Development of molecular-graph representations in graph neural networks for molecular-property prediction분자 특성 예측을 위한 그래프 신경망에서의 분자 그래프 표현 개발

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Molecular graph is one of the spotlighted molecular representations as deep learning models, especially graph neural network (GNN) models, have recently been proposed to predict molecular properties and intermolecular interactions. A Molecular graph is defined as graph G(V,E), composed of nodes (i.e., atoms) and edges (i.e., bonds). Many researchers have proposed three-dimensional GNN models, using basic two-dimensional molecular graphs and additional descriptors for three-dimensional molecular information, these days. Despite all the studies, three-dimensional molecular descriptors such as bond distance and relational positions between atoms are only considered as molecular representations, and other three-dimensional molecular structural information is ignored in the molecular graph. In this work, we proposed three new descriptors for molecular graphs: full-electron-configuration vector, interatomic overlap area, and noncovalent molecular graph based on noncovalent interactions. We introduced a new combination of atom and bond descriptors, including the proposed descriptors, to predict solvation free energy of organic light-emitting diode (OLED) molecules as solutes. We also proposed MolNet, a chemically intuitive covalent-noncovalent multimodal three-dimensional GNN model which learns both covalent and noncovalent interactions in molecules, to predict the binding affinity between a protein and ligands complex and aqueous solvation free energy. The MolNet model showed higher prediction performance than earlier GNN models. The descriptors and the noncovalent molecular graph introduced in this work could be applied and adopted for other types of molecular representations, and the MolNet model could predict various molecular properties.
Advisors
Choi, Insung S.researcher최인성researcher
Description
한국과학기술원 :화학과,
Publisher
한국과학기술원
Issue Date
2022
Identifier
325007
Language
eng
Description

학위논문(석사) - 한국과학기술원 : 화학과, 2022.2,[iii, 32 p. :]

Keywords

deep learning▼amolecular graph▼aatom descriptor▼abond descriptor▼agraph neural network▼amolecular property prediction▼aorganic light-emitting diode▼aprotein-ligand interaction▼asolvation free energy; 심층학습▼a분자 그래프▼a원자 표현자▼a결합 표현자▼a그래프 신경망▼a분자 물성 예측▼a유기 발광 다이오드▼a단백질-리간드 상호작용▼a용매화 자유 에너지

URI
http://hdl.handle.net/10203/309735
Link
http://library.kaist.ac.kr/search/detail/view.do?bibCtrlNo=1021050&flag=dissertation
Appears in Collection
CH-Theses_Master(석사논문)
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