标杆管理
重新调整用途
计算机科学
可用性
药物重新定位
人工智能
机器学习
水准点(测量)
Python(编程语言)
数据科学
人机交互
药品
工程类
心理学
大地测量学
营销
精神科
业务
操作系统
地理
废物管理
作者
Jesús de la Fuente,Guillermo Serrano,Uxía Veleiro,Mikel Casals,L. Vera,Marija Pizurica,Antonio Pineda‐Lucena,Idoia Ochoa,Silvestre Vicent,Olivier Gevaert,Mikel Hernáez
出处
期刊:Cornell University - arXiv
日期:2023-01-01
标识
DOI:10.48550/arxiv.2311.12670
摘要
Drug-target interaction (DTI) prediction is a challenging, albeit essential task in drug repurposing. Learning on graph models have drawn special attention as they can significantly reduce drug repurposing costs and time commitment. However, many current approaches require high-demanding additional information besides DTIs that complicates their evaluation process and usability. Additionally, structural differences in the learning architecture of current models hinder their fair benchmarking. In this work, we first perform an in-depth evaluation of current DTI datasets and prediction models through a robust benchmarking process, and show that DTI prediction methods based on transductive models lack generalization and lead to inflated performance when evaluated as previously done in the literature, hence not being suited for drug repurposing approaches. We then propose a novel biologically-driven strategy for negative edge subsampling and show through in vitro validation that newly discovered interactions are indeed true. We envision this work as the underpinning for future fair benchmarking and robust model design. All generated resources and tools are publicly available as a python package.
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