Breast Cancer Pathological Image Classification Based on the Multiscale CNN Squeeze Model

Author:

Alqahtani Yahya1ORCID,Mandawkar Umakant2ORCID,Sharma Aditi3ORCID,Hasan Mohammad Najmus Saquib4ORCID,Kulkarni Mrunalini Harish5ORCID,Sugumar R.6ORCID

Affiliation:

1. Faculty of Computer Science and Information Technology, Jazan University, Jizan, Saudi Arabia

2. SVKM’S Institute of Technology, Dhule, India

3. Department of Computer Science Engineering & Information Technology, Institute of Engineering & Technology (An Autonomous Constituent Institute of Dr. A.P.J. Abdul Kalam Technical University), UP, Lucknow, India

4. Wollega University, Nek’emtē, Ethiopia

5. Department of Pharmacy, School of Pharmacy, Vishwakarma University, Pune, India

6. Department of Computer Science and Engineering, Saveetha School of Engineering, Saveetha Institute of Medical and Technical Sciences, Chennai 602105, India

Abstract

The use of an automatic histopathological image identification system is essential for expediting diagnoses and lowering mistake rates. Although it is of enormous clinical importance, computerized breast cancer multiclassification using histological pictures has rarely been investigated. A deep learning-based classification strategy is suggested to solve the challenge of automated categorization of breast cancer pathology pictures. The attention model that acts on the feature channel is the channel refinement model. The learned channel weight may be used to reduce superfluous features when implementing the feature channel. To increase classification accuracy, calibration is necessary. To increase the accuracy of channel recalibration findings, a multiscale channel recalibration model is provided, and the msSE-ResNet convolutional neural network is built. The multiscale properties flow through the network’s highest pooling layer. The channel weights obtained at different scales are delivered into line fusion and used as input to the next channel recalibration model, which may improve the results of channel recalibration. The experimental findings reveal that the spatial recalibration model fares poorly on the job of classifying breast cancer pathology pictures when applied to the semantic segmentation of brain MRI images. The public BreakHis dataset is used to conduct the experiment. The network performs benign/malignant breast pathology picture classification collected at various magnifications with a classification accuracy of 88.87 percent, according to experimental data. The diseased images are also more resilient. Experiments on pathological pictures at various magnifications show that msSE-ResNet34 is capable of performing well when used to classify pathological images at various magnifications.

Publisher

Hindawi Limited

Subject

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

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