Deep Learning for Breast Cancer Classification: Enhanced Tangent
Function
- URL: http://arxiv.org/abs/2108.04663v1
- Date: Thu, 1 Jul 2021 08:36:27 GMT
- Title: Deep Learning for Breast Cancer Classification: Enhanced Tangent
Function
- Authors: Ashu Thapa, Abeer Alsadoon, P.W.C. Prasad, Simi Bajaj, Omar Hisham
Alsadoon, Tarik A. Rashid, Rasha S. Ali, Oday D. Jerew
- Abstract summary: Recently, deep learning using convolutional neural network has been used successfully to classify the images of breast cells accurately.
This research aims to increase the accuracy of the classification of breast cancer by utilizing a Patch-based Adaptive Deepal Neural Network (DCNN)
The proposed solution focused on increasing the accuracy classifying cancer by enhancing the image contrast and reducing the vanishing gradient.
- Score: 27.761266391596262
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Background and Aim: Recently, deep learning using convolutional neural
network has been used successfully to classify the images of breast cells
accurately. However, the accuracy of manual classification of those
histopathological images is comparatively low. This research aims to increase
the accuracy of the classification of breast cancer images by utilizing a
Patch-Based Classifier (PBC) along with deep learning architecture.
Methodology: The proposed system consists of a Deep Convolutional Neural
Network (DCNN) that helps in enhancing and increasing the accuracy of the
classification process. This is done by the use of the Patch-based Classifier
(PBC). CNN has completely different layers where images are first fed through
convolutional layers using hyperbolic tangent function together with the
max-pooling layer, drop out layers, and SoftMax function for classification.
Further, the output obtained is fed to a patch-based classifier that consists
of patch-wise classification output followed by majority voting. Results: The
results are obtained throughout the classification stage for breast cancer
images that are collected from breast-histology datasets. The proposed solution
improves the accuracy of classification whether or not the images had normal,
benign, in-situ, or invasive carcinoma from 87% to 94% with a decrease in
processing time from 0.45 s to 0.2s on average. Conclusion: The proposed
solution focused on increasing the accuracy of classifying cancer in the breast
by enhancing the image contrast and reducing the vanishing gradient. Finally,
this solution for the implementation of the Contrast Limited Adaptive Histogram
Equalization (CLAHE) technique and modified tangent function helps in
increasing the accuracy.
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