Authors
Luciano G Martelotto, Charlotte KY Ng, Maria R De Filippo, Yan Zhang, Salvatore Piscuoglio, Raymond S Lim, Ronglai Shen, Larry Norton, Jorge S Reis-Filho, Britta Weigelt
Publication date
2014/10
Journal
Genome biology
Volume
15
Issue
10
Pages
484
Publisher
BioMed Central
Description
Background
Massively parallel sequencing studies have led to the identification of a large number of mutations present in a minority of cancers of a given site. Hence, methods to identify the likely pathogenic mutations that are worth exploring experimentally and clinically are required. We sought to compare the performance of 15 mutation effect prediction algorithms and their agreement. As a hypothesis-generating aim, we sought to define whether combinations of prediction algorithms would improve the functional effect predictions of specific mutations.
Results
Literature and database mining of single nucleotide variants (SNVs) affecting 15 cancer genes was performed to identify mutations supported by functional evidence or hereditary disease association to be classified either as non-neutral (n = 849) or neutral (n = 140) with respect to their impact on …
Total citations
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