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Gene Network Modules-Based Liner Discriminant Analysis of Microarray Gene Expression Data

机译:基于基因网络模块的微阵列基因表达数据的线性判别分析

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Molecular predictor is a new tool for disease diagnosis, which uses gene expression to classify the diagnostic category of a patient. The statistical challenge for constructing such a predictor is that there are thousands of genes to predict for disease category, but only a small number of samples are available. Here we proposed a gene network modules-based linear discriminant analysis (MLDA) approach by integrating 'essential' correlation structure among genes into the predictor in order that the module or cluster structure of genes, which is related to diagnostic classes we look for, can have potential biological interpretation. We evaluated performance of the new method with other established classification methods using three real data sets. Our results show that the new approach has the advantage of computational simplicity and efficiency with lower classification error rates than the compared methods in most cases.
机译:分子预测器是一种用于疾病诊断的新工具,它使用基因表达来对患者的诊断类别进行分类。构建这样的预测因子的统计挑战是,有成千上万的基因可以预测疾病类别,但只有少量样本可用。在这里,我们提出了一种基于基因网络模块的线性判别分析(MLDA)方法,它将基因之间的“基本”相关结构整合到预测变量中,以便与我们寻找的诊断类别相关的基因模块或簇结构可以有潜在的生物学解释。我们使用三个真实数据集评估了新方法与其他已建立分类方法的性能。我们的结果表明,与大多数情况下相比,该新方法具有计算简单,效率高,分类错误率低的优点。

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