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Do Deep Learning Methods Really Perform Better in Molecular Conformation Generation?

Authors :
Zhou, Gengmo
Gao, Zhifeng
Wei, Zhewei
Zheng, Hang
Ke, Guolin
Publication Year :
2023

Abstract

Molecular conformation generation (MCG) is a fundamental and important problem in drug discovery. Many traditional methods have been developed to solve the MCG problem, such as systematic searching, model-building, random searching, distance geometry, molecular dynamics, Monte Carlo methods, etc. However, they have some limitations depending on the molecular structures. Recently, there are plenty of deep learning based MCG methods, which claim they largely outperform the traditional methods. However, to our surprise, we design a simple and cheap algorithm (parameter-free) based on the traditional methods and find it is comparable to or even outperforms deep learning based MCG methods in the widely used GEOM-QM9 and GEOM-Drugs benchmarks. In particular, our design algorithm is simply the clustering of the RDKIT-generated conformations. We hope our findings can help the community to revise the deep learning methods for MCG. The code of the proposed algorithm could be found at https://gist.github.com/ZhouGengmo/5b565f51adafcd911c0bc115b2ef027c.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2302.07061
Document Type :
Working Paper