Elephant search optimization combined with deep neural network for microarray data analysis
Even though there is a plethora of research in Microarray gene expression data analysis, still, it poses challenges for researchers to effectively and efficiently analyze the large yet complex expression of genes. The feature (gene) selection method is of paramount importance for understanding the d...
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doaj-b3cd52a2a42f4c9facf5209dc84741232020-11-25T03:27:52ZengElsevierJournal of King Saud University: Computer and Information Sciences1319-15782020-10-01328940948Elephant search optimization combined with deep neural network for microarray data analysisMrutyunjaya Panda0Department of Computer Science and Applications, Utkal University, Vani Vihar, Bhubaneswar, IndiaEven though there is a plethora of research in Microarray gene expression data analysis, still, it poses challenges for researchers to effectively and efficiently analyze the large yet complex expression of genes. The feature (gene) selection method is of paramount importance for understanding the differences in biological and non-biological variation between samples. In order to address this problem, Elephant search (ESA) based optimization is proposed to select best gene expressions from the large volume of microarray data. Firefly search (FFS) is also used to understand the effectiveness of the Elephant search method in feature selection process. Stochastic gradient descent based Deep Neural Network as Deep learning (DL) with softmax activation function is then used on the reduced features (genes) for better classification of different samples according to their gene expression levels. The experiments are carried out on ten most popular Cancer microarray gene selection datasets, obtained from UCI machine learning repository. The empirical results obtained by the proposed elephant search based deep learning approach are compared with the most recent published article for its suitability in future Bioinformatics research. Finally, Statistical significance test by one-way ANOVA with post hoc Tukey’s test is conducted to deduce a number of insights on the selection of the best classification model.http://www.sciencedirect.com/science/article/pii/S1319157817302112Gene expressionsElephant searchFirefly searchDeep learningClassification accuracyTukey HSD test |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mrutyunjaya Panda |
spellingShingle |
Mrutyunjaya Panda Elephant search optimization combined with deep neural network for microarray data analysis Journal of King Saud University: Computer and Information Sciences Gene expressions Elephant search Firefly search Deep learning Classification accuracy Tukey HSD test |
author_facet |
Mrutyunjaya Panda |
author_sort |
Mrutyunjaya Panda |
title |
Elephant search optimization combined with deep neural network for microarray data analysis |
title_short |
Elephant search optimization combined with deep neural network for microarray data analysis |
title_full |
Elephant search optimization combined with deep neural network for microarray data analysis |
title_fullStr |
Elephant search optimization combined with deep neural network for microarray data analysis |
title_full_unstemmed |
Elephant search optimization combined with deep neural network for microarray data analysis |
title_sort |
elephant search optimization combined with deep neural network for microarray data analysis |
publisher |
Elsevier |
series |
Journal of King Saud University: Computer and Information Sciences |
issn |
1319-1578 |
publishDate |
2020-10-01 |
description |
Even though there is a plethora of research in Microarray gene expression data analysis, still, it poses challenges for researchers to effectively and efficiently analyze the large yet complex expression of genes. The feature (gene) selection method is of paramount importance for understanding the differences in biological and non-biological variation between samples. In order to address this problem, Elephant search (ESA) based optimization is proposed to select best gene expressions from the large volume of microarray data. Firefly search (FFS) is also used to understand the effectiveness of the Elephant search method in feature selection process. Stochastic gradient descent based Deep Neural Network as Deep learning (DL) with softmax activation function is then used on the reduced features (genes) for better classification of different samples according to their gene expression levels. The experiments are carried out on ten most popular Cancer microarray gene selection datasets, obtained from UCI machine learning repository. The empirical results obtained by the proposed elephant search based deep learning approach are compared with the most recent published article for its suitability in future Bioinformatics research. Finally, Statistical significance test by one-way ANOVA with post hoc Tukey’s test is conducted to deduce a number of insights on the selection of the best classification model. |
topic |
Gene expressions Elephant search Firefly search Deep learning Classification accuracy Tukey HSD test |
url |
http://www.sciencedirect.com/science/article/pii/S1319157817302112 |
work_keys_str_mv |
AT mrutyunjayapanda elephantsearchoptimizationcombinedwithdeepneuralnetworkformicroarraydataanalysis |
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