空间和环境暴露-健康研究中的方法论挑战。

IF 11.4 1区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Hui Hu, Xiaokang Liu, Yi Zheng, Xing He, Jaime Hart, Peter James, Francine Laden, Yong Chen, Jiang Bian
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引用次数: 3

摘要

暴露的概念包括个人一生中各种外部和内部来源的暴露总量。丰富的现有空间和背景数据使我们有必要描述个人的外部暴露情况,以促进我们对健康的环境决定因素的理解。然而,由于空间和环境暴露量数据具有独特的相关结构和不同的时空尺度,因此空间和环境暴露量与在个体水平上测量的其他暴露因子有很大的不同。这些独特的特征导致在研究的不同阶段面临多种独特的方法挑战。本文综述了空间和环境暴露体健康研究的现有资源、方法和工具,重点介绍了四个方面:(1)数据工程;(2)时空数据链接;(3)暴露体健康关联研究的统计方法;(4)利用空间和环境暴露体数据进行疾病预测的机器和深度学习方法。对每个领域所涉及的方法挑战进行批判性分析,以确定知识差距并解决未来的研究需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Methodological Challenges in Spatial and Contextual Exposome-Health Studies.

The concept of the exposome encompasses the totality of exposures from a variety of external and internal sources across an individual's life course. The wealth of existing spatial and contextual data makes it appealing to characterize individuals' external exposome to advance our understanding of environmental determinants of health. However, the spatial and contextual exposome is very different from other exposome factors measured at the individual-level as spatial and contextual exposome data are more heterogenous with unique correlation structures and various spatiotemporal scales. These distinctive characteristics lead to multiple unique methodological challenges across different stages of a study. This article provides a review of the existing resources, methods, and tools in the new and developing field for spatial and contextual exposome-health studies focusing on four areas: (1) data engineering, (2) spatiotemporal data linkage, (3) statistical methods for exposome-health association studies, and (4) machine- and deep-learning methods to use spatial and contextual exposome data for disease prediction. A critical analysis of the methodological challenges involved in each of these areas is performed to identify knowledge gaps and address future research needs.

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来源期刊
CiteScore
27.30
自引率
1.60%
发文量
64
审稿时长
2 months
期刊介绍: Two of the most pressing global challenges of our era involve understanding and addressing the multitude of environmental problems we face. In order to tackle them effectively, it is essential to devise logical strategies and methods for their control. Critical Reviews in Environmental Science and Technology serves as a valuable international platform for the comprehensive assessment of current knowledge across a wide range of environmental science topics. Environmental science is a field that encompasses the intricate and fluid interactions between various scientific disciplines. These include earth and agricultural sciences, chemistry, biology, medicine, and engineering. Furthermore, new disciplines such as environmental toxicology and risk assessment have emerged in response to the increasing complexity of environmental challenges. The purpose of Critical Reviews in Environmental Science and Technology is to provide a space for critical analysis and evaluation of existing knowledge in environmental science. By doing so, it encourages the advancement of our understanding and the development of effective solutions. This journal plays a crucial role in fostering international cooperation and collaboration in addressing the pressing environmental issues of our time.
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