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Review of microarray experimental design strategies for genetical genomics studies

机译:基因芯片研究的微阵列实验设计策略综述

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Genetical genomics approaches provide a powerful tool for studying the genetic mechanisms governing variation in complex traits. By combining information on phenotypic traits, pedigree structure, molecular markers, and gene expression, such studies can be used for estimating heritability of mRNA transcript abundances, for mapping expression quantitative trait loci (eQTL), and for inferring regulatory gene networks. Microarray experiments, however, can be extremely costly and time consuming, which may limit sample sizes and statistical power. Thus it is crucial to optimize experimental designs by carefully choosing the subjects to be assayed, within a selective profiling approach, and by cautiously controlling systematic factors affecting the system. Also, a rigorous strategy should be used for allocating mRNA samples across assay batches, slides, and dye labeling, so that effects of interest are not confounded with nuisance factors. In this presentation, we review some selective profiling strategies for genetical genomics studies, including the selection of individuals for increased genetic dissimilarity and for a higher number of recombination events. Efficient designs for studying epistasis are also discussed, as well as experiments for inferring heritability of transcriptional levels. It is shown that solving an optimal design problem generally requires a numerical implementation and that the optimality criteria should be intimately related to the goals of the experiment, such as the estimation of additive, dominance, and interacting effects, localizing putative eQTL, or inferring genetic and environmental variance components associated with transcriptional abundances.
机译:遗传基因组学方法为研究控制复杂性状变异的遗传机制提供了强大的工具。通过结合有关表型性状,谱系结构,分子标记和基因表达的信息,此类研究可用于估计mRNA转录本丰度的遗传力,定位表达定量性状基因座(eQTL)以及推断调控性基因网络。然而,微阵列实验可能会非常昂贵且耗时,这可能会限制样本数量和统计能力。因此,至关重要的是,通过在选择性分析方法中仔细选择要测试的受试者,并谨慎地控制影​​响系统的系统因素,来优化实验设计。另外,应使用严格的策略在试验批次,载玻片和染料标记之间分配mRNA样品,以使目标效果不会与干扰因素混淆。在本演示中,我们回顾了一些用于遗传基因组学研究的选择性分析策略,包括为遗传差异增加和重组事件数量增加选择个体。还讨论了用于研究上位性的有效设计,以及用于推断转录水平遗传力的实验。结果表明,解决最佳设计问题通常需要数字实现,并且最佳条件应该与实验目标紧密相关,例如,累加性,优势和相互作用效应的估计,定位假定的eQTL或推断遗传和与转录丰度相关的环境差异成分。

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