A Resampling Approach for Causal Inference on Novel Two-Point Time-Series with Application to Identify Risk Factors for Type-2 Diabetes and Cardiovascular Disease

IF 0.8 Q4 MATHEMATICAL & COMPUTATIONAL BIOLOGY Statistics in Biosciences Pub Date : 2023-10-16 DOI:10.1007/s12561-023-09390-w
Xiaowu Dai, Saad Mouti, Marjorie Lima do Vale, Sumantra Ray, Jeffrey Bohn, Lisa Goldberg
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Abstract

Abstract Two-point time-series data, characterized by baseline and follow-up observations, are frequently encountered in health research. We study a novel two-point time-series structure without a control group, which is driven by an observational routine clinical dataset collected to monitor key risk markers of type-2 diabetes (T2D) and cardiovascular disease (CVD). We propose a resampling approach called “I-Rand” for independently sampling one of the two-time points for each individual and making inferences on the estimated causal effects based on matching methods. The proposed method is illustrated with data from a service-based dietary intervention to promote a low-carbohydrate diet (LCD), designed to impact risk of T2D and CVD. Baseline data contain a pre-intervention health record of study participants, and health data after LCD intervention are recorded at the follow-up visit, providing a two-point time-series pattern without a parallel control group. Using this approach we find that obesity is a significant risk factor of T2D and CVD, and an LCD approach can significantly mitigate the risks of T2D and CVD. We provide code that implements our method.
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新两点时间序列因果推断的重采样方法及其在2型糖尿病和心血管疾病危险因素识别中的应用
以基线和随访观察为特征的两点时间序列数据在卫生研究中经常遇到。我们研究了一种新的两点时间序列结构,没有对照组,该结构由收集的观察性常规临床数据驱动,用于监测2型糖尿病(T2D)和心血管疾病(CVD)的关键风险标志物。我们提出了一种称为“I-Rand”的重新采样方法,用于对每个个体的两个时间点中的一个进行独立采样,并根据匹配方法对估计的因果效应进行推断。通过一项以服务为基础的饮食干预来促进低碳水化合物饮食(LCD),旨在影响T2D和CVD的风险。基线数据包含研究参与者的干预前健康记录,LCD干预后的健康数据在随访时记录,提供两点时间序列模式,而不需要平行对照组。通过该方法,我们发现肥胖是T2D和CVD的重要危险因素,LCD方法可以显著降低T2D和CVD的风险。我们提供了实现方法的代码。
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来源期刊
Statistics in Biosciences
Statistics in Biosciences MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
2.00
自引率
0.00%
发文量
28
期刊介绍: Statistics in Biosciences (SIBS) is published three times a year in print and electronic form. It aims at development and application of statistical methods and their interface with other quantitative methods, such as computational and mathematical methods, in biological and life science, health science, and biopharmaceutical and biotechnological science. SIBS publishes scientific papers and review articles in four sections, with the first two sections as the primary sections. Original Articles publish novel statistical and quantitative methods in biosciences. The Bioscience Case Studies and Practice Articles publish papers that advance statistical practice in biosciences, such as case studies, innovative applications of existing methods that further understanding of subject-matter science, evaluation of existing methods and data sources. Review Articles publish papers that review an area of statistical and quantitative methodology, software, and data sources in biosciences. Commentaries provide perspectives of research topics or policy issues that are of current quantitative interest in biosciences, reactions to an article published in the journal, and scholarly essays. Substantive science is essential in motivating and demonstrating the methodological development and use for an article to be acceptable. Articles published in SIBS share the goal of promoting evidence-based real world practice and policy making through effective and timely interaction and communication of statisticians and quantitative researchers with subject-matter scientists in biosciences.
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