Literature DB >> 35310177

Performance Analysis of Deep Learning Models for Binary Classification of Cancer Gene Expression Data.

Subhasree Majumder1, Vipin Pal1, Anju Yadav2, Amitabha Chakrabarty3.   

Abstract

The classification of patients as cancer and normal patients by applying the computational methods on their gene expression profiles is an extremely important task. Recently, deep learning models, mainly multilayer perceptron and convolutional neural networks, have gained popularity for being applied on this type of datasets. This paper aims to analyze the performance of deep learning models on different types of cancer gene expression datasets as no such consolidated work is available. For this purpose, three deep learning models along with two feature selection method and four cancer gene expression datasets have been considered. It has resulted in a total of 24 different combinations to be analyzed. Out of four datasets, two are imbalanced and two are balanced in terms of number of normal and cancer samples. Experimental results show that the deep learning models have performed well in terms of true positive rate, precision, F1-score, and accuracy.
Copyright © 2022 Subhasree Majumder et al.

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Year:  2022        PMID: 35310177      PMCID: PMC8926523          DOI: 10.1155/2022/1122536

Source DB:  PubMed          Journal:  J Healthc Eng        ISSN: 2040-2295            Impact factor:   2.682


  9 in total

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7.  A comparative study of different machine learning methods on microarray gene expression data.

Authors:  Mehdi Pirooznia; Jack Y Yang; Mary Qu Yang; Youping Deng
Journal:  BMC Genomics       Date:  2008       Impact factor: 3.969

8.  Convolutional neural network models for cancer type prediction based on gene expression.

Authors:  Milad Mostavi; Yu-Chiao Chiu; Yufei Huang; Yidong Chen
Journal:  BMC Med Genomics       Date:  2020-04-03       Impact factor: 3.063

  9 in total
  1 in total

1.  Deep learning approach for cancer subtype classification using high-dimensional gene expression data.

Authors:  Jiquan Shen; Jiawei Shi; Junwei Luo; Haixia Zhai; Xiaoyan Liu; Zhengjiang Wu; Chaokun Yan; Huimin Luo
Journal:  BMC Bioinformatics       Date:  2022-10-17       Impact factor: 3.307

  1 in total

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