Identifying Dominant Amino Acid Pairs of Known Protein-Protein Interactions via K-Means Clustering
© 2017 IEEE. Biological functions in all living cells are performed by protein-protein interactions since they form cells and control function mechanisms. Thus, identifying pairs of protein-protein interactions would be very useful, but it is not an easy task. But, doing a wet lab consumes huge amou...
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th-mahidol.456502019-08-23T17:57:48Z Identifying Dominant Amino Acid Pairs of Known Protein-Protein Interactions via K-Means Clustering Sudsanguan Ngamsuriyaroj Kittirat Thepsutum Mahidol University Computer Science © 2017 IEEE. Biological functions in all living cells are performed by protein-protein interactions since they form cells and control function mechanisms. Thus, identifying pairs of protein-protein interactions would be very useful, but it is not an easy task. But, doing a wet lab consumes huge amount of resources whereas using computational methods is highly challenging since they may introduce high false positives. Since a protein is a sequence of amino acids, a protein interaction would be influenced by some interactions of amino acids, and the identification of outstanding interacting pairs would give insightful meaning into how a pair of proteins interacts. This paper proposes a novel method to analyze a set of well-known protein-protein interactions for identifying a set of strong amino acid pairs that may influence the interaction. We calculate amino acid correlation values via Pearson's correlation, and use K-means clustering to group a set of outstanding amino acid pairs based on correlation values. The experimental results for 10 sets of protein interaction networks can identify a number of strong amino acid pairs among them. 2019-08-23T10:57:48Z 2019-08-23T10:57:48Z 2018-02-14 Conference Paper Proceedings - 2017 IEEE 19th Intl Conference on High Performance Computing and Communications, HPCC 2017, 2017 IEEE 15th Intl Conference on Smart City, SmartCity 2017 and 2017 IEEE 3rd Intl Conference on Data Science and Systems, DSS 2017. Vol.2018-January, (2018), 286-291 10.1109/HPCC-SmartCity-DSS.2017.37 2-s2.0-85047487395 https://repository.li.mahidol.ac.th/handle/123456789/45650 Mahidol University SCOPUS https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85047487395&origin=inward |
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Computer Science Sudsanguan Ngamsuriyaroj Kittirat Thepsutum Identifying Dominant Amino Acid Pairs of Known Protein-Protein Interactions via K-Means Clustering |
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© 2017 IEEE. Biological functions in all living cells are performed by protein-protein interactions since they form cells and control function mechanisms. Thus, identifying pairs of protein-protein interactions would be very useful, but it is not an easy task. But, doing a wet lab consumes huge amount of resources whereas using computational methods is highly challenging since they may introduce high false positives. Since a protein is a sequence of amino acids, a protein interaction would be influenced by some interactions of amino acids, and the identification of outstanding interacting pairs would give insightful meaning into how a pair of proteins interacts. This paper proposes a novel method to analyze a set of well-known protein-protein interactions for identifying a set of strong amino acid pairs that may influence the interaction. We calculate amino acid correlation values via Pearson's correlation, and use K-means clustering to group a set of outstanding amino acid pairs based on correlation values. The experimental results for 10 sets of protein interaction networks can identify a number of strong amino acid pairs among them. |
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Mahidol University |
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Mahidol University Sudsanguan Ngamsuriyaroj Kittirat Thepsutum |
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Conference or Workshop Item |
author |
Sudsanguan Ngamsuriyaroj Kittirat Thepsutum |
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Sudsanguan Ngamsuriyaroj |
title |
Identifying Dominant Amino Acid Pairs of Known Protein-Protein Interactions via K-Means Clustering |
title_short |
Identifying Dominant Amino Acid Pairs of Known Protein-Protein Interactions via K-Means Clustering |
title_full |
Identifying Dominant Amino Acid Pairs of Known Protein-Protein Interactions via K-Means Clustering |
title_fullStr |
Identifying Dominant Amino Acid Pairs of Known Protein-Protein Interactions via K-Means Clustering |
title_full_unstemmed |
Identifying Dominant Amino Acid Pairs of Known Protein-Protein Interactions via K-Means Clustering |
title_sort |
identifying dominant amino acid pairs of known protein-protein interactions via k-means clustering |
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2019 |
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https://repository.li.mahidol.ac.th/handle/123456789/45650 |
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1763495598159298560 |