Breast Tumors AI-Based Early Identification using Screening Mammography for Adult Women
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Date
2025
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Journal ISSN
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Publisher
Saudi Digital Library
Abstract
Early detection of breast cancer (BrC)
is one of the best strategies to
prevent the disease's spread. This makes an autonomous diagnosis system based
on deep learning (DL) attractive for improving the accuracy of detection and
prediction. This study suggests employing transfer DL models to categorize
BrC from mammograms. Furthermore, to identify BrC detection architectures,
transfer DL models are applied to various well-known convolutional neural
networks (CNNs). Three CNNs (NasNetMobile, EfficientNet-b0, and
MobileNetV2) are adjusted in particular ways before being used. All systems
use two types of optimizers: root mean square propagation (RMSP) and
adaptive moment estimation (ADAM). The EfficientNet-b0 network attains
96.45% accuracy, 96.63% sensitivity, and 97.18% F1-score when using the
ADAM optimizer.
The experimental results demonstrate that EfficientNet-b0 outperforms
other sophisticated CNN techniques and offers a number of advantages.
Additionally, EfficientNet-b0 obtained an F1-score of 96.00%, a sensitivity of
96.55%, and an accuracy of 95.04% utilizing the RMSprop optimizer. To sum
up, this work improves the identification of BrC for adult women by applying
transfer DL models to digital mammography scans. The best-performing CNN
among the three (NasNetMobile, EfficientNet-b0, and MobileNetV2) was
EfficientNet-b0 optimized with ADAM and RMSprop. These results show how
these structures could improve healthcare and increase the accuracy of BrC
detection.
Description
Breast Tumors AI-Based Early Identification using Screening
Mammography for Adult Women
Keywords
Breast Canser, AI, Deep Learning, Mammography
Citation
(formal bibliographic reference for the item (e.g., book, article, report) in the style using (IEEE,