A Lightweight Hybrid Dilated Ghost Model-Based Approach for the Prognosis of Breast Cancer

Author:

Ramirez-Asis Edwin1ORCID,Bolivar Romel Percy Melgarejo2ORCID,Gonzales Leonid Alemán2ORCID,Chaudhury Sushovan3ORCID,Kashyap Ramgopal4,Alsanie Walaa F.56,Viju G. K.7ORCID

Affiliation:

1. Universidad Nacional Santiago Antunez de Mayolo, Huaraz, Peru

2. Faculty of Statistical Engineering and Computer Science, Computer Science Research Institute, National University of the Altiplano of Puno, P.O. Box 291, Puno, Peru

3. University of Engineering and Management, Kolkata, India

4. Amity University Chhattisgarh, Chhattisgarh, India

5. Department of Clinical Laboratory Sciences, The Faculty of Applied Medical Sciences, Taif University, Taif, Saudi Arabia

6. Centre of Biomedical Sciences Research (CBSR), Deanship of Scientific Research, Taif University, Taif, Saudi Arabia

7. Post Graduate Studies, University of Garden City, Khartoum, Sudan

Abstract

Most approaches use interactive priors to find tumours and then segment them based on tumour-centric candidates. A fully convolutional network is demonstrated for end-to-end breast tumour segmentation. When confronted with such a variety of options, to enhance tumour detection in digital mammograms, one uses multiscale picture information. Enhanced segmentation precision. The sampling of convolution layers are carefully chosen without adding parameters to prevent overfitting. The loss function is tuned to the tumor pixel fraction during training. Several studies have shown that the recommended method is effective. Tumour segmentation is automated for a variety of tumour sizes and forms postprocessing. Due to an increase in malignant cases, fundamental IoT malignant detection and family categorisation methodologies have been put to the test. In this paper, a novel malignant detection and family categorisation model based on the improved stochastic channel attention of convolutional neural networks (CNNs) is presented. The lightweight deep learning model complies with tougher execution, training, and energy limits in practice. The improved stochastic channel attention and DenseNet models are employed to identify malignant cells, followed by family classification. On our datasets, the proposed model detects malignant cells with 99.3 percent accuracy and family categorisation with 98.5 percent accuracy. The model can detect and classify malignancy.

Publisher

Hindawi Limited

Subject

General Mathematics,General Medicine,General Neuroscience,General Computer Science

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