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Identification of Group Specific Motifs in Beta-lactamase Family of Proteins

Overview
Journal J Biomed Sci
Publisher Biomed Central
Specialty Biology
Date 2009 Dec 4
PMID 19954553
Citations 12
Authors
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Abstract

Background: Beta-lactamases are one of the most serious threats to public health. In order to combat this threat we need to study the molecular and functional diversity of these enzymes and identify signatures specific to these enzymes. These signatures will enable us to develop inhibitors and diagnostic probes specific to lactamases. The existing classification of beta-lactamases was developed nearly 30 years ago when few lactamases were available. DLact database contain more than 2000 beta-lactamase, which can be used to study the molecular diversity and to identify signatures specific to this family.

Methods: A set of 2020 beta-lactamase proteins available in the DLact database http://59.160.102.202/DLact were classified using graph-based clustering of Best Bi-Directional Hits. Non-redundant (> 90 percent identical) protein sequences from each group were aligned using T-Coffee and annotated using information available in literature. Motifs specific to each group were predicted using PRATT program.

Results: The graph-based classification of beta-lactamase proteins resulted in the formation of six groups (Four major groups containing 191, 726, 774 and 73 proteins while two minor groups containing 50 and 8 proteins). Based on the information available in literature, we found that each of the four major groups correspond to the four classes proposed by Ambler. The two minor groups were novel and do not contain molecular signatures of beta-lactamase proteins reported in literature. The group-specific motifs showed high sensitivity (> 70%) and very high specificity (> 90%). The motifs from three groups (corresponding to class A, C and D) had a high level of conservation at DNA as well as protein level whereas the motifs from the fourth group (corresponding to class B) showed conservation at only protein level.

Conclusion: The graph-based classification of beta-lactamase proteins corresponds with the classification proposed by Ambler, thus there is no need for formulating a new classification. However, further characterization of two small groups may require updating the existing classification scheme. Better sensitivity and specificity of group-specific motifs identified in this study, as compared to PROSITE motifs, and their proximity to the active site indicates that these motifs represents group-specific signature of beta-lactamases and can be further developed into diagnostics and therapeutics.

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References
1.
Li W, Godzik A . Cd-hit: a fast program for clustering and comparing large sets of protein or nucleotide sequences. Bioinformatics. 2006; 22(13):1658-9. DOI: 10.1093/bioinformatics/btl158. View

2.
Garau G, Di Guilmi A, Hall B . Structure-based phylogeny of the metallo-beta-lactamases. Antimicrob Agents Chemother. 2005; 49(7):2778-84. PMC: 1168685. DOI: 10.1128/AAC.49.7.2778-2784.2005. View

3.
Notredame C, Higgins D, Heringa J . T-Coffee: A novel method for fast and accurate multiple sequence alignment. J Mol Biol. 2000; 302(1):205-17. DOI: 10.1006/jmbi.2000.4042. View

4.
Bush K, Jacoby G, Medeiros A . A functional classification scheme for beta-lactamases and its correlation with molecular structure. Antimicrob Agents Chemother. 1995; 39(6):1211-33. PMC: 162717. DOI: 10.1128/AAC.39.6.1211. View

5.
Bush K . Classification of beta-lactamases: groups 1, 2a, 2b, and 2b'. Antimicrob Agents Chemother. 1989; 33(3):264-70. PMC: 171477. DOI: 10.1128/AAC.33.3.264. View