在流行病学研究中使用逻辑回归来调查多重二元暴露:职业史和肌萎缩侧索硬化症的一个例子。

Q3 Mathematics
Epidemiologic Methods Pub Date : 2020-01-01 Epub Date: 2020-02-25 DOI:10.1515/em-2019-0032
Andrea Bellavia, Ran S Rotem, Aisha S Dickerson, Johnni Hansen, Ole Gredal, Marc G Weisskopf
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引用次数: 6

摘要

调查几种危险因素的联合暴露正成为流行病学研究的一个关键组成部分。个人往往同时受到多种因素的影响,评估接触模式和高维相互作用可能有助于更好地了解个人层面的健康风险。在联合评估高维暴露时,应将常见的统计方法与机器学习技术相结合,以更好地解释复杂的设置。其中,逻辑回归是为了调查大量的二元暴露,因为它们与给定的结果有关。这种方法可能对一些公共卫生机构感兴趣,但从未向流行病学受众介绍过。在本文中,我们回顾并讨论了逻辑回归作为流行病学研究的潜在工具,使用了一个以人群为基础的丹麦队列的职业史(68个主要职业的二元暴露)和肌萎缩性侧索硬化症的例子。逻辑回归识别原始(二元)暴露的布尔组合的预测因子,在感兴趣的回归框架(例如线性,逻辑)内完全运行。暴露的组合以图形方式表示为逻辑树,选择最佳逻辑模型的技术是可用的,并且非常重要。在强调该方法的几个优点的同时,我们也讨论了在基于人群的研究中使用逻辑回归时应该考虑的具体缺点和实际问题。通过本文,我们鼓励研究人员在评估大维度流行病学数据时探索机器学习技术的使用,并倡导该领域进一步的方法学工作的必要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The use of Logic regression in epidemiologic studies to investigate multiple binary exposures: an example of occupation history and amyotrophic lateral sclerosis.

Investigating the joint exposure to several risk factors is becoming a key component of epidemiologic studies. Individuals are exposed to multiple factors, often simultaneously, and evaluating patterns of exposures and high-dimension interactions may allow for a better understanding of health risks at the individual level. When jointly evaluating high-dimensional exposures, common statistical methods should be integrated with machine learning techniques that may better account for complex settings. Among these, Logic regression was developed to investigate a large number of binary exposures as they relate to a given outcome. This method may be of interest in several public health settings, yet has never been presented to an epidemiologic audience. In this paper, we review and discuss Logic regression as a potential tool for epidemiological studies, using an example of occupation history (68 binary exposures of primary occupations) and amyotrophic lateral sclerosis in a population-based Danish cohort. Logic regression identifies predictors that are Boolean combinations of the original (binary) exposures, fully operating within the regression framework of interest (e.g. linear, logistic). Combinations of exposures are graphically presented as Logic trees, and techniques for selecting the best Logic model are available and of high importance. While highlighting several advantages of the method, we also discuss specific drawbacks and practical issues that should be considered when using Logic regression in population-based studies. With this paper, we encourage researchers to explore the use of machine learning techniques when evaluating large-dimensional epidemiologic data, as well as advocate the need of further methodological work in the area.

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来源期刊
Epidemiologic Methods
Epidemiologic Methods Mathematics-Applied Mathematics
CiteScore
2.10
自引率
0.00%
发文量
7
期刊介绍: Epidemiologic Methods (EM) seeks contributions comparable to those of the leading epidemiologic journals, but also invites papers that may be more technical or of greater length than what has traditionally been allowed by journals in epidemiology. Applications and examples with real data to illustrate methodology are strongly encouraged but not required. Topics. genetic epidemiology, infectious disease, pharmaco-epidemiology, ecologic studies, environmental exposures, screening, surveillance, social networks, comparative effectiveness, statistical modeling, causal inference, measurement error, study design, meta-analysis
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