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Screening of mutations affecting protein stability and dynamics of FGFR1-A simulation analysis.

Abstract
Single amino acid substitutions in Fibroblast Growth Factor Receptor 1 (FGFR1) destabilize protein and have been implicated in several genetic disorders like various forms of cancer, Kallamann syndrome, Pfeiffer syndrome, Jackson Weiss syndrome, etc. In order to gain functional insight into mutation caused by amino acid substitution to protein function and expression, special emphasis was laid on molecular dynamics simulation techniques in combination with in silico tools such as SIFT, PolyPhen 2.0, I-Mutant 3.0 and SNAP. It has been estimated that 68% nsSNPs were predicted to be deleterious by I-Mutant, slightly higher than SIFT (37%), PolyPhen 2.0 (61%) and SNAP (58%). From the observed results, P722S mutation was found to be most deleterious by comparing results of all in silico tools. By molecular dynamics approach, we have shown that P722S mutation leads to increase in flexibility, and deviated more from the native structure which was supported by the decrease in the number of hydrogen bonds. In addition, biophysical analysis revealed a clear insight of stability loss due to P722S mutation in FGFR1 protein. Majority of mutations predicted by these in silico tools were in good concordance with the experimental results.
AuthorsC George Priya Doss, B Rajith, Nimisha Garwasis, Pretty Raju Mathew, Anand Solomon Raju, K Apoorva, Denise William, N R Sadhana, Tanwar Himani, I P Dike
JournalApplied & translational genomics (Appl Transl Genom) Vol. 1 Pg. 37-43 (Dec 01 2012) ISSN: 2212-0661 [Print] Netherlands
PMID27896051 (Publication Type: Journal Article)

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