Deep Vision for Breast Cancer Classification and Segmentation

Author:

Fulton LawrenceORCID,McLeod AlexORCID,Dolezel Diane,Bastian NathanielORCID,Fulton Christopher P.

Abstract

(1) Background: Female breast cancer diagnoses odds have increased from 11:1 in 1975 to 8:1 today. Mammography false positive rates (FPR) are associated with overdiagnoses and overtreatment, while false negative rates (FNR) increase morbidity and mortality. (2) Methods: Deep vision supervised learning classifies 299 × 299 pixel de-noised mammography images as negative or non-negative using models built on 55,890 pre-processed training images and applied to 15,364 unseen test images. A small image representation from the fitted training model is returned to evaluate the portion of the loss function gradient with respect to the image that maximizes the classification probability. This gradient is then re-mapped back to the original images, highlighting the areas of the original image that are most influential for classification (perhaps masses or boundary areas). (3) Results: initial classification results were 97% accurate, 99% specific, and 83% sensitive. Gradient techniques for unsupervised region of interest mapping identified areas most associated with the classification results clearly on positive mammograms and might be used to support clinician analysis. (4) Conclusions: deep vision techniques hold promise for addressing the overdiagnoses and treatment, underdiagnoses, and automated region of interest identification on mammography.

Funder

Texas State University

Publisher

MDPI AG

Subject

Cancer Research,Oncology

Reference39 articles.

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3. Breast Cancerhttps://www.who.int/news-room/fact-sheets/detail/breast-cancer

4. Breast Cancer Landscapehttps://cdmrp.army.mil/bcrp/pdfs/Breast%20Cancer%20Landscape2020.pdf

5. Cancer Incidence in the U.S. Military Population: Comparison with Rates from the SEER Program

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