Deep learning approach for microarray cancer data classification
Analysis of microarray data is a highly challenging problem due to the inherent complexity in the nature of the data associated with higher dimensionality, smaller sample size, imbalanced number of classes, noisy data-structure, and higher variance of feature values. This has led to lesser classific...
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doaj-83b43e0727724499a0630d749162e9b52021-04-02T11:15:15ZengWileyCAAI Transactions on Intelligence Technology2468-23222019-12-0110.1049/trit.2019.0028TRIT.2019.0028Deep learning approach for microarray cancer data classificationHema Shekar Basavegowda0Guesh Dagnew1Mangalore UniversityMangalore UniversityAnalysis of microarray data is a highly challenging problem due to the inherent complexity in the nature of the data associated with higher dimensionality, smaller sample size, imbalanced number of classes, noisy data-structure, and higher variance of feature values. This has led to lesser classification accuracy and over-fitting problem. In this work, the authors aimed to develop a deep feedforward method to classify the given microarray cancer data into a set of classes for subsequent diagnosis purposes. They have used a 7-layer deep neural network architecture having various parameters for each dataset. The small sample size and dimensionality problems are addressed by considering a well-known dimensionality reduction technique namely principal component analysis. The feature values are scaled using the Min–Max approach and the proposed approach is validated on eight standard microarray cancer datasets. To measure the loss, a binary cross-entropy is used and adaptive moment estimation is considered for optimisation. The performance of the proposed approach is evaluated using classification accuracy, precision, recall, f-measure, log-loss, receiver operating characteristic curve, and confusion matrix. A comparative analysis with state-of-the-art methods is carried out and the performance of the proposed approach exhibit better performance than many of the existing methods.https://digital-library.theiet.org/content/journals/10.1049/trit.2019.0028pattern classificationentropybiology computingcancerlearning (artificial intelligence)principal component analysisneural net architectureminimax techniquesfeature extractionlab-on-a-chipdeep learning approachmicroarray cancer data classificationfeature valuesdeep feedforward method7-layer deep neural network architectureprincipal component analysismin–max approachbinary cross-entropyadaptive moment estimationdimensionality reduction technique |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Hema Shekar Basavegowda Guesh Dagnew |
spellingShingle |
Hema Shekar Basavegowda Guesh Dagnew Deep learning approach for microarray cancer data classification CAAI Transactions on Intelligence Technology pattern classification entropy biology computing cancer learning (artificial intelligence) principal component analysis neural net architecture minimax techniques feature extraction lab-on-a-chip deep learning approach microarray cancer data classification feature values deep feedforward method 7-layer deep neural network architecture principal component analysis min–max approach binary cross-entropy adaptive moment estimation dimensionality reduction technique |
author_facet |
Hema Shekar Basavegowda Guesh Dagnew |
author_sort |
Hema Shekar Basavegowda |
title |
Deep learning approach for microarray cancer data classification |
title_short |
Deep learning approach for microarray cancer data classification |
title_full |
Deep learning approach for microarray cancer data classification |
title_fullStr |
Deep learning approach for microarray cancer data classification |
title_full_unstemmed |
Deep learning approach for microarray cancer data classification |
title_sort |
deep learning approach for microarray cancer data classification |
publisher |
Wiley |
series |
CAAI Transactions on Intelligence Technology |
issn |
2468-2322 |
publishDate |
2019-12-01 |
description |
Analysis of microarray data is a highly challenging problem due to the inherent complexity in the nature of the data associated with higher dimensionality, smaller sample size, imbalanced number of classes, noisy data-structure, and higher variance of feature values. This has led to lesser classification accuracy and over-fitting problem. In this work, the authors aimed to develop a deep feedforward method to classify the given microarray cancer data into a set of classes for subsequent diagnosis purposes. They have used a 7-layer deep neural network architecture having various parameters for each dataset. The small sample size and dimensionality problems are addressed by considering a well-known dimensionality reduction technique namely principal component analysis. The feature values are scaled using the Min–Max approach and the proposed approach is validated on eight standard microarray cancer datasets. To measure the loss, a binary cross-entropy is used and adaptive moment estimation is considered for optimisation. The performance of the proposed approach is evaluated using classification accuracy, precision, recall, f-measure, log-loss, receiver operating characteristic curve, and confusion matrix. A comparative analysis with state-of-the-art methods is carried out and the performance of the proposed approach exhibit better performance than many of the existing methods. |
topic |
pattern classification entropy biology computing cancer learning (artificial intelligence) principal component analysis neural net architecture minimax techniques feature extraction lab-on-a-chip deep learning approach microarray cancer data classification feature values deep feedforward method 7-layer deep neural network architecture principal component analysis min–max approach binary cross-entropy adaptive moment estimation dimensionality reduction technique |
url |
https://digital-library.theiet.org/content/journals/10.1049/trit.2019.0028 |
work_keys_str_mv |
AT hemashekarbasavegowda deeplearningapproachformicroarraycancerdataclassification AT gueshdagnew deeplearningapproachformicroarraycancerdataclassification |
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1724165358678441984 |