Journal article

A permutational-splitting sample procedure to quantify expert opinion on clusters of chemical compounds using high-dimensional data

E Milanzi, A Alonso, C Buyck, G Molenberghs

Annals of Applied Statistics | INST MATHEMATICAL STATISTICS-IMS | Published : 2014

Abstract

Expert opinion plays an important role when selecting promising clusters of chemical compounds in the drug discovery process. We propose a method to quantify these qualitative assessments using hierarchical models. However, with the most commonly available computing resources, the high dimensionality of the vectors of fixed effects and correlated responses renders maximum likelihood unfeasible in this scenario. We devise a reliable procedure to tackle this problem and show, using theoretical arguments and simulations, that the new methodology compares favorably with maximum likelihood, when the latter option is available. The approach was motivated by a case study, which we present and analy..

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University of Melbourne Researchers

Grants

Funding Acknowledgements

For the computations, simulations and data processing, we used the infrastructure of the VSC Flemish Supercomputer Center, funded by the Hercules Foundation and the Flemish Government department EWI.