结合不同来源的分子和基因数据。

IARC scientific publications Pub Date : 2011-01-01
Evangelia E Ntzani, Muin J Khoury, John P A Ioannidis
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引用次数: 0

摘要

分子流行病学研究的数量迅速增加,为各种疾病结局和生物标志物之间的关联提供了大量的、往往是多维的证据。遗传和分子流行病学中统计假设的检验和验证提出了一项重大挑战,要求方法的严谨性和分析能力。许多遗传和其他生物标志物关联研究的非重复性表明,该领域可能存在大量虚假的发现。本章将讨论使用元分析方法结合不同来源证据的方法。研究综合不仅旨在对特定的生物标志物进行总结效应估计,而且还提供了一个独特的机会,可以细致地尝试批判性地评估一个研究领域,识别研究之间或研究内部的实质性差异,并检测偏倚的来源。本文特别讨论了人类基因组流行病学中的系统综述和荟萃分析,因为它们构成了分子流行病学中迄今已应用这些方法的大部分可用证据。这里考虑的是关于遗传关联研究的有效性和解释的问题,以及通过国际联盟开发和整合证据的策略。最后,简要介绍了如何通过荟萃分析将数据结合起来应用于分子流行病学的其他领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining molecular and genetic data from different sources.

The rapidly growing number of molecular epidemiology studies is providing an enormous, often multidimensional, body of evidence on the association of various disease outcomes and biomarkers. The testing and validation of statistical hypotheses in genetic and molecular epidemiology presents a major challenge requiring methodological rigor and analytical power. The non-replication of many genetic and other biomarker association studies suggests that there may be an abundance of spurious findings in the field. This chapter will discuss ways of combining evidence from different sources using meta-analysis methods. Research synthesis not only aims at producing a summary effect estimate for a specific biomarker, but also offers a unique opportunity for a meticulous attempt to critically appraise a research field, identify substantial differences between or within studies, and detect sources of bias. Systematic reviews and meta-analyses in human genome epidemiology are specifically discussed, as they comprise the bulk of the available evidence in molecular epidemiology where these methods have been applied to date. Considered here are issues regarding validity and interpretation in genetic association studies, as well as strategies for developing and integrating evidence through international consortia. Finally, there is a brief look at how combining data through meta-analysis may be applied in other areas of molecular epidemiology.

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