InstaPrism: an R package for fast implementation of BayesPrism

Author:

Hu Mengying12ORCID,Chikina Maria12

Affiliation:

1. Department of Computational and Systems Biology, University of Pittsburgh , Pittsburgh, 15260, United States

2. Joint Carnegie Mellon - University of Pittsburgh Computational Biology PhD Program, University of Pittsburgh , Pittsburgh, 15260, United States

Abstract

Abstract Summary Computational cell-type deconvolution is an important analytic technique for modeling the compositional heterogeneity of bulk gene expression data. A conceptually new Bayesian approach to this problem, BayesPrism, has recently been proposed and has subsequently been shown to be superior in accuracy and robustness against model misspecifications by independent studies; however, given that BayesPrism relies on Gibbs sampling, it is orders of magnitude more computationally expensive than standard approaches. Here, we introduce the InstaPrism package which re-implements BayesPrism in a derandomized framework by replacing the time-consuming Gibbs sampling step with a fixed-point algorithm. We demonstrate that the new algorithm is effectively equivalent to BayesPrism while providing a considerable speed and memory advantage. Furthermore, the InstaPrism package is equipped with a precompiled, curated set of references tailored for a variety of cancer types, streamlining the deconvolution process. Availability and implementation The package InstaPrism is freely available at: https://github.com/humengying0907/InstaPrism. The source code and evaluation pipeline used in this paper can be found at: https://github.com/humengying0907/InstaPrismSourceCode.

Funder

NSF

Publisher

Oxford University Press (OUP)

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