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A statistical framework for analyzing deep mutational scanning data

Authors :
Rubin, AF
Gelman, H
Lucas, N
Bajjalieh, SM
Papenfuss, AT
Speed, TP
Fowler, DM
Rubin, AF
Gelman, H
Lucas, N
Bajjalieh, SM
Papenfuss, AT
Speed, TP
Fowler, DM
Publication Year :
2017

Abstract

Deep mutational scanning is a widely used method for multiplex measurement of functional consequences of protein variants. We developed a new deep mutational scanning statistical model that generates error estimates for each measurement, capturing both sampling error and consistency between replicates. We apply our model to one novel and five published datasets comprising 243,732 variants and demonstrate its superiority in removing noisy variants and conducting hypothesis testing. Simulations show our model applies to scans based on cell growth or binding and handles common experimental errors. We implemented our model in Enrich2, software that can empower researchers analyzing deep mutational scanning data.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1315720891
Document Type :
Electronic Resource