
Chang Liu
· Assistant ProfessorStony Brook University · Economics
Active 2003–2023
Research topics
- Computer Science
- Machine Learning
- Chemistry
- Computational chemistry
- Artificial Intelligence
- Physics
- Computational science
- Operating system
- Bioinformatics
- Computational biology
- Biochemistry
- Biology
- Mathematics
Selected publications
Frontiers in Molecular Biosciences · 2023 · 6 citations
- Computer Science
- Computer Science
- Machine Learning
High-throughput screening (HTS) methods enable the empirical evaluation of a large scale of compounds and can be augmented by virtual screening (VS) techniques to save time and money by using potential active compounds for experimental testing. Structure-based and ligand-based virtual screening approaches have been extensively studied and applied in drug discovery practice with proven outcomes in advancing candidate molecules. However, the experimental data required for VS are expensive, and hit identification in an effective and efficient manner is particularly challenging during early-stage drug discovery for novel protein targets. Herein, we present our TArget-driven Machine learning-Enabled VS (TAME-VS) platform, which leverages existing chemical databases of bioactive molecules to modularly facilitate hit finding. Our methodology enables bespoke hit identification campaigns through a user-defined protein target. The input target ID is used to perform a homology-based target expansion, followed by compound retrieval from a large compilation of molecules with experimentally validated activity. Compounds are subsequently vectorized and adopted for machine learning (ML) model training. These machine learning models are deployed to perform model-based inferential virtual screening, and compounds are nominated based on predicted activity. Our platform was retrospectively validated across ten diverse protein targets and demonstrated clear predictive power. The implemented methodology provides a flexible and efficient approach that is accessible to a wide range of users. The TAME-VS platform is publicly available at https://github.com/bymgood/Target-driven-ML-enabled-VS to facilitate early-stage hit identification.
Journal of Chemical Theory and Computation · 2022 · 23 citations
- Computer Science
- Machine Learning
- Computer Science
for MD alone. This shows how machine learning information can be leveraged to advance physics-based modeling of proteins.
Computing Ligands Bound to Proteins Using MELD-Accelerated MD
Journal of Chemical Theory and Computation · 2020 · 17 citations
1st authorCorresponding- Computer Science
- Computer Science
- Chemistry
Predicting the poses of small-molecule ligands in protein binding sites is often done by virtual screening algorithms such as DOCK. In principle, molecular dynamics (MD) using atomistic force fields could give better free-energy-based pose selection, but MD is computationally expensive. Here, we ask if modeling employing limited data (MELD)-accelerated MD (MELD × MD) can pick out the best DOCK poses taken as input. We study 30 different ligand-protein pairs. MELD × MD finds native poses, based on best free energies, in 23 out of the 30 cases, 20 of which were previously known DOCK failures. We conclude that MELD × MD can add value for predicting accurate poses of small molecules bound to proteins.
Frequent coauthors
- 8 shared
Ken A. Dill
Stony Brook University
- 6 shared
Emiliano Brini
Rochester Institute of Technology
- 4 shared
Alberto Pérez
University of Florida
- 4 shared
A. Kondratyev
- 4 shared
Yosinori Watanabe
Cadence Design Systems (United States)
- 4 shared
Alberto Sangiovanni‐Vincentelli
University of California, Berkeley
- 3 shared
Jason J. Kwon
Broad Institute
- 2 shared
Andrey Alekseenko
Education
- 2021
Doctoral, Chemistry
Stony Brook University
- 2016
Master of Science, Chemistry
Stony Brook University
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