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I-TASSER QUARK LOMETS COACH COFACTOR MUSTER SEGMER FG-MD ModRefiner REMO SPRING COTH BSpred SVMSEQ ANGLOR BSP-SLIM SAXSTER ThreaDom EvoDesign GPCR-I-TASSER

TM-score TM-align MMalign NWalign EDTSurf MVP MVP-Fit SPICKER HAAD PSSpred

BioLiP E. coli GLASS GPCR-HGmod GPCR-RD GPCR-EXP TM-fold DECOYS POTENTIAL RW CASP7 CASP8 CASP9 CASP10 CASP11

BindProf is a method for predicting free energy changes (ΔΔG) of protein-protein binding interactions upon mutations of residues at the interface. BindProf adopts a multi-scale approach using a variety of features at different levels of structural resolution (Figure 1). Machine learning with sequence and structure based features is used to learn the correct weighting between terms using a regression tree classifier. A unique feature of BindProf is the inclusion of a structural profile score reflecting the likelihood of a given sequence being found in the ensemble of structurally similar protein-protein complexes. Since function follows structure more closely than sequence, the structural profile score more accurately reflects ΔΔG changes than sequence conservation. The final composite score has a Pearson correlation coefficient >0.8 between the predicted and observed binding free-energy changes upon mutation . This accuracy is comparable to, or outperforms in most cases, the current best methods, but does not require high-resolution full-atomic models of the mutant structures.



Figure 1: Flowchart of BindProf which combines three types of training features derviated from interface structure profile, physics-based potentials, and sequence-based profile.



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