ROTEIN-PROTEIN INTERACTION SITE PREDICTIONS WITH THREE-DIMENSIONAL PROBABILITY DISTRIBUTIONS OF INTERACTING ATOMS ON PROTEIN SURFACES
博士 === 國立交通大學 === 生物資訊及系統生物研究所 === 100 === Protein-protein interactions are key to many biological processes. Computational methodologies devised to predict protein-protein interaction (PPI) sites on protein surfaces are important tools in providing insights into the biological functions of proteins...
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ndltd-TW-100NCTU51121322016-03-28T04:20:37Z http://ndltd.ncl.edu.tw/handle/44015797716891053570 ROTEIN-PROTEIN INTERACTION SITE PREDICTIONS WITH THREE-DIMENSIONAL PROBABILITY DISTRIBUTIONS OF INTERACTING ATOMS ON PROTEIN SURFACES 使用蛋白質表面三度空間的交互作用原子機率分布以預測蛋白質-蛋白質交互作用區域 Chen, Ching-Tai 陳鯨太 博士 國立交通大學 生物資訊及系統生物研究所 100 Protein-protein interactions are key to many biological processes. Computational methodologies devised to predict protein-protein interaction (PPI) sites on protein surfaces are important tools in providing insights into the biological functions of proteins and in developing therapeutics targeting the protein-protein interaction sites. One of the general features of PPI sites is that the core regions from the two interacting protein surfaces are complementary to each other, similar to the interior of proteins in packing density and in the physicochemical nature of the amino acid composition. In this work, we simulated the physicochemical complementarities by constructing three-dimensional probability density maps of non-covalent interacting atoms on the protein surfaces. The interacting probabilities were derived from the interior of known structures. Machine learning algorithms were applied to learn the characteristic patterns of the probability density maps specific to the PPI sites. The trained predictors for PPI sites were cross-validated with the training cases (consisting of 432 proteins) and were tested on an independent dataset (consisting of 142 proteins). The residue-based Matthews correlation coefficient for the independent test set was 0.423; the accuracy, precision, sensitivity, specificity were 0.753, 0.519, 0.677, and 0.779 respectively. The benchmark results indicate that the optimized machine learning models are among the best predictors in identifying PPI sites on protein surfaces. In particular, the PPI site prediction accuracy increases with increasing size of the PPI site and with increasing hydrophobicity in amino acid composition of the PPI interface; the core interface regions are more likely to be recognized with high prediction confidence. The results indicate that the physicochemical complementarity patterns on protein surfaces are important determinants in PPIs, and a substantial portion of the PPI sites can be predicted correctly with the physicochemical complementarity features based on the non-covalent interaction data derived from protein interiors. Hsu, Wen-Lian Ho, Shinn-Ying 許聞廉 何信瑩 2012 學位論文 ; thesis 59 en_US |
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博士 === 國立交通大學 === 生物資訊及系統生物研究所 === 100 === Protein-protein interactions are key to many biological processes. Computational methodologies devised to predict protein-protein interaction (PPI) sites on protein surfaces are important tools in providing insights into the biological functions of proteins and in developing therapeutics targeting the protein-protein interaction sites. One of the general features of PPI sites is that the core regions from the two interacting protein surfaces are complementary to each other, similar to the interior of proteins in packing density and in the physicochemical nature of the amino acid composition. In this work, we simulated the physicochemical complementarities by constructing three-dimensional probability density maps of non-covalent interacting atoms on the protein surfaces. The interacting probabilities were derived from the interior of known structures. Machine learning algorithms were applied to learn the characteristic patterns of the probability density maps specific to the PPI sites. The trained predictors for PPI sites were cross-validated with the training cases (consisting of 432 proteins) and were tested on an independent dataset (consisting of 142 proteins). The residue-based Matthews correlation coefficient for the independent test set was 0.423; the accuracy, precision, sensitivity, specificity were 0.753, 0.519, 0.677, and 0.779 respectively. The benchmark results indicate that the optimized machine learning models are among the best predictors in identifying PPI sites on protein surfaces. In particular, the PPI site prediction accuracy increases with increasing size of the PPI site and with increasing hydrophobicity in amino acid composition of the PPI interface; the core interface regions are more likely to be recognized with high prediction confidence. The results indicate that the physicochemical complementarity patterns on protein surfaces are important determinants in PPIs, and a substantial portion of the PPI sites can be predicted correctly with the physicochemical complementarity features based on the non-covalent interaction data derived from protein interiors.
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author2 |
Hsu, Wen-Lian |
author_facet |
Hsu, Wen-Lian Chen, Ching-Tai 陳鯨太 |
author |
Chen, Ching-Tai 陳鯨太 |
spellingShingle |
Chen, Ching-Tai 陳鯨太 ROTEIN-PROTEIN INTERACTION SITE PREDICTIONS WITH THREE-DIMENSIONAL PROBABILITY DISTRIBUTIONS OF INTERACTING ATOMS ON PROTEIN SURFACES |
author_sort |
Chen, Ching-Tai |
title |
ROTEIN-PROTEIN INTERACTION SITE PREDICTIONS WITH THREE-DIMENSIONAL PROBABILITY DISTRIBUTIONS OF INTERACTING ATOMS ON PROTEIN SURFACES |
title_short |
ROTEIN-PROTEIN INTERACTION SITE PREDICTIONS WITH THREE-DIMENSIONAL PROBABILITY DISTRIBUTIONS OF INTERACTING ATOMS ON PROTEIN SURFACES |
title_full |
ROTEIN-PROTEIN INTERACTION SITE PREDICTIONS WITH THREE-DIMENSIONAL PROBABILITY DISTRIBUTIONS OF INTERACTING ATOMS ON PROTEIN SURFACES |
title_fullStr |
ROTEIN-PROTEIN INTERACTION SITE PREDICTIONS WITH THREE-DIMENSIONAL PROBABILITY DISTRIBUTIONS OF INTERACTING ATOMS ON PROTEIN SURFACES |
title_full_unstemmed |
ROTEIN-PROTEIN INTERACTION SITE PREDICTIONS WITH THREE-DIMENSIONAL PROBABILITY DISTRIBUTIONS OF INTERACTING ATOMS ON PROTEIN SURFACES |
title_sort |
rotein-protein interaction site predictions with three-dimensional probability distributions of interacting atoms on protein surfaces |
publishDate |
2012 |
url |
http://ndltd.ncl.edu.tw/handle/44015797716891053570 |
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