2024
DOI: 10.1002/ardp.202300516
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Identification and assessment of new PIM2 inhibitors for treating hematologic cancers: A combined approach of energy‐based virtual screening and machine learning evaluation

Xi Chen,
Jingyi Zhao,
Roufen Chen
et al.

Abstract: PIM2, part of the PIM kinase family along with PIM1 and PIM3, is often overexpressed in hematologic cancers, fueling tumor growth. Despite its significance, there are no approved drugs targeting it. In response to this challenge, we devised a thorough virtual screening workflow for discovering novel PIM2 inhibitors. Our process includes molecular docking and diverse scoring methods like molecular mechanics generalized born surface area, XGBOOST, and DeepDock to rank potential inhibitors by binding affinities a… Show more

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