Environment International (May 2023)

Beyond the cancer slope factor: Broad application of Bayesian and probabilistic approaches for cancer dose-response assessment

  • Suji Jang,
  • Kan Shao,
  • Weihsueh A. Chiu

Journal volume & issue
Vol. 175
p. 107959

Abstract

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Traditional cancer slope factors derived from linear low-dose extrapolation give little consideration to uncertainties in dose–response model choice, interspecies extrapolation, and human variability. As noted previously by the National Academies, probabilistic methods can address these limitations, but have only been demonstrated in a few case studies. Here, we applied probabilistic approaches for Bayesian Model Averaging (BMA), interspecies extrapolation, and human variability distributions to 255 animal cancer bioassay datasets previously used by governmental agencies. We then derived predictions for both population cancer incidence and individual cancer risk. For model uncertainty, we found that lower confidence limits from BMA and from U.S. Environmental Protection Agency (EPA)’s Benchmark Dose Software (BMDS) correlated highly, with 86% differing by 10-fold less stringent. Probabilistic RSDs were also protective of individual risks of 10−4 in >99% of the population. We conclude that implementing Bayesian and probabilistic methods provides a more scientifically rigorous basis for cancer dose–response assessment and thereby improves overall cancer risk characterization.

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