Topology based machine learning models for drug design
Binding affinity prediction from protein-ligand complex is a problem of interest as it is a key step in drug design. A good model for binding affinity prediction can help to lower time needed and cost of drug design. The binding affinity problem is unlike traditional machine learning tasks. Each pro...
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2020
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sg-ntu-dr.10356-1391002023-02-28T23:13:43Z Topology based machine learning models for drug design Kang, Hwee Young Xia Kelin School of Physical and Mathematical Sciences xiakelin@ntu.edu.sg Science::Mathematics Binding affinity prediction from protein-ligand complex is a problem of interest as it is a key step in drug design. A good model for binding affinity prediction can help to lower time needed and cost of drug design. The binding affinity problem is unlike traditional machine learning tasks. Each protein-ligand complex consists of varying number and types of elements. For machine learning model to work, each input data must be of the same shape. It is also a difficult task to extract geometric features of protein-ligand complexes as well as the chemical interactions between the biomolecules. The paper explores the use of topological methods to featurize protein-ligand complexes to capture the geometric features and chemical interactions of the biomolecules before using machine learning techniques for the binding affinity prediction task. In this report, we followed two papers, (Meng, 2020) and (Zixuan Cang, 2018) closely and made changes to the final machine learning models. We compared our proposed models with some of the recent works and showed that our proposed models managed to outperform some of them. Bachelor of Science in Mathematical Sciences 2020-05-15T07:24:57Z 2020-05-15T07:24:57Z 2020 Final Year Project (FYP) https://hdl.handle.net/10356/139100 en application/pdf Nanyang Technological University |
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Science::Mathematics Kang, Hwee Young Topology based machine learning models for drug design |
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Binding affinity prediction from protein-ligand complex is a problem of interest as it is a key step in drug design. A good model for binding affinity prediction can help to lower time needed and cost of drug design. The binding affinity problem is unlike traditional machine learning tasks. Each protein-ligand complex consists of varying number and types of elements. For machine learning model to work, each input data must be of the same shape. It is also a difficult task to extract geometric features of protein-ligand complexes as well as the chemical interactions between the biomolecules. The paper explores the use of topological methods to featurize protein-ligand complexes to capture the geometric features and chemical interactions of the biomolecules before using machine learning techniques for the binding affinity prediction task. In this report, we followed two papers, (Meng, 2020) and (Zixuan Cang, 2018) closely and made changes to the final machine learning models. We compared our proposed models with some of the recent works and showed that our proposed models managed to outperform some of them. |
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Xia Kelin |
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Xia Kelin Kang, Hwee Young |
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Final Year Project |
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Kang, Hwee Young |
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Kang, Hwee Young |
title |
Topology based machine learning models for drug design |
title_short |
Topology based machine learning models for drug design |
title_full |
Topology based machine learning models for drug design |
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Topology based machine learning models for drug design |
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Topology based machine learning models for drug design |
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topology based machine learning models for drug design |
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Nanyang Technological University |
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2020 |
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https://hdl.handle.net/10356/139100 |
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