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Physical formula enhanced multi-task learning for pharmacokinetics prediction

Authors :
Li, Ruifeng
Zhou, Dongzhan
Shen, Ancheng
Zhang, Ao
Su, Mao
Li, Mingqian
Chen, Hongyang
Chen, Gang
Zhang, Yin
Zhang, Shufei
Li, Yuqiang
Ouyang, Wanli
Li, Ruifeng
Zhou, Dongzhan
Shen, Ancheng
Zhang, Ao
Su, Mao
Li, Mingqian
Chen, Hongyang
Chen, Gang
Zhang, Yin
Zhang, Shufei
Li, Yuqiang
Ouyang, Wanli
Publication Year :
2024

Abstract

Artificial intelligence (AI) technology has demonstrated remarkable potential in drug dis-covery, where pharmacokinetics plays a crucial role in determining the dosage, safety, and efficacy of new drugs. A major challenge for AI-driven drug discovery (AIDD) is the scarcity of high-quality data, which often requires extensive wet-lab work. A typical example of this is pharmacokinetic experiments. In this work, we develop a physical formula enhanced mul-ti-task learning (PEMAL) method that predicts four key parameters of pharmacokinetics simultaneously. By incorporating physical formulas into the multi-task framework, PEMAL facilitates effective knowledge sharing and target alignment among the pharmacokinetic parameters, thereby enhancing the accuracy of prediction. Our experiments reveal that PEMAL significantly lowers the data demand, compared to typical Graph Neural Networks. Moreover, we demonstrate that PEMAL enhances the robustness to noise, an advantage that conventional Neural Networks do not possess. Another advantage of PEMAL is its high flexibility, which can be potentially applied to other multi-task machine learning scenarios. Overall, our work illustrates the benefits and potential of using PEMAL in AIDD and other scenarios with data scarcity and noise.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438546696
Document Type :
Electronic Resource