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A simple extension to the CMASA method for the prediction of catalytic residues in the presence of single point mutations

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DataCite Commons2020-09-04 更新2024-07-25 收录
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https://figshare.com/articles/dataset/A_simple_extension_to_the_CMASA_method_for_the_prediction_of_catalytic_residues_in_the_presence_of_single_point_mutations/1140439/1
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The automatic identification of catalytic residues still remains an important challenge in<br>structural bioinformatics. Sequence-based methods are good alternatives when the<br>query shares a high percentage of identity with a well-annotated enzyme. However,<br>when the homology is not apparent, which occurs with many structures from the<br>structural genome initiative, structural information should be exploited. A local<br>structural comparison is preferred to a global structural comparison when predicting<br>functional residues. CMASA is a recently proposed method for predicting catalytic<br>residues based on a local structure comparison. The method achieves high accuracy<br>and a high value for the Matthews correlation coefficient. However, point substitutions<br>or a lack of relevant data strongly affect the performance of the method. In the present<br>study, we propose a simple extension to the CMASA method to overcome this<br>difficulty. Extensive computational experiments are shown as proof of concept<br>instances, as well as for a few real cases. The results show that the extension<br>performs well when the catalytic site contains mutated residues or when some<br>residues are missing. The proposed modification could correctly predict the catalytic<br>residues of a mutant transferase of the kinase family, 1EVF. It also successfully<br>predicted the catalytic residues for 3HRC despite the lack of information for a relevant<br>side chain atom in the PDB file.
提供机构:
figshare
创建时间:
2016-01-19
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