Open Access
6 June 2023 Breast cancer detection with upstream data fusion, machine learning, and automated registration: initial results
Lisa A. Mullen, William C. Walton, Michael P. Williams, Keith S. Peyton, David W. Porter
Author Affiliations +
Abstract

Purpose

To develop an artificial intelligence algorithm for the detection of breast cancer by combining upstream data fusion (UDF), machine learning (ML), and automated registration, using digital breast tomosynthesis (DBT) and breast ultrasound (US).

Approach

Our retrospective study included examinations from 875 women obtained between April 2013 and January 2019. Included patients had a DBT mammogram, breast US, and biopsy proven breast lesion. Images were annotated by a breast imaging radiologist. An AI algorithm was developed based on ML for image candidate detections and UDF for fused detections. After exclusions, images from 150 patients were evaluated. Ninety-five cases were used for training and validation of ML. Fifty-five cases were included in the UDF test set. UDF performance was evaluated with a free-response receiver operating characteristic (FROC) curve.

Results

Forty percent of cases evaluated with UDF (22/55) yielded true ML detections in all three images (craniocaudal DBT, mediolateral oblique DBT, and US). Of these, 20/22 (90.9%) produced a UDF fused detection that contained and classified the lesion correctly. FROC analysis for these cases showed 90% sensitivity at 0.3 false positives per case. In contrast, ML yielded an average of 8.0 false alarms per case.

Conclusions

An AI algorithm combining UDF, ML, and automated registration was developed and applied to test cases, showing that UDF can yield fused detections and decrease false alarms when applied to breast cancer detection. Improvement of ML detection is needed to realize the full benefit of UDF.

CC BY: © The Authors. Published by SPIE under a Creative Commons Attribution 4.0 International License. Distribution or reproduction of this work in whole or in part requires full attribution of the original publication, including its DOI.
Lisa A. Mullen, William C. Walton, Michael P. Williams, Keith S. Peyton, and David W. Porter "Breast cancer detection with upstream data fusion, machine learning, and automated registration: initial results," Journal of Medical Imaging 10(S2), S22409 (6 June 2023). https://doi.org/10.1117/1.JMI.10.S2.S22409
Received: 15 October 2022; Accepted: 19 May 2023; Published: 6 June 2023
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KEYWORDS
Cancer detection

Digital breast tomosynthesis

Data fusion

Breast cancer

Image fusion

Image registration

Education and training

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