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Optimizing risk-based breast cancer screening policies with reinforcement learning

Authors :
Thomas Kim
Constance D. Lehman
Siddharth Satuluru
Gigin Lin
Kevin S. Hughes
Adam Yala
Imon Banerjee
Judy Wawira Gichoya
Hari Trivedi
Regina Barzilay
Fredrik Strand
Peter G. Mikhael
Yung-Liang Wang
Source :
Nature Medicine. 28:136-143
Publication Year :
2022
Publisher :
Springer Science and Business Media LLC, 2022.

Abstract

Screening programs must balance the benefits of early detection against the costs of over screening. Achieving this goal relies on two complementary technologies: (1) the ability to assess patient risk, (2) the ability to develop personalized screening programs given that risk. While methodologies for assessing patient risk have significantly improved with new advances in deep learning applied to imaging and genetics, our ability to personalize screening policies still lags behind. Here, we introduce a novel reinforcement learning-based framework for personalized screening, Tempo, and demonstrate its efficacy in the context of breast cancer. We trained our risk-based screening policies on a large screening mammography dataset from Massachusetts General Hospital (MGH) USA and validated them on held-out patients from MGH, and on external datasets from Emory USA, Karolinska Sweden and Chang Gung Memorial Hospital (CGMH) Taiwan. Across all test sets, we found that a Tempo policy combined with an image-based AI risk model was significantly more efficient than current regimes used in clinical practice in terms of simulated early detection per screen frequency. Moreover, we showed that the same Tempo policy can be easily adapted to a wide range of possible screening preferences, allowing clinicians to select their desired early detection to screening cost trade-off without training a new policy. Finally, we demonstrated Tempo policies based on AI-based risk models out performed Tempo policies based on less accurate clinical risk models. Altogether, our results show that pairing AI-based risk models with agile AI-designed screening policies has the potential to improve screening programs, advancing early detection while reducing over-screening.

Details

ISSN :
1546170X and 10788956
Volume :
28
Database :
OpenAIRE
Journal :
Nature Medicine
Accession number :
edsair.doi.dedup.....39638b7298f60b1b976c54b648937b7e
Full Text :
https://doi.org/10.1038/s41591-021-01599-w