Publication | Open Access
Predicting the Functional Impact of KCNQ1 Variants of Unknown Significance
47
Citations
33
References
2017
Year
Although a plethora of tools are available for making pathogenicity predictions over a genome-wide scale, previous tools fail to perform in a robust manner when applied to KCNQ1. The contrasting and favorable results for Q1VarPred suggest a promising approach, where a machine-learning algorithm is tailored to a specific protein target and trained with a functionally validated data set to calibrate informatics tools.
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