HelixVS: Deep Learning-Enhanced Structure-Based Platform for Screening and Design
Shanzhuo Zhang, Xianbin Ye, Donglong He, Yueyang Huang, Xiaonan Zhang, Xiaomin Fang

TL;DR
HelixVS is a deep learning-enhanced structure-based virtual screening platform that significantly improves screening efficiency and success rate, enabling faster drug discovery and novel compound design.
Contribution
The paper introduces HelixVS, a novel deep learning-based virtual screening platform that outperforms traditional methods and includes a compound design module for exploring new chemical space.
Findings
Achieved 2.6-fold higher enrichment factor than Vina.
Screening speed increased by over 10 times.
Wet-lab validation confirmed high activity of selected compounds.
Abstract
Drug discovery through virtual screening (VS) has become a popular strategy for identifying hits against protein targets. Alongside VS, molecular design further expands accessible chemical space. Together, these approaches have the potential to reduce the cost and time needed for manual selection and wet-laboratory experiments, thereby accelerating drug discovery pipelines. Improving the cost-effectiveness of virtual screening is a significant challenge, aiming to explore larger compound libraries while maintaining lower screening costs. Here, we present HelixVS, a structure-based VS platform enhanced by deep learning models. HelixVS integrates a precise deep learning-based pose-scoring model and a pose-screening module into a multi-stage VS process, enabling more effective screening of active compounds. Compared to classic molecular docking tools like Vina, HelixVS demonstrated…
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Taxonomy
TopicsModular Robots and Swarm Intelligence
