Integrating deep mutational scanning and low-throughput mutagenesis data to predict the impact of amino acid variants
Journal Title
Gigascience
Abstract
BACKGROUND: Evaluating the impact of amino acid variants has been a critical challenge for studying protein function and interpreting genomic data. High-throughput experimental methods like deep mutational scanning (DMS) can measure the effect of large numbers of variants in a target protein, but because DMS studies have not been performed on all proteins, researchers also model DMS data computationally to estimate variant impacts by predictors. RESULTS: In this study, we extended a linear regression-based predictor to explore whether incorporating data from alanine scanning (AS), a widely used low-throughput mutagenesis method, would improve prediction results. To evaluate our model, we collected 146 AS datasets, mapping to 54 DMS datasets across 22 distinct proteins. CONCLUSIONS: We show that improved model performance depends on the compatibility of the DMS and AS assays, and the scale of improvement is closely related to the correlation between DMS and AS results.
Publisher
Oxford Academic
Keywords
*Amino Acids/genetics; Mutation; Mutagenesis; *Genomics; Linear Models; alanine scanning; deep mutational scanning; machine learning; predictor
Research Division(s)
Bioinformatics
PubMed ID
37721410
Open Access at Publisher's Site
https://doi.org/10.1093/gigascience/giad073
Terms of Use/Rights Notice
Refer to copyright notice on published article.


Creation Date: 2023-09-21 11:41:13
Last Modified: 2023-09-21 11:59:36
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