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Penalized discriminant methods for the classification of tumors from gene expression data.

机译:从基因表达数据分类肿瘤的惩罚性判别方法。

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摘要

Due to the advent of high-throughput microarray technology, it has become possible to develop molecular classification systems for various types of cancer. In this article, we propose a methodology using regularized regression models for the classification of tumors in microarray experiments. The performances of principal components, partial least squares, and ridge regression models are studied; these regression procedures are adapted to the classification setting using the optimal scoring algorithm. We also develop a procedure for ranking genes based on the fitted regression models. The proposed methodologies are applied to two microarray studies in cancer.
机译:由于高通量微阵列技术的出现,开发用于各种类型癌症的分子分类系统成为可能。在本文中,我们提出了使用正则回归模型对微阵列实验中的肿瘤进行分类的方法。研究了主成分,偏最小二乘和岭回归模型的性能;这些回归过程使用最佳评分算法适应分类设置。我们还开发了一种基于拟合回归模型对基因进行排名的程序。拟议的方法应用于癌症的两个微阵列研究。

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