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基于机器学习的首发精神病患者死亡风险模型的开发与验证。

Development and Validation of a Machine Learning-Based Model of Mortality Risk in First-Episode Psychosis.

机构信息

Department of Forensic Psychiatry, Niuvanniemi Hospital, University of Eastern Finland, Kuopio.

Division of Insurance Medicine, Department of Clinical Neuroscience, Karolinska Institutet, Stockholm, Sweden.

出版信息

JAMA Netw Open. 2024 Mar 4;7(3):e240640. doi: 10.1001/jamanetworkopen.2024.0640.

Abstract

IMPORTANCE

There is an absence of mortality risk assessment tools in first-episode psychosis (FEP) that could enable personalized interventions.

OBJECTIVE

To examine the feasibility of machine learning (ML) in discerning mortality risk in FEP and to assess whether such risk predictions can inform pharmacotherapy choices.

DESIGN, SETTING, AND PARTICIPANTS: In this prognostic study, Swedish nationwide cohort data (from July 1, 2006, to December 31, 2021) were harnessed for model development and validation. Finnish cohort data (from January 1, 1998, to December 31, 2017) were used for external validation. Data analyses were completed between December 2022 and December 2023.

MAIN OUTCOMES AND MEASURES

Fifty-one nationwide register variables, encompassing demographics and clinical and work-related histories, were subjected to ML to predict future mortality risk. The ML model's performance was evaluated by calculating the area under the receiver operating characteristic curve (AUROC). The comparative effectiveness of pharmacotherapies in patients was assessed and was stratified by the ML model to those with predicted high mortality risk (vs low risk), using the between-individual hazard ratio (HR). The 5 most important variables were then identified and a model was retrained using these variables in the discovery sample.

RESULTS

This study included 24 052 Swedish participants (20 000 in the discovery sample and 4052 in the validation sample) and 1490 Finnish participants (in the validation sample). Swedish participants had a mean (SD) age of 29.1 (8.1) years, 62.1% were men, and 418 died with 2 years. Finnish participants had a mean (SD) age of 29.7 (8.0) years, 61.7% were men, and 31 died within 2 years. The discovery sample achieved an AUROC of 0.71 (95% CI, 0.68-0.74) for 2-year mortality prediction. Using the 5 most important variables (ie, the top 10% [substance use comorbidities, first hospitalization duration due to FEP, male sex, prior somatic hospitalizations, and age]), the final model resulted in an AUROC of 0.70 (95% CI, 0.63-0.76) in the Swedish sample and 0.67 (95% CI, 0.56-0.78) in the Finnish sample. Individuals with predicted high mortality risk had an elevated 15-year risk in the Swedish sample (HR, 3.77 [95% CI, 2.92-4.88]) and an elevated 20-year risk in the Finnish sample (HR, 3.72 [95% CI, 2.67-5.18]). For those with predicted high mortality risk, long-acting injectable antipsychotics (HR, 0.45 [95% CI, 0.23-0.88]) and mood stabilizers (HR, 0.64 [95% CI, 0.46-0.90]) were associated with decreased mortality risk. Conversely, for those predicted to survive, only oral aripiprazole (HR, 0.38 [95% CI, 0.20-0.69]) and risperidone (HR, 0.38 [95% CI, 0.18-0.82]) were associated with decreased mortality risk.

CONCLUSIONS AND RELEVANCE

In this prognostic study, an ML-based model was developed and validated to predict mortality risk in FEP. These findings may help to develop personalized interventions to mitigate mortality risk in FEP.

摘要

重要性

在首发精神病 (FEP) 中,缺乏用于个性化干预的死亡率风险评估工具。

目的

检验机器学习 (ML) 在识别 FEP 中死亡率风险方面的可行性,并评估这种风险预测是否可以为药物治疗选择提供信息。

设计、地点和参与者:在这项预后研究中,利用瑞典全国队列数据(2006 年 7 月 1 日至 2021 年 12 月 31 日)进行模型开发和验证。芬兰队列数据(1998 年 1 月 1 日至 2017 年 12 月 31 日)用于外部验证。数据分析于 2022 年 12 月至 2023 年 12 月之间完成。

主要结果和措施

对 51 个全国范围内的登记变量进行了 ML 分析,这些变量包括人口统计学、临床和与工作相关的病史,以预测未来的死亡率风险。通过计算接收者操作特征曲线下的面积 (AUROC) 来评估 ML 模型的性能。使用个体间风险比 (HR),根据 ML 模型将患者分为高死亡率风险 (vs 低风险) 组,评估药物治疗的比较效果。然后确定了 5 个最重要的变量,并在发现样本中使用这些变量重新训练模型。

结果

这项研究包括 24052 名瑞典参与者(发现样本中的 20000 人和验证样本中的 4052 人)和 1490 名芬兰参与者(在验证样本中)。瑞典参与者的平均(标准差)年龄为 29.1(8.1)岁,62.1%为男性,2 年内有 418 人死亡。芬兰参与者的平均(标准差)年龄为 29.7(8.0)岁,61.7%为男性,2 年内有 31 人死亡。发现样本对 2 年内的死亡率预测的 AUROC 为 0.71(95%CI,0.68-0.74)。使用 5 个最重要的变量(即前 10%[物质使用合并症、FEP 首次住院持续时间、男性、既往躯体住院和年龄]),最终模型在瑞典样本中的 AUROC 为 0.70(95%CI,0.63-0.76),在芬兰样本中的 AUROC 为 0.67(95%CI,0.56-0.78)。预测死亡率风险高的个体在瑞典样本中的 15 年风险增加(HR,3.77[95%CI,2.92-4.88]),在芬兰样本中的 20 年风险增加(HR,3.72[95%CI,2.67-5.18])。对于预测死亡率风险高的个体,长效注射抗精神病药(HR,0.45[95%CI,0.23-0.88])和情绪稳定剂(HR,0.64[95%CI,0.46-0.90])与降低死亡率风险相关。相反,对于预测存活的个体,仅阿立哌唑(HR,0.38[95%CI,0.20-0.69])和利培酮(HR,0.38[95%CI,0.18-0.82])与降低死亡率风险相关。

结论和相关性

在这项预后研究中,开发并验证了一种基于 ML 的模型,以预测 FEP 中的死亡率风险。这些发现可能有助于制定个性化干预措施,以降低 FEP 中的死亡率风险。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6b74/10949098/5fc417080c81/jamanetwopen-e240640-g001.jpg

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