人类生物标志物解释:类内相关系数(ICC)的重要性及其基于混合模型、方差分析和方差估计的计算。

IF 6.4 2区 医学 Q1 ENVIRONMENTAL SCIENCES
Joachim D Pleil, M Ariel Geer Wallace, Matthew A Stiegel, William E Funk
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引用次数: 38

摘要

人体生物监测是环境毒理学、社区公共卫生评价、临床前健康影响评价、药理药物开发和试验以及医学诊断的基础。在这个框架内,类内相关系数(ICC)是一个重要的工具,可以洞察人类的可变性和反应,并在面对稀疏或高度复杂的测量数据时开发基于风险的评估。为临床和公共卫生工作提供数据的分析程序正在不断发展,以扩大我们对定义人体系统生物学的数千种环境和生物标记化学物质的知识库。这些化学物质的范围从能量代谢的最小分子(即代谢组)到大分子(包括酶、蛋白质、RNA、DNA和加合物)。此外,人体还含有外源性环境化学物质和来自胃肠道、肺部、泌尿生殖系统、鼻咽和皮肤来源的微生物组。这种来自环境、人类和微生物来源的生物标志物化学物质的复杂混合物构成了人类暴露体,通常通过血液、呼吸和尿液取样获得。生物标志物评估中最困难的问题之一是为任何给定的测量值分配证明值,因为通常没有足够的数据来区分化学物质的来源,如环境、微生物或人体代谢,以及确定哪些测量值在正常的人类变异性范围内是显著的。纵向(重复)测量策略的实施为解释这种复杂性提供了新的统计方法,而基于类内相关系数(ICC)的描述性统计的使用已成为这些努力的有力工具。本综述分为两部分;第一部分侧重于人类生物标志物重复测量的历史,从20世纪50年代早期的职业毒理学开始,通过现代应用来解释人类暴露和代谢不良后果途径(AOPs)。第二部分回顾了计算ICC的不同方法,并探讨了不同数据结构下的策略和应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Human biomarker interpretation: the importance of intra-class correlation coefficients (ICC) and their calculations based on mixed models, ANOVA, and variance estimates.

Human biomarker interpretation: the importance of intra-class correlation coefficients (ICC) and their calculations based on mixed models, ANOVA, and variance estimates.

Human biomarker interpretation: the importance of intra-class correlation coefficients (ICC) and their calculations based on mixed models, ANOVA, and variance estimates.

Human biomarker interpretation: the importance of intra-class correlation coefficients (ICC) and their calculations based on mixed models, ANOVA, and variance estimates.

Human biomonitoring is the foundation of environmental toxicology, community public health evaluation, preclinical health effects assessments, pharmacological drug development and testing, and medical diagnostics. Within this framework, the intra-class correlation coefficient (ICC) serves as an important tool for gaining insight into human variability and responses and for developing risk-based assessments in the face of sparse or highly complex measurement data. The analytical procedures that provide data for clinical and public health efforts are continually evolving to expand our knowledge base of the many thousands of environmental and biomarker chemicals that define human systems biology. These chemicals range from the smallest molecules from energy metabolism (i.e., the metabolome), through larger molecules including enzymes, proteins, RNA, DNA, and adducts. In additiona, the human body contains exogenous environmental chemicals and contributions from the microbiome from gastrointestinal, pulmonary, urogenital, naso-pharyngeal, and skin sources. This complex mixture of biomarker chemicals from environmental, human, and microbiotic sources comprise the human exposome and generally accessed through sampling of blood, breath, and urine. One of the most difficult problems in biomarker assessment is assigning probative value to any given set of measurements as there are generally insufficient data to distinguish among sources of chemicals such as environmental, microbiotic, or human metabolism and also deciding which measurements are remarkable from those that are within normal human variability. The implementation of longitudinal (repeat) measurement strategies has provided new statistical approaches for interpreting such complexities, and use of descriptive statistics based upon intra-class correlation coefficients (ICC) has become a powerful tool in these efforts. This review has two parts; the first focuses on the history of repeat measures of human biomarkers starting with occupational toxicology of the early 1950s through modern applications in interpretation of the human exposome and metabolic adverse outcome pathways (AOPs). The second part reviews different methods for calculating the ICC and explores the strategies and applications in light of different data structures.

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来源期刊
CiteScore
13.80
自引率
6.90%
发文量
13
审稿时长
>24 weeks
期刊介绍: "Journal of Toxicology and Environmental Health: Part B - Critical Reviews" is an academic journal published by Taylor & Francis, focusing on the critical examination of research in the areas of environmental exposure and population health. With an ISSN identifier of 1093-7404, this journal has established itself as a significant source of scholarly content in the field of toxicology and environmental health. Since its inception, the journal has published over 424 articles that have garnered 35,097 citations, reflecting its impact and relevance in the scientific community. Known for its comprehensive reviews, the journal also goes by the names "Critical Reviews" and "Journal of Toxicology & Environmental Health, Part B, Critical Reviews." The journal's mission is to provide a platform for in-depth analysis and critical discussion of the latest findings in toxicology, environmental health, and related disciplines. By doing so, it contributes to the advancement of knowledge and understanding of the complex interactions between environmental factors and human health, aiding in the development of strategies to protect and improve public health.
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