A Bayesian approach to accurate and robust signature detection on LINCS L1000 data

Volume: 8
Published: Dec 31, 2020
Abstract
Motivation null LINCS L1000 dataset contains numerous cellular expression data induced by large sets of perturbagens. Although it provides invaluable resources for drug discovery as well as understanding of disease mechanisms, the existing peak deconvolution algorithms cannot recover the accurate expression level of genes in many cases, inducing severe noise in the dataset and limiting its applications in biomedical studies. null Results null...
Paper Details
Title
A Bayesian approach to accurate and robust signature detection on LINCS L1000 data
Published Date
Dec 31, 2020
Volume
8
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