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Open AccessJournal ArticleDOI

Automatic Breast Mass Segmentation and Classification Using Subtraction of Temporally Sequential Digital Mammograms

- 01 Jan 2022 - 
- Vol. 10, pp 1-11
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TLDR
In this paper , subtraction of temporally sequential digital mammograms and machine learning are proposed for the automatic segmentation and classification of masses, and the performance of the algorithm was evaluated on a dataset created especially for the purposes of this study, with 320 images from 80 patients (two time points and two views of each breast) with precisely annotated mass locations.
Abstract
Objective: Cancer remains a major cause of morbidity and mortality globally, with 1 in 5 of all new cancers arising in the breast. The introduction of mammography for the radiological diagnosis of breast abnormalities, significantly decreased their mortality rates. Accurate detection and classification of breast masses in mammograms is especially challenging for various reasons, including low contrast and the normal variations of breast tissue density. Various Computer-Aided Diagnosis (CAD) systems are being developed to assist radiologists with the accurate classification of breast abnormalities. Methods: In this study, subtraction of temporally sequential digital mammograms and machine learning are proposed for the automatic segmentation and classification of masses. The performance of the algorithm was evaluated on a dataset created especially for the purposes of this study, with 320 images from 80 patients (two time points and two views of each breast) with precisely annotated mass locations by two radiologists. Results: Ninety-six features were extracted and ten classifiers were tested in a leave-one-patient-out and k-fold cross-validation process. Using Neural Networks, the detection of masses was 99.9% accurate. The classification accuracy of the masses as benign or suspicious increased from 92.6%, using the state-of-the-art temporal analysis, to 98%, using the proposed methodology. The improvement was statistically significant (p-value < 0.05). Conclusion: These results demonstrate the effectiveness of the subtraction of temporally consecutive mammograms for the diagnosis of breast masses.

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Citations
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Journal ArticleDOI

Computer-aided breast cancer detection and classification in mammography: A comprehensive review

TL;DR: In this paper , a comprehensive review of the recent literature on automatic detection and classification of breast cancer in mammograms, using both conventional feature-based machine learning and deep learning algorithms is presented.
Journal ArticleDOI

A Review of Computer-Aided Breast Cancer Diagnosis Using Sequential Mammograms

TL;DR: A review of the development of methods to emulate the radiological approach and perform automatic segmentation and/or classification of breast abnormalities using sequential mammogram pairs is provided in this paper .
Journal ArticleDOI

Expanding Horizons: The Realities of CAD, the Promise of Artificial Intelligence, and Machine Learning’s Role in Breast Imaging beyond Screening Mammography

Tara Retson, +1 more
- 21 Jun 2023 - 
TL;DR: In this paper , a comparison of prior studies and considerations of symmetry was performed to evaluate the suitability of the proposed algorithm for breast lesion detection in mammography, and the results showed that it can enhance risk assessment by combining conventional factors with imaging and improve lesion detect through a comparison with prior studies.
Journal ArticleDOI

Attention-Based Active Learning Framework for Segmentation of Breast Cancer in Mammograms

TL;DR: Zhang et al. as mentioned in this paper proposed an attention-based active learning framework for breast cancer segmentation in mammograms, which consists of a basic segmentation model, an attentionbased sampling scheme and an active learning strategy for labelling.
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