Extended Iterative Nonlinear Regression Normalization for cDNA Gene Expression Data

Jianping Lu, Y. Wang
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引用次数: 1

Abstract

cDNA microarray expression data is widely used to help biomedical research. The data must be normalized because of various error functioned interferences existed. This paper has discussed the normalization for supervised multi-class (phenotype) data. All the classes are the type of multi-sample. Also, a reasonable hybrid cross-phenotype normalization (CPN) algorithm based on iterative nonlinear regression (INR) is proposed for this kind of array data set. As a part of this CPN algorithm, how to obtain a ldquobaselinerdquo from samples within a class by a statistical way and dynamic decision of reference/floating sample are discussed. Finally, experimental result is presented. The method in this paper has practical significance. Specifically, it can be used as a novel feature selection in gene pattern recognition.
cDNA基因表达数据的扩展迭代非线性回归归一化
cDNA微阵列表达数据广泛应用于生物医学研究。由于存在各种误差函数干扰,必须对数据进行归一化处理。本文讨论了有监督多类(表型)数据的归一化问题。所有的类都是多样本类型。针对这类阵列数据集,提出了一种基于迭代非线性回归(INR)的混合交叉表型归一化(CPN)算法。作为该CPN算法的一部分,讨论了如何通过统计方法从类内样本中获得最小基准值,以及参考/浮动样本的动态决策。最后给出了实验结果。本文的方法具有实际意义。具体来说,它可以作为一种新的特征选择方法用于基因模式识别。
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