A stochastic two-stage carcinogenesis model: A new approach to computing the probability of observing tumor in animal bioassays

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Publication:758076

DOI10.1016/0025-5564(91)90063-OzbMath0724.62104WikidataQ43861169 ScholiaQ43861169MaRDI QIDQ758076

Chao W. Chen, Grace L. Yang

Publication date: 1991

Published in: Mathematical Biosciences (Search for Journal in Brave)




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