Scientific Data (Sep 2024)

PharmaBench: Enhancing ADMET benchmarks with large language models

  • Zhangming Niu,
  • Xianglu Xiao,
  • Wenfan Wu,
  • Qiwei Cai,
  • Yinghui Jiang,
  • Wangzhen Jin,
  • Minhao Wang,
  • Guojian Yang,
  • Lingkang Kong,
  • Xurui Jin,
  • Guang Yang,
  • Hongming Chen

DOI
https://doi.org/10.1038/s41597-024-03793-0
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 15

Abstract

Read online

Abstract Accurately predicting ADMET (Absorption, Distribution, Metabolism, Excretion, and Toxicity) properties early in drug development is essential for selecting compounds with optimal pharmacokinetics and minimal toxicity. Existing ADMET-related benchmark sets are limited in utility due to their small dataset sizes and the lack of representation of compounds used in drug discovery projects. These shortcomings hinder their application in model building for drug discovery. To address this issue, we propose a multi-agent data mining system based on Large Language Models that effectively identifies experimental conditions within 14,401 bioassays. This approach facilitates merging entries from different sources, culminating in the creation of PharmaBench. Additionally, we have developed a data processing workflow to integrate data from various sources, resulting in 156,618 raw entries. Through this workflow, we constructed PharmaBench, a comprehensive benchmark set for ADMET properties, which comprises eleven ADMET datasets and 52,482 entries. This benchmark set is designed to serve as an open-source dataset for the development of AI models relevant to drug discovery projects.