Kwon Yongbeom, Lee Juyong
Department of Chemistry, Division of Chemistry and Biochemistry, Kangwon National University, 1 Gangwondaehak-gil, Chuncheon, 24341, Republic of Korea.
Arontier Inc., 15F, 241, Gangnam-daero, Seocho-gu, Seoul, 06735, Republic of Korea.
J Cheminform. 2021 Mar 18;13(1):24. doi: 10.1186/s13321-021-00501-7.
Here, we introduce a new molecule optimization method, MolFinder, based on an efficient global optimization algorithm, the conformational space annealing algorithm, and the SMILES representation. MolFinder finds diverse molecules with desired properties efficiently without any training and a large molecular database. Compared with recently proposed reinforcement-learning-based molecule optimization algorithms, MolFinder consistently outperforms in terms of both the optimization of a given target property and the generation of a set of diverse and novel molecules. The efficiency of MolFinder demonstrates that combinatorial optimization using the SMILES representation is a promising approach for molecule optimization, which has not been well investigated despite its simplicity. We believe that our results shed light on new possibilities for advances in molecule optimization methods.
在此,我们基于一种高效的全局优化算法——构象空间退火算法以及SMILES表示法,介绍一种新的分子优化方法MolFinder。MolFinder无需任何训练和大型分子数据库,就能高效地找到具有所需特性的多样分子。与最近提出的基于强化学习的分子优化算法相比,MolFinder在给定目标特性的优化以及一组多样且新颖分子的生成方面均始终表现更优。MolFinder的效率表明,使用SMILES表示法进行组合优化是一种很有前景的分子优化方法,尽管其简单但尚未得到充分研究。我们相信,我们的结果为分子优化方法的进展揭示了新的可能性。