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Transformation of expression intensities across generations of Affymetrix microarrays using sequence matching and regression modeling

机译:使用序列匹配和回归建模跨代Affymetrix微阵列表达强度的转化

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摘要

The utility of previously generated microarray data is severely limited owing to small study size, leading to under-powered analysis, and failure of replication. Multiplicity of platforms and various sources of systematic noise limit the ability to compile existing data from similar studies. We present a model for transformation of data across different generations of Affymetrix arrays, developed using previously published datasets describing technical replicates performed with two generations of arrays. The transformation is based upon a probe set-specific regression model, generated from replicate measurements across platforms, performed using correlation coefficients. The model, when applied to the expression intensities of 5069 shared, sequence-matched probe sets in three different generations of Affymetrix Human oligonucleotide arrays, showed significant improvement in inter generation correlations between sample-wide means and individual probe set pairs. The approach was further validated by an observed reduction in Euclidean distance between signal intensities across generations for the predicted values. Finally, application of the model to independent, but related datasets resulted in improved clustering of samples based upon their biological, as opposed to technical, attributes. Our results suggest that this transformation method is a valuable tool for integrating microarray datasets from different generations of arrays.
机译:由于研究规模小,导致先前生成的微阵列数据的实用性受到严重限制,从而导致分析能力不足和复制失败。平台的多样性和系统噪声的各种来源限制了从类似研究中编译现有数据的能力。我们提供了一个模型,用于在不同世代的Affymetrix阵列之间进行数据转换,该模型是使用先前发布的数据集开发的,该数据集描述了用两代阵列执行的技术复制。该转换基于特定于探针集的回归模型,该模型是使用相关系数通过跨平台的重复测量生成的。该模型应用于三个不同世代的Affymetrix Human寡核苷酸阵列中5069个共享的,序列匹配的探针集的表达强度时,在样品范围内的平均值与单个探针集对之间的世代相关性方面显示出显着改善。对于预测值,各代信号强度之间观察到的欧几里德距离的减小进一步验证了该方法。最后,将该模型应用于独立但相关的数据集,可以根据样本的生物学属性(而非技术属性)改进样本的聚类。我们的结果表明,这种转化方法是整合来自不同世代阵列的微阵列数据集的有价值的工具。

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