Effects of vitamin D supplementation on a deep learning–based mammographic evaluation in SWOG S0812

Author:

McGuinness Julia E1ORCID,Anderson Garnet L23,Mutasa Simukayi4,Hershman Dawn L1,Terry Mary Beth1,Tehranifar Parisa1,Lew Danika L3,Yee Monica3,Brown Eric A5,Kairouz Sebastien S6,Kuwajerwala Nafisa5,Bevers Therese B7,Doster John E8,Zarwan Corrine9,Kruper Laura10,Minasian Lori M11ORCID,Ford Leslie11,Arun Banu7,Neuhouser Marian L2ORCID,Goodman Gary E12,Brown Powel H7,Ha Richard1,Crew Katherine D1

Affiliation:

1. Department of Medicine, Columbia University Irving Medical Center and the Herbert Irving Comprehensive Cancer Center , New York, NY, USA

2. Public Health Sciences Division, Fred Hutchinson Cancer Center , Seattle, WA, USA

3. SWOG Cancer Research Network, Statistics and Data Management Center , Seattle, WA, USA

4. Department of Radiology, Lenox Hill Hospital , New York, NY, USA

5. William Beaumont Hospital, Beaumont National Cancer Institute Community Oncology Research Program , Troy, MI, USA

6. Cancer Care Specialists of Central Illinois, Heartland National Cancer Institute Community Oncology Research Program , Decatur, IL, USA

7. Department of Clinical Cancer Prevention, MD Anderson Cancer Center , Houston, TX, USA

8. Anderson Area Cancer Center, Southeast Clinical Oncology Research Consortium National Cancer Institute Community Oncology Research Program , Anderson, SC, USA

9. Lahey Hospital and Medical Center , Burlington, MA, USA

10. Department of Breast Oncology, City of Hope Medical Center , Duarte, CA, USA

11. Division of Cancer Prevention, National Cancer Institute , Bethesda, MD, USA

12. Swedish Cancer Institute, Pacific Cancer Research Consortium National Cancer Institute Community Oncology Research Program , Seattle, WA, USA

Abstract

Abstract Deep learning–based mammographic evaluations could noninvasively assess response to breast cancer chemoprevention. We evaluated change in a convolutional neural network–based breast cancer risk model applied to mammograms among women enrolled in SWOG S0812, which randomly assigned 208 premenopausal high-risk women to receive oral vitamin D3 20 000 IU weekly or placebo for 12 months. We applied the convolutional neural network model to mammograms collected at baseline (n = 109), 12 months (n = 97), and 24 months (n = 67) and compared changes in convolutional neural network-based risk score between treatment groups. Change in convolutional neural network-based risk score was not statistically significantly different between vitamin D and placebo groups at 12 months (0.005 vs 0.002, P = .875) or at 24 months (0.020 vs 0.001, P = .563). The findings are consistent with the primary analysis of S0812, which did not demonstrate statistically significant changes in mammographic density with vitamin D supplementation compared with placebo. There is an ongoing need to evaluate biomarkers of response to novel breast cancer chemopreventive agents.

Funder

National Institutes of Health

National Cancer Institute

Publisher

Oxford University Press (OUP)

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