- McGuinness, Julia;
- Anderson, Garnet;
- Mutasa, Simukayi;
- Hershman, Dawn;
- Terry, Mary;
- Tehranifar, Parisa;
- Lew, Danika;
- Yee, Monica;
- Brown, Eric;
- Kairouz, Sebastien;
- Kuwajerwala, Nafisa;
- Bevers, Therese;
- Doster, John;
- Zarwan, Corrine;
- Kruper, Laura;
- Minasian, Lori;
- Ford, Leslie;
- Arun, Banu;
- Neuhouser, Marian;
- Goodman, Gary;
- Brown, Patrick;
- Ha, Richard;
- Crew, Katherine
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.