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Several New Tools for Cancer Classification Combined with PLSDR Base on High-Dimensional Gene Expression Profile

机译:基于高维基因表达谱的结合PLSDR的几种癌症分类新工具

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It is known that Logistic Regression coupled with Partial Least Squares dimension reduction (PLSDR-LD) is capable of extracting a great deal of useful information for classification from gene expression profile and getting a rather high classification accuracy rate. In this study, we replace the logistic function of Logistic Regression with several functions which are similar to logistic function in appearance, and apply these functions to the analysis of microarray data sets from two cancer gene expression studies. We compare these newly introduced models with PLSDR-LD proposed in the literature. The most effective models with good prediction precision are lastly provided through analyzing the results of two experiments.
机译:已知Logistic回归与偏最小二乘降维(PLSDR-LD)能够从基因表达谱中提取大量有用的信息用于分类,并获得相当高的分类准确率。在这项研究中,我们将Logistic回归的logistic函数替换为与外观上的logistic函数相似的几个函数,并将这些函数应用于来自两个癌症基因表达研究的微阵列数据集的分析。我们将这些新引入的模型与文献中提出的PLSDR-LD进行比较。最后通过分析两个实验的结果,提供了具有良好预测精度的最有效模型。

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