Molecular inverse design using fragment-wise reinforcement learning강화학습을 이용한 단위체 수준 분자 역설계

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Strategies to design novel molecules and materials with desired properties are the ultimate goal of chemical research. Reinforcement learning is a machine learning method that learns optimal action for each state using only the reward function without prior knowledge and is drawing attention as a molecular inverse design strategy that goes beyond human intuition. This study proposes a reinforcement learning model that designs molecules using the actions of adhering two rings at the fragment level. In the task of generating a molecule with a designated partition coefficient (logP), it showed higher accuracy than previous models that design molecules at the atomic level, and overcome the problem of creating unstable molecules. In addition, even in the partition coefficient optimization process that took into account the synthetic accessibility score, it showed higher accuracy than the atom-wise model and generated a chemically more stable molecule containing a ring. Our molecular design strategy is expected to be useful in industrial fields that utilize the characteristics of cyclic compounds, such as new drug development or organic light-emitting diodes.
Advisors
Jung, Yousungresearcher정유성researcher
Description
한국과학기술원 :생명화학공학과,
Publisher
한국과학기술원
Issue Date
2023
Identifier
325007
Language
eng
Description

학위논문(석사) - 한국과학기술원 : 생명화학공학과, 2023.2,[iii, 25 p. :]

Keywords

chemical fragment▼aDeep Q Networks▼adeep reinforcement learning▼amolecular inverse design▼adrug discovery▼aorganic electronic materials; 화학 작용기▼a심층 Q 네트워크▼a심층강화학습▼a분자 역설계▼a신약개발▼a유기전자소자

URI
http://hdl.handle.net/10203/308905
Link
http://library.kaist.ac.kr/search/detail/view.do?bibCtrlNo=1032766&flag=dissertation
Appears in Collection
CBE-Theses_Master(석사논문)
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