ADMETlab 3.0 is the second updated version of the web server that provides a comprehensive and efficient platform for evaluating ADMET-related parameters as well as physicochemical properties and medicinal chemistry…
About Me
I am a postdoctoral researcher at the School of Chinese Medicine, Hong Kong Baptist University, working at the intersection of artificial intelligence, drug design, and scientific software. I received my Ph.D. in Computer Science from the National University of Defense Technology, where my work focused on molecular property prediction, molecular generation and optimization, and diffusion-based 3D lead generation and optimization.
My research emphasizes not only model performance, but also practical utility for biomedical discovery. Across publications, platforms, and collaborative research projects, I aim to turn advanced AI methods into usable infrastructure for medicinal chemistry, decision support, and real-world scientific workflows.
Beyond science, I am fascinated by the Yijing (The Book of Changes), an ancient Chinese philosophy that explores the dynamic balance of the universe. I see it as a timeless algorithm, offering insights into interconnectedness — whether decoding molecular structures or interpreting hexagrams, I enjoy uncovering hidden patterns and making sense of complexity.
📰News
- Launched MindDance AIDD Brief — a bilingual daily research briefing site
Released AIDD Brief (brief.minddanceai.com), a bilingual (EN/ZH) daily briefing site covering AI-driven drug discovery, with automated paper fetching, LLM-powered scoring, and curated digests.
Visit → - Started postdoctoral research at Hong Kong Baptist University
Joined the School of Chinese Medicine, Hong Kong Baptist University, as a postdoctoral researcher.
- Successfully defended Ph.D. dissertation
Defended the dissertation "Research on Key Technologies for Deep Learning-based Small Molecule Drug Design" at the National University of Defense Technology.
- Delivered a report at the CAST Young Scientific Talent Pilot Program
Presented at the CAST Young Scientific Talent Pilot Program in Hunan and exchanged ideas with fellow early-career researchers.
News → - Decoding the limits of deep learning in molecular docking for drug discovery
Co-first authored paper published in Chemical Science (RSC), systematically decoding the boundaries and failure modes of deep learning-based molecular docking.
Paper → - Selected for the inaugural CAST Youth Talent Support Program for doctoral students
Selected for the inaugural doctoral-student track of the CAST Youth Talent Support Program.
⭐Selected Publications
Lead optimization is a crucial step in drug discovery, aiming to design potential drug candidates from biologically active hits. During lead optimization, active hits undergo modifications to achieve a balance between…
Structure-based molecular docking, a cornerstone of computational drug design, is undergoing a paradigm shift fueled by deep learning (DL) innovations. However, the rapid proliferation of DL-driven docking methods…
🧬Research
- AI-Enabled Drug Design
Molecular property prediction, generative optimization, molecular docking, and large-scale virtual screening.
- Biomedical AI Platforms
Deployable, one-stop scientific platforms for biomedicine and decision support.
- LLM-Augmented Scientific Workflows
Large language model agents for drug-discovery workflows.
🚀Platforms
10+ open-source platforms · 5.5M+ visits from 100+ countries · 5 software copyrights
A one-stop intelligent drug design platform for molecular modeling and scientific workflows.
WeChat official account sharing research notes, ideas, and updates on AI for drug discovery.
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