Lessons Learned in Empirical Scoring with smina from the CSAR 2011 Benchmarking Exercise
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Abstract
We describe a general methodology for designing an empirical scoring function and provide smina, a version of AutoDock Vina specially optimized to support high-throughput scoring and user-specified custom scoring functions. Using our general method, the unique capabilities of smina, a set of default interaction terms from AutoDock Vina, and the CSAR (Community Structure-Activity Resource) 2010 data set, we created a custom scoring function and evaluated it in the context of the CSAR 2011 benchmarking exercise. We find that our custom scoring function does a better job sampling low RMSD poses when crossdocking compared to the default AutoDock Vina scoring function. The design and application of our method and…
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Keywords
- Benchmarking
- Computer science
- Ranking (information retrieval)
- Context (archaeology)
- Machine learning
- Set (abstract data type)
- Function (biology)
- Artificial intelligence
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