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Developing an in silico pipeline for faster drug candidate discovery: Virtual high throughput screening with the Signature molecular descriptor using support vector machine models
被引:31
作者:
Chen, Jonathan Jun Feng
[1
]
Visco, Donald Patrick, Jr.
[2
]
机构:
[1] Univ Akron, Dept Biol, 302 Buchtel Common, Akron, OH 44325 USA
[2] Univ Akron, Dept Chem & Biomol Engn, 302 Buchtel Common, Akron, OH 44325 USA
关键词:
Virtual high throughput screening;
QSAR;
Drug discovery;
CAMD;
Signature;
EXTENDED VALENCE SEQUENCES;
FACTOR XIA INHIBITORS;
RECEPTOR FLEXIBILITY;
FORCE-FIELD;
DESIGN;
SELECTION;
PROTEIN;
FINGERPRINTS;
METHODOLOGY;
PERSPECTIVE;
D O I:
10.1016/j.ces.2016.02.037
中图分类号:
TQ [化学工业];
学科分类号:
0817 ;
摘要:
Drug candidates make up a small portion of all possible compounds. To identify the candidates, traditional drug discovery methods like high-throughput screening test compound libraries against the target of interest. However, traditional high-throughput screening typically have a low efficiency, identifying < 1% of the tested compounds as candidates and are costly because the majority of resources are spent testing compounds inactive towards a target of interest. To increase high-throughput screening efficiency, virtual high-throughput screening emerged as a way to focus compound libraries by removing unpromising drug candidates before bench-top testing is ever started. Virtual screens are usually based on energetics of a ligand-target complex, classification based on known ligands, or a combination of the two. We propose a new ligand-based pipeline to reduce cost and increase efficiency: given a set of experimental data, the pipeline develops QSARs in the form of predictive SVM models and applies the models to virtually screen compound databases. The models obtained are based on a fragmental descriptor called Signature which has been previously shown as useful in virtual high-throughput screens. For proof-of-concept, we used our pipeline to identify inhibitors for Cathepsin L, a receptor implicated in viral disease pathways. Our first pass virtual screen identified 16 compounds, 3 of which were experimentally confirmed as active, for a hit rate of 19%. Using the experimental data from the first-pass, we retrained the models to refine their predictive ability. Our second pass virtual screen identified 12 compounds, 9 of which experimentally confirmed as active, for a hit rate of 75%. (C) 2016 Elsevier Ltd. All rights reserved.
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页码:31 / 42
页数:12
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