Going beyond conventional mammographic density to discover novel mammogram-based predictors of breast cancer risk

John L. Hopper, Tuong L. Nguyen, Daniel F. Schmidt, Enes Makalic, Joohon Sung, Gillian S. Dite, James G. Dowty, Shuai Li, Yun Mi Song

Research output: Contribution to journalComment/debate

21 Scopus citations

Abstract

This commentary is about predicting a woman’s breast cancer risk from her mammogram, building on the work of Wolfe, Boyd and Yaffe on mammographic density. We summarise our efforts at finding new mammogram-based risk predictors, and how they combine with the conventional mammographic density, in predicting risk for interval cancers and screen-detected breast cancers across different ages at diagnosis and for both Caucasian and Asian women. Using the OPERA (odds ratio per adjusted standard deviation) concept, in which the risk gradient is measured on an appropriate scale that takes into account other factors adjusted for by design or analysis, we show that our new mammogram-based measures are the strongest of all currently known breast cancer risk factors in terms of risk discrimination on a population-basis. We summarise our findings graphically using a path diagram in which conventional mammographic density predicts interval cancer due to its role in masking, while the new mammogram-based risk measures could have a causal effect on both interval and screen-detected breast cancer. We discuss attempts by others to pursue this line of investigation, the measurement challenge that allows different measures to be compared in an open and transparent manner on the same datasets, as well as the biological and public health consequences.

Original languageEnglish
Article number627
JournalJournal of Clinical Medicine
Volume9
Issue number3
DOIs
StatePublished - Mar 2020
Externally publishedYes

Keywords

  • Breast cancer
  • Cirrocumulus
  • Cirrus
  • Cumulus
  • Mammogram-based risk
  • Mammographic density
  • OPERA

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