内分泌流行病学中的因果推断和机器学习。

IF 1.3 4区 医学 Q4 ENDOCRINOLOGY & METABOLISM
Endocrine journal Pub Date : 2024-10-01 Epub Date: 2024-07-06 DOI:10.1507/endocrj.EJ24-0193
Kosuke Inoue
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引用次数: 0

摘要

随着计算机科学的飞速发展,在内分泌失调及其长期健康结果的研究中使用因果推理方法和机器学习的需求日益增长。然而,有关这些方法在真实世界数据和临床环境中的有效和适当应用的研究仍然有限。本综述将说明因果推理和机器学习在内分泌学和新陈代谢领域流行病学研究中的应用。它将通过内分泌失调的应用实例来研究因果推断和机器学习的每个概念。随后,论文将讨论机器学习与因果推理框架的整合,包括:(i) 估算治疗效果或暴露与结果之间的因果关系;(ii) 评估基于个体特征的治疗效果(或暴露-结果因果关系)的异质性。准确评估不同个体之间的因果关系及其异质性不仅对确定有效的干预措施至关重要,而且对合理分配医疗资源和减少医疗差距也至关重要。本综述通过举例说明内分泌学中的一些应用实例,旨在加深读者对因果推断和机器学习的理解,并将其应用于未来以内分泌失调为重点的流行病学研究中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Causal inference and machine learning in endocrine epidemiology.

With the rapid development of computer science, there is an increasing demand for the use of causal inference methods and machine learning in the research of endocrine disorders and their long-term health outcomes. However, studies on the effective and appropriate applications of these approaches in real-world data and clinical settings are still limited. This review will illustrate the use of causal inference and machine learning in epidemiological research within the field of endocrinology and metabolism. It will examine each concept of causal inference and machine learning through application examples of endocrine disorders. Subsequently, the paper will discuss the integration of machine learning within the causal inference framework, including (i) the estimation of treatment effects or the causal relationship between exposure and outcomes, and (ii) the evaluation of heterogeneity in such treatment effects (or exposure-outcome causal relationship) based on individuals' characteristics. Accurately assessing causal relationships and their heterogeneity across different individuals is crucial not only for determining effective interventions, but also for the appropriate allocation of medical resources and reducing healthcare disparities. By illustrating some application examples in endocrinology, this review aims to enhance readers' understanding and application of causal inference and machine learning in future epidemiological studies focusing on endocrine disorders.

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来源期刊
Endocrine journal
Endocrine journal 医学-内分泌学与代谢
CiteScore
4.30
自引率
5.00%
发文量
224
审稿时长
1.5 months
期刊介绍: Endocrine Journal is an open access, peer-reviewed online journal with a long history. This journal publishes peer-reviewed research articles in multifaceted fields of basic, translational and clinical endocrinology. Endocrine Journal provides a chance to exchange your ideas, concepts and scientific observations in any area of recent endocrinology. Manuscripts may be submitted as Original Articles, Notes, Rapid Communications or Review Articles. We have a rapid reviewing and editorial decision system and pay a special attention to our quick, truly scientific and frequently-citable publication. Please go through the link for author guideline.
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