Researchers Use Deep Learning to Predict Breast Cancer Risk
Findings underscore artificial intelligence’s potential as second reader to reduce redundant imaging
Compared with commonly used clinical risk factors, deep learning does a better job distinguishing between the mammograms of women who will later develop breast cancer and those who will not, according to a new study in Radiology.
Mammograms not only help detect cancer but also provide a measure of breast cancer risk through measurements of breast density. While denser breasts on mammography are associated with a higher risk of cancer, there are other, yet unknown, factors hidden in the mammogram that likely contribute to risk.
“Conventional methods of breast cancer risk assessment using clinical risk factors haven’t been that effective,” said study lead author John A. Shepherd, PhD, professor and researcher in the Population Sciences in the Pacific Program (Epidemiology) at the University of Hawaii Cancer Center in Honolulu. “We thought that there was more in the image than just breast density that would be useful for assessing risk.”
Study Could Help Determine A Woman’s Individual Risk and Monitoring Needs
For the new study, Dr. Shepherd and colleagues used a data set of more than 25,000 digital screening mammograms from 6,369 women who participated in screening mammography. More than 1,600 of the women developed screening-detected breast cancer, and 351 developed interval invasive breast cancer.
The researchers trained the deep learning model to find signals in the mammogram that might be linked to increased cancer risk. When they tested the deep learning-based model, it underperformed in assessing the risk factors for interval cancer risk, but it outperformed clinical risk factors including breast density in determining screening-detected cancer risk.
“The results showed that the extra signal we’re getting with AI provides a better risk estimate for screening-detected cancer,” Dr. Shepherd said. “It helped us accomplish our goal of classifying women into low risk or high risk of screening-detected breast cancer.”
The findings have significant implications for clinical practices in which breast density alone guides many management decisions. Instead of being advised to return next year for another screening, women with a negative mammogram could be sorted by risk into one of three pathways: low risk of breast cancer, elevated screening-detected risk, or elevated interval invasive cancer in the next three years, the average follow-up time for the study.
“This would allow us to use a woman’s individual risk to determine how frequently she should be monitored,” Dr. Shepherd said. “Lower-risk women might not need to be monitored with mammography as often as those with a high risk of breast cancer.”
The deep learning model also has promise in supporting decisions about additional imaging with MRI and other modalities. Dr. Shepherd said that women in the high-risk deep learning group who also have dense breasts and are at a higher risk for interval cancers may benefit most from a monitoring strategy that includes supplemental imaging that retains sensitivity in dense breasts such as MRI, ultrasound and molecular imaging.
Along with other recent research, the new study supports a role for AI in combination with clinical risk factors in breast cancer risk assessment.
“By ranking mammograms in terms of the probability of seeing cancer in the image, AI is going to be a powerful second reading tool to help categorize mammograms,” Dr. Shepherd said.
The researchers are planning to replicate the study in Native Hawaiian and Pacific Islander women, two groups that have been underrepresented in breast cancer research. They also want to extend the work beyond cancer risk to look at the risk of different grades of breast cancer, from least to most aggressive.
For More Information
Read the accompanying editorial, “Breast Cancer Risk Prediction Using Deep Learning.”
Read previous RSNA News stories on mammography: