Observational birth cohorts for causal and predictive inference: The example of childhood asthma and allergic diseases.

IF 11.4 1区 医学 Q1 ALLERGY
Brittney M Snyder, Ewoud Schuit, Bryan S Blette, William D Dupont, Christian Rosas-Salazar, Karel K G Moons, Tebeb Gebretsadik
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引用次数: 0

Abstract

Prospective birth cohort studies have identified important factors associated with the development and occurrence of early life conditions and facilitated exploration of causal mechanisms. We discuss the strengths, importance, and biases of birth cohort data for causal inference and predictive modeling, using childhood asthma and allergic disease research as an illustrative example. State-of-the-art study design and statistical methodologies are considered and recommended to mitigate bias and infer causality, as well as using cohort assembly for increased power, sample size, and generalizability. These include effective control for confounding, limiting loss to follow-up, and leveraging risk factors for precision. While logistical and methodologic challenges exist for establishing, maintaining, and analyzing birth cohorts and their respective data, this prospective study design offers numerous benefits for inferring causality over other observational designs, and it is often the only alternative for assessing critical research questions. With long-term follow-up and extensive data collection, birth cohort studies represent powerful tools for studying disease etiology and have been integral to developing effective treatment and prevention strategies.

前瞻性出生队列研究发现了与生命早期状况的发展和发生相关的重要因素,并促进了对因果机制的探索。本文以儿童哮喘和过敏性疾病研究为例,讨论了出生队列数据在因果推断和预测建模方面的优势、重要性和偏差。研究人员考虑并推荐了最先进的研究设计和统计方法,以减少偏差和推断因果关系,并使用队列组合来提高研究的有效性、样本量和可推广性。这些方法包括有效控制混杂因素、限制随访损失以及利用风险因素实现精确性。虽然建立、维护和分析出生队列及其相关数据在后勤和方法上存在挑战,但这种前瞻性研究设计与其他观察性设计相比,在推断因果关系方面具有诸多优势,而且往往是评估关键研究问题的唯一选择。出生队列研究具有长期随访和广泛数据收集的特点,是研究疾病病因的有力工具,也是制定有效治疗和预防策略不可或缺的一部分。
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来源期刊
CiteScore
25.90
自引率
7.70%
发文量
1302
审稿时长
38 days
期刊介绍: The Journal of Allergy and Clinical Immunology is a prestigious publication that features groundbreaking research in the fields of Allergy, Asthma, and Immunology. This influential journal publishes high-impact research papers that explore various topics, including asthma, food allergy, allergic rhinitis, atopic dermatitis, primary immune deficiencies, occupational and environmental allergy, and other allergic and immunologic diseases. The articles not only report on clinical trials and mechanistic studies but also provide insights into novel therapies, underlying mechanisms, and important discoveries that contribute to our understanding of these diseases. By sharing this valuable information, the journal aims to enhance the diagnosis and management of patients in the future.
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