A Combined PCA-MLP Network for Early Breast Cancer Detection
- URL: http://arxiv.org/abs/2206.09128v1
- Date: Sat, 18 Jun 2022 06:17:40 GMT
- Title: A Combined PCA-MLP Network for Early Breast Cancer Detection
- Authors: Md. Wahiduzzaman Khan Arnob, Arunima Dey Pooja and Md. Saif Hassan
Onim
- Abstract summary: We have studied different machine learning algorithms to detect whether a patient is likely to face breast cancer or not.
Our 4 layers-PCA network has obtained the best accuracy of 100% with a mean of 90.48% on the BCCD dataset.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Breast cancer is the second most responsible for all cancer types and has
been the cause of numerous deaths over the years, especially among women. Any
improvisation of the existing diagnosis system for the detection of cancer can
contribute to minimizing the death ratio. Moreover, cancer detection at an
early stage has recently been a prime research area in the scientific community
to enhance the survival rate. Proper choice of machine learning tools can
ensure early-stage prognosis with high accuracy. In this paper, we have studied
different machine learning algorithms to detect whether a patient is likely to
face breast cancer or not. Due to the implicit behavior of early-stage
features, we have implemented a multilayer perception model with the
integration of PCA and suggested it to be more viable than other detection
algorithms. Our 4 layers MLP-PCA network has obtained the best accuracy of 100%
with a mean of 90.48% accuracy on the BCCD dataset.
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