Performance Evaluation of Deep Learning Models on Mammogram Classification Using Small Dataset

Author:

Adedigba Adeyinka P.ORCID,Adeshina Steve A.,Aibinu Abiodun M.

Abstract

Cancer is the second leading cause of death globally, and breast cancer (BC) is the second most reported cancer. Although the incidence rate is reducing in developed countries, the reverse is the case in low- and middle-income countries. Early detection has been found to contain cancer growth, prevent metastasis, ease treatment, and reduce mortality by 25%. The digital mammogram is one of the most common, cheapest, and most effective BC screening techniques capable of early detection of up to 90% BC incidence. However, the mammogram is one of the most difficult medical images to analyze. In this paper, we present a method of training a deep learning model for BC diagnosis. We developed a discriminative fine-tuning method which dynamically assigns different learning rates to each layer of the deep CNN. In addition, the model was trained using mixed-precision training to ease the computational demand of training deep learning models. Lastly, we present data augmentation methods for mammograms. The discriminative fine-tuning algorithm enables rapid convergence of the model loss; hence, the models were trained to attain their best performance within 50 epochs. Comparing the results, DenseNet achieved the highest accuracy of 0.998, while AlexNet obtained 0.988.

Publisher

MDPI AG

Subject

Bioengineering

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1. Deep learning for computer-aided abnormalities classification in digital mammogram: A data-centric perspective;Current Problems in Diagnostic Radiology;2024-01

2. How Artificial Intelligence Is Shaping Medical Imaging Technology: A Survey of Innovations and Applications;Bioengineering;2023-12-18

3. Improved Breast Cancer Detection in Mammography Images;Advances in Systems Analysis, Software Engineering, and High Performance Computing;2023-12-18

4. TR-BI-RADS: a novel dataset for BI-RADS based mammography classification;Neural Computing and Applications;2023-12-07

5. Mutually Guided Dendritic Neural Models;Communications in Computer and Information Science;2023-11-26

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