Roll: A new algorithm for the detection of protein pockets and cavities with a rolling probe sphere

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Abstract

Motivation: Prediction of ligand binding sites of proteins is significant as it can provide insight into biological functions and reaction mechanisms of proteins. It is also a prerequisite for protein-ligand docking and an important step in structure-based drug design.Results: We present a new algorithm, Roll, implemented in a program named POCASA, which can predict binding sites by detecting pockets and cavities of proteins with a rolling sphere. To evaluate the performance of POCASA, a test with the same data set as used in several existing methods was carried out. POCASA achieved a high success rate of 77%. In addition, the test results indicated that POCASA can predict good shapes of ligand binding sites. © The Author 2009. Published by Oxford University Press.

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Yu, J., Zhou, Y., Tanaka, I., & Yao, M. (2009). Roll: A new algorithm for the detection of protein pockets and cavities with a rolling probe sphere. Bioinformatics, 26(1), 46–52. https://doi.org/10.1093/bioinformatics/btp599

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