Application of artificial intelligence to analyze data from randomized controlled trials: An example from DECAAF II.

IF 5.6 2区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
Mario Mekhael, Han Feng, Nazem Akoum, Christian Sohns, Philipp Sommer, Christian Mahnkopf, Eugene Kholmovski, Jeroen J Bax, Prashanthan Sanders, Christopher McGann, Francis Marchlinski, Moussa Mansour, Gerhard Hindricks, David Wilber, Hugh Calkins, Pierre Jais, Hadi Younes, Ala Assaf, Charbel Noujaim, Chanho Lim, Chao Huang, Amitabh Pandey, Oussama Wazni, Nassir Marrouche
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引用次数: 0

Abstract

Background: Causal machine learning (ML) provides an efficient way of identifying heterogeneous treatment effect groups from hundreds of possible combinations, especially for randomized trial data.

Objective: The aim of this paper is to illustrate the potential of applying causal ML on the DECAAF II trial data. We proposed a causal ML model to predict the treatment response heterogeneity.

Methods: We applied causal tree learning to the DECAAF II trial data as an example of real applications, identifying subgroups that may be superior when subject to one of the treatments over the other through an easily interpretable process. For each subgroup identified, the characteristics were summarized, and the relationship between treatment arms and risk for recurrence of atrial tachyarrhythmia (aTA) among subjects was assessed.

Results: Causal tree learning demonstrated that, among all the preablation predictors, dividing subgroups according to age, with a cutoff of 58 years, provides the most heterogeneous subgroups in response to fibrosis-guided ablation in addition to pulmonary vein isolation (PVI) compared with PVI alone. The difference in the risk of recurrence of aTA between 2 treatments was nonsignificant in older patients (hazard ratio [HR] 1.06; 95% confidence interval [CI] 0.77-1.47; P = .72). However, among the younger patients, the risk of aTA recurrence was significantly lower in the fibrosis-guided ablation group compared with PVI-only (HR 0.50; 95% CI 0.28-0.90); P = .02).

Conclusion: Applying causal ML on random controlled trial datasets helped us identify groups of patients that profited from the treatment of interest in an efficient and unbiased manner.

人工智能在随机对照试验数据分析中的应用——以DECAAF-II为例
背景:因果机器学习(ML)提供了一种从数百种可能的组合中识别异质性治疗效果组的有效方法,特别是对于随机试验数据。目的:本文的目的是说明在DECAAF II试验数据上应用因果ML的潜力。我们提出了一个因果ML模型来预测治疗反应的异质性。方法:我们将因果树学习应用于DECAAF II试验数据,作为实际应用的一个例子,通过一个易于解释的过程,确定了当接受一种治疗时可能优于另一种治疗的亚组。对于确定的每个亚组,总结其特征,并评估治疗组与受试者间房性心动过速(aTA)复发风险之间的关系。结果:因果树学习表明,在所有消融前预测因子中,根据年龄划分亚组,截止年龄为58岁,与单独的PVI相比,纤维化引导下的PVI +消融反应提供了最异质的亚组。老年患者两种治疗方法的aTA复发风险差异无统计学意义(HR= 1.06 95% CI (0.77 - 1.47);P = 0.72)。然而,在年轻患者中,纤导消融组aTA复发风险明显低于单纯pvi消融组(HR= 0.50 95% CI (0.28 - 0.90);P = 0.02)。结论:在RCT数据集上应用因果ML有助于我们以有效和公正的方式确定从感兴趣的治疗中获益的患者组。
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
Heart rhythm
Heart rhythm 医学-心血管系统
CiteScore
10.50
自引率
5.50%
发文量
1465
审稿时长
24 days
期刊介绍: HeartRhythm, the official Journal of the Heart Rhythm Society and the Cardiac Electrophysiology Society, is a unique journal for fundamental discovery and clinical applicability. HeartRhythm integrates the entire cardiac electrophysiology (EP) community from basic and clinical academic researchers, private practitioners, engineers, allied professionals, industry, and trainees, all of whom are vital and interdependent members of our EP community. The Heart Rhythm Society is the international leader in science, education, and advocacy for cardiac arrhythmia professionals and patients, and the primary information resource on heart rhythm disorders. Its mission is to improve the care of patients by promoting research, education, and optimal health care policies and standards.
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