Multilevel models improve precision and speed of IC50 estimates

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Abstract

Aim: Experimental variation in dose-response data of drugs tested on cell lines result in inaccuracies in the estimate of a key drug sensitivity characteristic: the IC50. We aim to improve the precision of the half-limiting dose (IC50) estimates by simultaneously employing all dose-responses across all cell lines and drugs, rather than using a single drug-cell line response. Materials & methods: We propose a multilevel mixed effects model that takes advantage of all available dose-response data. Results: The new estimates are highly concordant with the currently used Bayesian model when the data are well behaved. Otherwise, the multilevel model is clearly superior. Conclusion: The multilevel model yields a significant reduction of extreme IC50 estimates, an increase in precision and it runs orders of magnitude faster.

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Vis, D. J., Bombardelli, L., Lightfoot, H., Iorio, F., Garnett, M. J., & Wessels, L. F. A. (2016). Multilevel models improve precision and speed of IC50 estimates. Pharmacogenomics, 17(7), 691–700. https://doi.org/10.2217/pgs.16.15

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