEP)治疗抵抗性精神分裂症(TRS)风险的临床工具,可以帮助早期发现 TRS,并克服开始 TRS 药物治疗的长达 5 年的延迟。

目的

开发和评估一种可用于预测常规临床实践中 TRS 风险的模型。

方法

我们使用了来自英国两个 FEP 队列(GAP 和 AESOP-10)的数据来开发和内部验证一种支持在 FEP 诊断后不久识别高风险 TRS 患者的预后模型。该模型使用了社会人口统计学和临床预测因素,通过惩罚逻辑回归建立,使用多重插补处理缺失数据。内部验证通过自举法进行,获得模型性能的乐观调整估计。我们与临床医生进行了访谈和焦点小组讨论,以确定临床相关的风险阈值,并了解模型的可接受性和潜在用途。

结果

我们在预测模型中纳入了七个在 FEP 患者的临床实践中主要评估的因素。该模型在 1081 名患者中对治疗抵抗的预测具有合理的准确性;模型的 C 统计量在收缩前为 0.727(95%CI 0.723-0.732),调整后为 0.687。经过调整以消除乐观偏差后,校准良好(预期/观察比:0.999;大校准:0.000584)。

结论

我们开发并内部验证了一种具有合理预测指标的预测模型。临床医生、患者和照顾者参与了开发过程。需要对该工具进行外部验证,然后采用共同设计方法支持在早期干预服务中的实施。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3ac1/11536189/eda1c0232bd5/S0007125024001016_fig1.jpg

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