Machine Learning Techniques and Analytics for Cloud Security. Группа авторов

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2016.

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      1 Email: [email protected]

      3

      Selection of Certain Cancer Mediating Genes Using a Hybrid Model Logistic Regression Supported by Principal Component Analysis (PC-LR)

       Subir Hazra*, Alia Nikhat Khurshid and Akriti

       Meghnad Saha Institute of Technology, Kolkata, India

       Abstract

      In recent times, gene selection whose mutation is associated with some cancers is a promising research area. An important tool to progress in this research work is analyzing microarray gene expression data. Literature survey shows that different algorithms based on Machine Learning have been found effective in cancer classification and gene selection. The selected genes play a significant role as a clinical decision-making support system. It becomes helpful in diagnosing cancer by identifying genes whose expression level changes significantly. As microarray gene expression data is huge in number, so developing gene selection algorithm through Machine Learning approach incurs high computational complexity. Too many features can cause of over fitting and gives poor performance for the algorithm. In the present article, we developed a hybrid approach where we reduced number of features using Principal Component Analysis (PCA) and then applied Logistic Regression model for prediction of genes. After fitting Logistic Regression on test data, it is compared with an accuracy score. By checking the accuracy score, finally, the set of candidate genes is selected whose expression levels are manifested disproportionately. The generated sets of genes are identified for having correlation with certain cancers. The proposed method is demonstrated with two datasets, viz., colon and lung cancer. The result has been finally validated biologically using NCBI database. The efficacy and robustness of the method have also been evaluated.

      Keywords: Gene expression, PCA, Logistic Regression, dimensionality reduction, accuracy score, classification, F-score

      3.1 Introduction

      Cancer classification with the help of analyzing microarray gene expression data is a conventional method nowadays. The biological relevance of genes substantially influences the accuracy of cancer classification. Thus, selection of genes plays a pivotal role and might be observed as main factor for classification of cancer on the basis of microarray data. The process of gene selection relates to the task of selecting a few significant genes that better characterizes the variations [5]. It is always effective to put focus some important genes which are obviously smaller in number and might differ in their expression levels from non-cancerous state to cancerous one. Thus, from the whole genome, only a few number of genes which are dominant should be identified by using effective gene selection method [6]. But extracting information from the vast amount of biological data and understanding the patterns is the most appealing task. This correlation is more pronounced when these genes are located on the same biological path. In this situation, the procedures traditionally used for feature selection often overlook the relationships between genes and select only a few the set of genes which are mostly linked. The irrelevant genes not only contribute to lower output of the classification but also bring additional difficulties in locating genes which are descriptive in nature [7].

      Analyze microarray data and selection of informative


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