Application of Dragonnet and Conformal Inference for Estimating Individualized Treatment Effects for Personalized Stroke Prevention: Retrospective Cohort Study.

Q2 Medicine
JMIR Cardio Pub Date : 2025-01-08 DOI:10.2196/50627
Sermkiat Lolak, John Attia, Gareth J McKay, Ammarin Thakkinstian
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引用次数: 0

Abstract

Background: Stroke is a major cause of death and disability worldwide. Identifying individuals who would benefit most from preventative interventions, such as antiplatelet therapy, is critical for personalized stroke prevention. However, traditional methods for estimating treatment effects often focus on the average effect across a population and do not account for individual variations in risk and treatment response.

Objective: This study aimed to estimate the individualized treatment effects (ITEs) for stroke prevention using a novel combination of Dragonnet, a causal neural network, and conformal inference. The study also aimed to determine and validate the causal effects of known stroke risk factors-hypertension (HT), diabetes mellitus (DM), dyslipidemia (DLP), and atrial fibrillation (AF)-using both a conventional causal model and machine learning models.

Methods: A retrospective cohort study was conducted using data from 275,247 high-risk patients treated at Ramathibodi Hospital, Thailand, between 2010 and 2020. Patients aged >18 years with HT, DM, DLP, or AF were eligible. The main outcome was ischemic or hemorrhagic stroke, identified using International Classification of Diseases, 10th Revision (ICD-10) codes. Causal effects of the risk factors were estimated using a range of methods, including: (1) propensity score-based methods, such as stratified propensity scores, inverse probability weighting, and doubly robust estimation; (2) structural causal models; (3) double machine learning; and (4) Dragonnet, a causal neural network, which was used together with weighted split-conformal quantile regression to estimate ITEs.

Results: AF, HT, and DM were identified as significant stroke risk factors. Average causal risk effect estimates for these risk factors ranged from 0.075 to 0.097 for AF, 0.017 to 0.025 for HT, and 0.006 to 0.010 for DM, depending on the method used. Dragonnet yielded causal risk ratios of 4.56 for AF, 2.44 for HT, and 1.41 for DM, which is comparable to other causal models and the standard epidemiological case-control study. Mean ITE analysis indicated that several patients with DM or DM with HT, who were not receiving antiplatelet treatment at the time of data collection, showed reductions in total risk of -0.015 and -0.016, respectively.

Conclusions: This study provides a comprehensive evaluation of stroke risk factors and demonstrates the feasibility of using Dragonnet and conformal inference to estimate ITEs of antiplatelet therapy for stroke prevention. The mean ITE analysis suggested that those with DM or DM with HT, who were not receiving antiplatelet treatment at the time of data collection, could potentially benefit from this therapy. The findings highlight the potential of these advanced techniques to inform personalized treatment strategies for stroke, enabling clinicians to identify individuals who are most likely to benefit from specific interventions.

应用Dragonnet和适形推理评估个体化治疗对个体化脑卒中预防的效果:回顾性队列研究。
背景:中风是世界范围内死亡和残疾的主要原因。确定从预防性干预措施(如抗血小板治疗)中获益最多的个体,对于个性化中风预防至关重要。然而,估计治疗效果的传统方法往往侧重于整个人群的平均效果,而不考虑风险和治疗反应的个体差异。目的:本研究旨在利用Dragonnet、因果神经网络和适形推理的新组合来评估个体化治疗对脑卒中预防的效果。该研究还旨在确定和验证已知卒中危险因素-高血压(HT),糖尿病(DM),血脂异常(DLP)和心房颤动(AF)的因果关系-使用传统的因果模型和机器学习模型。方法:对2010年至2020年期间在泰国Ramathibodi医院接受治疗的275247名高危患者的数据进行回顾性队列研究。年龄在bb0 ~ 18岁之间的HT、DM、DLP或AF患者符合条件。主要结局为缺血性或出血性卒中,根据国际疾病分类第十版(ICD-10)代码确定。风险因素的因果效应使用一系列方法进行估计,包括:(1)基于倾向得分的方法,如分层倾向得分、逆概率加权和双重稳健估计;(2)结构因果模型;(3)双机器学习;(4)将因果神经网络Dragonnet与加权分裂保形分位数回归相结合来估计ITEs。结果:房颤、HT和DM被确定为卒中的重要危险因素。根据使用的方法,这些风险因素的平均因果风险效应估计范围为:AF为0.075 - 0.097,HT为0.017 - 0.025,DM为0.006 - 0.010。Dragonnet得出AF的因果风险比为4.56,HT为2.44,DM为1.41,与其他因果模型和标准流行病学病例对照研究相当。平均ITE分析显示,在数据收集时未接受抗血小板治疗的几例糖尿病或糖尿病合并HT患者的总风险分别降低了-0.015和-0.016。结论:本研究对脑卒中危险因素进行了综合评价,并证明了使用Dragonnet和适形推断来估计抗血小板治疗预防脑卒中的ITEs的可行性。平均ITE分析表明,在数据收集时未接受抗血小板治疗的DM或DM合并HT患者可能从这种治疗中获益。研究结果强调了这些先进技术在为中风个性化治疗策略提供信息方面的潜力,使临床医生能够确定最有可能从特定干预措施中受益的个体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JMIR Cardio
JMIR Cardio Computer Science-Computer Science Applications
CiteScore
3.50
自引率
0.00%
发文量
25
审稿时长
12 weeks
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