2018
DOI: 10.1002/prot.25630
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iSEE: Interface structure, evolution, and energy‐based machine learning predictor of binding affinity changes upon mutations

Abstract: Quantitative evaluation of binding affinity changes upon mutations is crucial for protein engineering and drug design. Machine learning‐based methods are gaining increasing momentum in this field. Due to the limited number of experimental data, using a small number of sensitive predictive features is vital to the generalization and robustness of such machine learning methods. Here we introduce a fast and reliable predictor of binding affinity changes upon single point mutation, based on a random forest approac… Show more

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Cited by 69 publications
(81 citation statements)
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“…First, we used the MDM2-p53 blind datasets presented in Table S8 in the supplementary information of reference [48]. The dataset consists of 33 mutations among which 7 exceeded the experimental detection limit and were removed.…”
Section: Performance Comparison On Blind Tests On Set Of Data Not Usementioning
confidence: 99%
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“…First, we used the MDM2-p53 blind datasets presented in Table S8 in the supplementary information of reference [48]. The dataset consists of 33 mutations among which 7 exceeded the experimental detection limit and were removed.…”
Section: Performance Comparison On Blind Tests On Set Of Data Not Usementioning
confidence: 99%
“…We compared PCC of experimental and predicted ΔΔG for available methods. The methods considered for comparison here are iSee [48], mcSM [33], BindProfX [47], FoldX [41], mCSM-PPI2 [49] and MutaBind2 [50]. The PCC values for this dataset using iSee, mCSM, BindProfX and FoldX are taken from Geng et al's paper [48].…”
Section: Performance Comparison On Blind Tests On Set Of Data Not Usementioning
confidence: 99%
See 3 more Smart Citations