A stacking ensemble deep learning approach to cancer type classification based on TCGA data

Abstract Cancer tumor classification based on morphological characteristics alone has been shown to have serious limitations. Breast, lung, colorectal, thyroid, and ovarian are the most commonly diagnosed cancers among women. Precise classification of cancers into their types is considered a vital p...

Full description

Bibliographic Details
Main Authors: Mohanad Mohammed, Henry Mwambi, Innocent B. Mboya, Murtada K. Elbashir, Bernard Omolo
Format: Article
Language:English
Published: Nature Publishing Group 2021-08-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-95128-x
id doaj-14921c74d88140be99f7c371288091d2
record_format Article
spelling doaj-14921c74d88140be99f7c371288091d22021-08-08T11:23:22ZengNature Publishing GroupScientific Reports2045-23222021-08-0111112210.1038/s41598-021-95128-xA stacking ensemble deep learning approach to cancer type classification based on TCGA dataMohanad Mohammed0Henry Mwambi1Innocent B. Mboya2Murtada K. Elbashir3Bernard Omolo4School of Mathematics, Statistics and Computer Science, University of KwaZulu-Natal, PietermaritzburgSchool of Mathematics, Statistics and Computer Science, University of KwaZulu-Natal, PietermaritzburgSchool of Mathematics, Statistics and Computer Science, University of KwaZulu-Natal, PietermaritzburgCollege of Computer and Information Sciences, Jouf UniversitySchool of Mathematics, Statistics and Computer Science, University of KwaZulu-Natal, PietermaritzburgAbstract Cancer tumor classification based on morphological characteristics alone has been shown to have serious limitations. Breast, lung, colorectal, thyroid, and ovarian are the most commonly diagnosed cancers among women. Precise classification of cancers into their types is considered a vital problem for cancer diagnosis and therapy. In this paper, we proposed a stacking ensemble deep learning model based on one-dimensional convolutional neural network (1D-CNN) to perform a multi-class classification on the five common cancers among women based on RNASeq data. The RNASeq gene expression data was downloaded from Pan-Cancer Atlas using GDCquery function of the TCGAbiolinks package in the R software. We used least absolute shrinkage and selection operator (LASSO) as feature selection method. We compared the results of the new proposed model with and without LASSO with the results of the single 1D-CNN and machine learning methods which include support vector machines with radial basis function, linear, and polynomial kernels; artificial neural networks; k-nearest neighbors; bagging trees. The results show that the proposed model with and without LASSO has a better performance compared to other classifiers. Also, the results show that the machine learning methods (SVM-R, SVM-L, SVM-P, ANN, KNN, and bagging trees) with under-sampling have better performance than with over-sampling techniques. This is supported by the statistical significance test of accuracy where the p-values for differences between the SVM-R and SVM-P, SVM-R and ANN, SVM-R and KNN are found to be p = 0.003, p =  < 0.001, and p =  < 0.001, respectively. Also, SVM-L had a significant difference compared to ANN p = 0.009. Moreover, SVM-P and ANN, SVM-P and KNN are found to be significantly different with p-values p =  < 0.001 and p =  < 0.001, respectively. In addition, ANN and bagging trees, ANN and KNN were found to be significantly different with p-values p =  < 0.001 and p = 0.004, respectively. Thus, the proposed model can help in the early detection and diagnosis of cancer in women, and hence aid in designing early treatment strategies to improve survival.https://doi.org/10.1038/s41598-021-95128-x
collection DOAJ
language English
format Article
sources DOAJ
author Mohanad Mohammed
Henry Mwambi
Innocent B. Mboya
Murtada K. Elbashir
Bernard Omolo
spellingShingle Mohanad Mohammed
Henry Mwambi
Innocent B. Mboya
Murtada K. Elbashir
Bernard Omolo
A stacking ensemble deep learning approach to cancer type classification based on TCGA data
Scientific Reports
author_facet Mohanad Mohammed
Henry Mwambi
Innocent B. Mboya
Murtada K. Elbashir
Bernard Omolo
author_sort Mohanad Mohammed
title A stacking ensemble deep learning approach to cancer type classification based on TCGA data
title_short A stacking ensemble deep learning approach to cancer type classification based on TCGA data
title_full A stacking ensemble deep learning approach to cancer type classification based on TCGA data
title_fullStr A stacking ensemble deep learning approach to cancer type classification based on TCGA data
title_full_unstemmed A stacking ensemble deep learning approach to cancer type classification based on TCGA data
title_sort stacking ensemble deep learning approach to cancer type classification based on tcga data
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-08-01
description Abstract Cancer tumor classification based on morphological characteristics alone has been shown to have serious limitations. Breast, lung, colorectal, thyroid, and ovarian are the most commonly diagnosed cancers among women. Precise classification of cancers into their types is considered a vital problem for cancer diagnosis and therapy. In this paper, we proposed a stacking ensemble deep learning model based on one-dimensional convolutional neural network (1D-CNN) to perform a multi-class classification on the five common cancers among women based on RNASeq data. The RNASeq gene expression data was downloaded from Pan-Cancer Atlas using GDCquery function of the TCGAbiolinks package in the R software. We used least absolute shrinkage and selection operator (LASSO) as feature selection method. We compared the results of the new proposed model with and without LASSO with the results of the single 1D-CNN and machine learning methods which include support vector machines with radial basis function, linear, and polynomial kernels; artificial neural networks; k-nearest neighbors; bagging trees. The results show that the proposed model with and without LASSO has a better performance compared to other classifiers. Also, the results show that the machine learning methods (SVM-R, SVM-L, SVM-P, ANN, KNN, and bagging trees) with under-sampling have better performance than with over-sampling techniques. This is supported by the statistical significance test of accuracy where the p-values for differences between the SVM-R and SVM-P, SVM-R and ANN, SVM-R and KNN are found to be p = 0.003, p =  < 0.001, and p =  < 0.001, respectively. Also, SVM-L had a significant difference compared to ANN p = 0.009. Moreover, SVM-P and ANN, SVM-P and KNN are found to be significantly different with p-values p =  < 0.001 and p =  < 0.001, respectively. In addition, ANN and bagging trees, ANN and KNN were found to be significantly different with p-values p =  < 0.001 and p = 0.004, respectively. Thus, the proposed model can help in the early detection and diagnosis of cancer in women, and hence aid in designing early treatment strategies to improve survival.
url https://doi.org/10.1038/s41598-021-95128-x
work_keys_str_mv AT mohanadmohammed astackingensembledeeplearningapproachtocancertypeclassificationbasedontcgadata
AT henrymwambi astackingensembledeeplearningapproachtocancertypeclassificationbasedontcgadata
AT innocentbmboya astackingensembledeeplearningapproachtocancertypeclassificationbasedontcgadata
AT murtadakelbashir astackingensembledeeplearningapproachtocancertypeclassificationbasedontcgadata
AT bernardomolo astackingensembledeeplearningapproachtocancertypeclassificationbasedontcgadata
AT mohanadmohammed stackingensembledeeplearningapproachtocancertypeclassificationbasedontcgadata
AT henrymwambi stackingensembledeeplearningapproachtocancertypeclassificationbasedontcgadata
AT innocentbmboya stackingensembledeeplearningapproachtocancertypeclassificationbasedontcgadata
AT murtadakelbashir stackingensembledeeplearningapproachtocancertypeclassificationbasedontcgadata
AT bernardomolo stackingensembledeeplearningapproachtocancertypeclassificationbasedontcgadata
_version_ 1721216024503648256