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Three methods for optimization of cross-laboratory and cross-platform microarray expression data

机译:优化跨实验室和跨平台微阵列表达数据的三种方法

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摘要

Microarray gene expression data becomes more valuable as our confidence in the results grows. Guaranteeing data quality becomes increasingly important as microarrays are being used to diagnose and treat patients (1–4). The MAQC Quality Control Consortium, the FDA's Critical Path Initiative, NCI's caBIG and others are implementing procedures that will broadly enhance data quality. As GEO continues to grow, its usefulness is constrained by the level of correlation across experiments and general applicability. Although RNA preparation and array platform play important roles in data accuracy, pre-processing is a user-selected factor that has an enormous effect. Normalization of expression data is necessary, but the methods have specific and pronounced effects on precision, accuracy and historical correlation. As a case study, we present a microarray calibration process using normalization as the adjustable parameter. We examine the impact of eight normalizations across both Agilent and Affymetrix expression platforms on three expression readouts: (1) sensitivity and power, (2) functional/biological interpretation and (3) feature selection and classification error. The reader is encouraged to measure their own discordant data, whether cross-laboratory, cross-platform or across any other variance source, and to use their results to tune the adjustable parameters of their laboratory to ensure increased correlation.
机译:随着我们对结果的信心增加,微阵列基因表达数据变得更加有价值。随着微阵列被用于诊断和治疗患者,保证数据质量变得越来越重要(1-4)。 MAQC质量控制协会,FDA的关键路径计划,NCI的caBIG和其他机构正在实施将广泛提高数据质量的程序。随着GEO的持续增长,其有效性受到各个实验之间的相关性水平和通用性的限制。尽管RNA制备和阵列平台在数据准确性中起着重要作用,但是预处理是用户选择的因素,具有巨大的影响。表达数据的规范化是必要的,但是这些方法对准确性,准确性和历史相关性具有特定且明显的影响。作为案例研究,我们介绍了使用归一化为可调整参数的微阵列校准过程。我们研究了在安捷伦和Affymetrix表达平台上进行的八种归一化对三种表达读数的影响:(1)灵敏度和功效,(2)功能/生物学解释以及(3)特征选择和分类错误。鼓励读者测量自己的不一致数据,无论是跨实验室的,跨平台的还是跨任何其他方差源的,并使用其结果来调整实验室的可调参数以确保增加的相关性。

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  • 年度 2007
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  • 正文语种 {"code":"en","name":"English","id":9}
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