Machine learning on protein-protein interaction prediction: models, challenges and trends
Protein-protein interactions (PPIs) carry out the cellular processes of all living organisms. Experimental methods for PPI detection suffer from high cost and false-positive rate, hence efficient computational methods are highly desirable for facilitating PPI detection. In recent years, benefiting f...
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sg-ntu-dr.10356-1703162023-09-07T00:51:35Z Machine learning on protein-protein interaction prediction: models, challenges and trends Tang, Tao Zhang, Xiaocai Liu, Yuansheng Peng, Hui Zheng, Binshuang Yin, Yanlin Zeng, Xiangxiang School of Biological Sciences Science::Biological sciences Protein–protein Interaction Machine Learning Protein-protein interactions (PPIs) carry out the cellular processes of all living organisms. Experimental methods for PPI detection suffer from high cost and false-positive rate, hence efficient computational methods are highly desirable for facilitating PPI detection. In recent years, benefiting from the enormous amount of protein data produced by advanced high-throughput technologies, machine learning models have been well developed in the field of PPI prediction. In this paper, we present a comprehensive survey of the recently proposed machine learning-based prediction methods. The machine learning models applied in these methods and details of protein data representation are also outlined. To understand the potential improvements in PPI prediction, we discuss the trend in the development of machine learning-based methods. Finally, we highlight potential directions in PPI prediction, such as the use of computationally predicted protein structures to extend the data source for machine learning models. This review is supposed to serve as a companion for further improvements in this field. National Natural Science Foundation of China (Grant Nos 62102140, 62202236, 62122025 and U22A2037); the Science and Technology Innovation Program of Hunan Province (2022RC1100) and Hunan Provincial Natural Science Foundation of China (2021JJ10020). 2023-09-07T00:51:35Z 2023-09-07T00:51:35Z 2023 Journal Article Tang, T., Zhang, X., Liu, Y., Peng, H., Zheng, B., Yin, Y. & Zeng, X. (2023). Machine learning on protein-protein interaction prediction: models, challenges and trends. Briefings in Bioinformatics, 24(2), bbad076-. https://dx.doi.org/10.1093/bib/bbad076 1467-5463 https://hdl.handle.net/10356/170316 10.1093/bib/bbad076 36880207 2-s2.0-85150666310 2 24 bbad076 en Briefings in Bioinformatics © 2023 The Author(s). Published by Oxford University Press. All rights reserved. |
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Science::Biological sciences Protein–protein Interaction Machine Learning Tang, Tao Zhang, Xiaocai Liu, Yuansheng Peng, Hui Zheng, Binshuang Yin, Yanlin Zeng, Xiangxiang Machine learning on protein-protein interaction prediction: models, challenges and trends |
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Protein-protein interactions (PPIs) carry out the cellular processes of all living organisms. Experimental methods for PPI detection suffer from high cost and false-positive rate, hence efficient computational methods are highly desirable for facilitating PPI detection. In recent years, benefiting from the enormous amount of protein data produced by advanced high-throughput technologies, machine learning models have been well developed in the field of PPI prediction. In this paper, we present a comprehensive survey of the recently proposed machine learning-based prediction methods. The machine learning models applied in these methods and details of protein data representation are also outlined. To understand the potential improvements in PPI prediction, we discuss the trend in the development of machine learning-based methods. Finally, we highlight potential directions in PPI prediction, such as the use of computationally predicted protein structures to extend the data source for machine learning models. This review is supposed to serve as a companion for further improvements in this field. |
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School of Biological Sciences |
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School of Biological Sciences Tang, Tao Zhang, Xiaocai Liu, Yuansheng Peng, Hui Zheng, Binshuang Yin, Yanlin Zeng, Xiangxiang |
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Article |
author |
Tang, Tao Zhang, Xiaocai Liu, Yuansheng Peng, Hui Zheng, Binshuang Yin, Yanlin Zeng, Xiangxiang |
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Tang, Tao |
title |
Machine learning on protein-protein interaction prediction: models, challenges and trends |
title_short |
Machine learning on protein-protein interaction prediction: models, challenges and trends |
title_full |
Machine learning on protein-protein interaction prediction: models, challenges and trends |
title_fullStr |
Machine learning on protein-protein interaction prediction: models, challenges and trends |
title_full_unstemmed |
Machine learning on protein-protein interaction prediction: models, challenges and trends |
title_sort |
machine learning on protein-protein interaction prediction: models, challenges and trends |
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2023 |
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https://hdl.handle.net/10356/170316 |
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1779156725527478272 |