A novel method for automatic functional annotation of proteins

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Abstract

Motivation: To cope with the increasing amount of sequence data, reliable automatic annotation tools are required. The TrEMBL database contains together with SWISS-PROT nearly all publicly available protein sequences, but in contrast to SWISS-PROT only limited functional annotation. To improve this situation, we had to develop a method of automatic annotation that produces highly reliable functional prediction using the language and the syntax of SWISS-PROT. Results: An algorithm was developed and successfully used for the automatic annotation of a testset of unknown proteins. The predicted information included description, function, catalytic activity, cofactors, pathway, subcellular location, quaternary structure, similarity to other protein, active sites, and keywords. The algorithm showed a low coverage (10%), but a high specificity and reliability. Availability: The results can be obtained by anonymous ftp. The source code is available on request from the authors.

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CITATION STYLE

APA

Fleischmann, W., Möller, S., Gateau, A., & Apweiler, R. (1999). A novel method for automatic functional annotation of proteins. In Bioinformatics (Vol. 15, pp. 228–233). Oxford University Press. https://doi.org/10.1093/bioinformatics/15.3.228

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