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ImDrug: A Benchmark for Deep Imbalanced Learning in AI-aided Drug Discovery

Authors :
Li, Lanqing
Zeng, Liang
Gao, Ziqi
Yuan, Shen
Bian, Yatao
Wu, Bingzhe
Zhang, Hengtong
Yu, Yang
Lu, Chan
Zhou, Zhipeng
Xu, Hongteng
Li, Jia
Zhao, Peilin
Heng, Pheng-Ann
Publication Year :
2022

Abstract

The last decade has witnessed a prosperous development of computational methods and dataset curation for AI-aided drug discovery (AIDD). However, real-world pharmaceutical datasets often exhibit highly imbalanced distribution, which is overlooked by the current literature but may severely compromise the fairness and generalization of machine learning applications. Motivated by this observation, we introduce ImDrug, a comprehensive benchmark with an open-source Python library which consists of 4 imbalance settings, 11 AI-ready datasets, 54 learning tasks and 16 baseline algorithms tailored for imbalanced learning. It provides an accessible and customizable testbed for problems and solutions spanning a broad spectrum of the drug discovery pipeline such as molecular modeling, drug-target interaction and retrosynthesis. We conduct extensive empirical studies with novel evaluation metrics, to demonstrate that the existing algorithms fall short of solving medicinal and pharmaceutical challenges in the data imbalance scenario. We believe that ImDrug opens up avenues for future research and development, on real-world challenges at the intersection of AIDD and deep imbalanced learning.<br />Comment: 29 pages, 7 figures, 8 tables, a machine learning benchmark submission

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2209.07921
Document Type :
Working Paper