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基于机器学习的首发双相情感障碍死亡率风险评估:一项跨诊断外部验证研究。

Machine learning-based mortality risk assessment in first-episode bipolar disorder: a transdiagnostic external validation study.

作者信息

Lieslehto Johannes, Tiihonen Jari, Lähteenvuo Markku, Kautzky Alexander, Akhtar Aemal, Ármannsdóttir Bergný, Leucht Stefan, Correll Christoph U, Mittendorfer-Rutz Ellenor, Tanskanen Antti, Taipale Heidi

机构信息

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

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

出版信息

EClinicalMedicine. 2025 Feb 13;81:103108. doi: 10.1016/j.eclinm.2025.103108. eCollection 2025 Mar.

Abstract

BACKGROUND

Accurate mortality risk prediction could enhance treatment planning in bipolar disorder, where mortality rates rival those of many cancers. Such prognostic tools are lacking in psychiatry, where assessments typically emphasize immediate suicidality while neglecting long-term mortality risks, and their clinical use is debated. We evaluated the recently developed machine learning model MIRACLE-FEP, initially developed for first-episode psychosis, in predicting all-cause mortality in patients with first-episode bipolar disorder (FEBD), hypothesizing that it would provide accurate risk prediction and guide pharmacotherapy decisions.

METHODS

We utilized national register-based cohorts of FEBD patients from Sweden (N = 31,013, followed 2006-2021) and Finland (N = 13,956, followed 1996-2018). We assessed the MIRACLE-FEP model's performance in predicting all-cause mortality using the area under the receiver operating characteristic curve (AUROC), calibration, and decision curve analysis. Additionally, we conducted a pharmacoepidemiologic analysis to examine the relationship between predicted mortality risk and pharmacotherapy effectiveness.

FINDINGS

MIRACLE-FEP achieved an AUROC = 0.77 (95%CI = 0.73-0.80) for 2-year mortality prediction in Sweden and 0.71 (95%CI = 0.67-0.75) in Finland. For 10-year all-cause mortality prediction, the model demonstrated an AUROC of 0.71 in both cohorts. The model demonstrated relatively good calibration and indicated potential clinical utility in decision curve analysis. Among patients with predicted risk exceeding the observed two-year mortality rate in FEBD, the lowest mortality risk was observed with polytherapy regimens (compared to non-use of antipsychotics or mood stabilizers), including quetiapine and lamotrigine (HR = 0.42, 95%CI = 0.23-0.80) or mood stabilizer polytherapy (HR = 0.47, 95%CI = 0.27-0.82). Conversely, in patients with predicted risk below this threshold, complex pharmacotherapy was not associated with a significant reduction in mortality risk.

INTERPRETATION

MIRACLE-FEP offers a promising approach to predicting long-term mortality risk and could guide proactive treatment decisions, such as targeting combination pharmacotherapy, in FEBD.

FUNDING

The Swedish Research Council for Health, Working Life and Welfare, FORTE (2021-01079).

摘要

背景

准确的死亡风险预测可以改善双相情感障碍的治疗规划,该疾病的死亡率与许多癌症相当。精神病学领域缺乏此类预后工具,其评估通常强调即时自杀倾向,而忽视长期死亡风险,且其临床应用存在争议。我们评估了最近开发的机器学习模型MIRACLE-FEP(最初是为首发精神病开发的)在预测首发双相情感障碍(FEBD)患者全因死亡率方面的性能,假设它能提供准确的风险预测并指导药物治疗决策。

方法

我们利用了瑞典(N = 31,013,随访时间为2006 - 2021年)和芬兰(N = 13,956,随访时间为1996 - 2018年)基于全国登记的FEBD患者队列。我们使用受试者操作特征曲线下面积(AUROC)、校准和决策曲线分析来评估MIRACLE-FEP模型在预测全因死亡率方面的性能。此外,我们进行了药物流行病学分析,以研究预测的死亡风险与药物治疗效果之间的关系。

结果

MIRACLE-FEP在瑞典对2年死亡率预测的AUROC = 0.77(95%CI = 0.73 - 0.80),在芬兰为0.71(95%CI = 0.67 - 0.75)。对于10年全因死亡率预测,该模型在两个队列中的AUROC均为0.71。该模型显示出相对良好的校准,并在决策曲线分析中表明了潜在的临床应用价值。在FEBD中预测风险超过观察到的两年死亡率的患者中,联合治疗方案(与不使用抗精神病药物或心境稳定剂相比)的死亡风险最低,包括喹硫平和拉莫三嗪(HR = 0.42,95%CI = 0.23 - 0.80)或心境稳定剂联合治疗(HR = 0.47,95%CI = 0.27 - 0.82)。相反,在预测风险低于该阈值的患者中,复杂的药物治疗与死亡风险的显著降低无关。

解读

MIRACLE-FEP为预测长期死亡风险提供了一种有前景的方法,并可指导FEBD中的积极治疗决策,如针对联合药物治疗。

资助

瑞典卫生、工作生活和福利研究理事会,FORTE(2021 - 01079)。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6e5f/11874523/eda084ae0c1a/gr1.jpg

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