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首页> 外文期刊>Journal of computational biology: A journal of computational molecular cell biology >A Regularized Method for Selecting Nested Groups of Relevant Genes from Microarray Data
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A Regularized Method for Selecting Nested Groups of Relevant Genes from Microarray Data

机译:从微阵列数据中选择相关基因嵌套组的正则化方法

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摘要

Gene expression analysis aims at identifying the genes able to accurately predict biological parameters like, for example, disease subtyping or progression. While accurate prediction can be achieved by means of many different techniques, gene identification, due to gene correlation and the limited number of available samples, is a much more elusive problem. Small changes in the expression values often produce different gene lists, and solutions which are both sparse and stable are difficult to obtain. We propose a two-stage regularization method able to learn linear models characterized by a high prediction performance. By varying a suitable parameter these linear models allow to trade sparsity for the inclusion of correlated genes and to produce gene lists which are almost perfectly nested. Experimental results on synthetic and microarray data confirm the interesting properties of the proposed method and its potential as a starting point for further biological investigations.
机译:基因表达分析旨在鉴定能够准确预测生物学参数(例如疾病亚型或进展)的基因。尽管可以通过许多不同的技术来实现准确的预测,但是由于基因相关性和可用样本数量的限制,基因鉴定是一个更加难以捉摸的问题。表达值的微小变化通常会产生不同的基因列表,并且很难获得既稀疏又稳定的溶液。我们提出了一种两阶段正则化方法,该方法能够学习具有较高预测性能的线性模型。通过改变合适的参数,这些线性模型允许稀疏性地交换相关基因的包含,并产生几乎完美嵌套的基因列表。合成和微阵列数据的实验结果证实了该方法的有趣特性,并有望作为进一步生物学研究的起点。

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