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Quality Weighted Mean and T-test in Microarray Analysis Lead to Improved Accuracy in Gene Expression Measurements and Reduced Type I and II Errors in Differential Expression Detection

机译:微阵列分析中的质量加权均值和T检验可提高基因表达测量的准确性并减少差异表达检测中的I型和II型错误

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摘要

Previously we have reported a microarray image processing and data analysis package Matarray, where quality scores are defined for every spot that reflect the reliability and variability of the data acquired from each spot. In this article we present a new development in Matarray, where the quality scores are incorporated as weights in the statistical evaluation and data mining of microarray data. With this approach filtering of poor quality data is automatically achieved through the reduction in their weights, thereby eliminating the need to manually flag or remove bad data points, as well as the problem of missing values. More significantly, utilizing a set of control clones spiked in at known input ratios ranging from 1:30 to 30:1, we find that the quality-weighted statistics leads to more accurate gene expression measurements and more sensitive detection of their changes with significantly lower type II error rates. Further, we have applied the quality-weighted clustering to a time-course microarray data set, and find that the new algorithm improves grouping accuracy. In summary, incorporating quantitative quality measure of microarray data as weight in complex data analysis leads to improved reliability and convenience. In addition it provides a practical way to deal with the missing value issue in establishing automatic statistical tests.
机译:以前我们已经报道了微阵列图像处理和数据分析软件包Matarray,其中为每个斑点定义了质量得分,以反映从每个斑点采集的数据的可靠性和可变性。在本文中,我们介绍了Matarray的一项新进展,其中质量得分作为权重并入了微阵列数据的统计评估和数据挖掘中。使用这种方法,可以通过减少权重来自动过滤质量较差的数据,从而消除了手动标记或删除不良数据点的需要以及缺少值的问题。更重要的是,利用一组以已知输入比率从1:30到30:1掺入的对照克隆,我们发现质量加权统计数据可以更准确地检测基因表达,并以更低的检测灵敏度更准确地检测其变化II型错误率。此外,我们已将质量加权聚类应用于时间过程微阵列数据集,并发现新算法提高了分组准确性。总而言之,将微阵列数据的定量质量度量作为权重并入复杂数据分析中可以提高可靠性和便利性。另外,它提供了一种在建立自动统计测试中处理缺失值问题的实用方法。

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