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Self-analysis of repeat proteins reveals evolutionarily conserved patterns

Autor
Ludwiczak, Jan
Merski, Matthew
Górna, Maria
Młynarczyk, Krzysztof
Dunin-Horkawicz, Stanisław
Skrzeczkowski, Jakub
Data publikacji
2020
Abstrakt (EN)

Background Protein repeats can confound sequence analyses because the repetitiveness of their amino acid sequences lead to difficulties in identifying whether similar repeats are due to convergent or divergent evolution. We noted that the patterns derived from traditional “dot plot” protein sequence self-similarity analysis tended to be conserved in sets of related repeat proteins and this conservation could be quantitated using a Jaccard metric.Results Comparison of these dot plots obviated the issues due to sequence similarity for analysis of repeat proteins. A high Jaccard similarity score was suggestive of a conserved relationship between closely related repeat proteins. The dot plot patterns decayed quickly in the absence of selective pressure with an expected loss of 50% of Jaccard similarity due to a loss of 8.2% sequence identity. To perform method testing, we assembled a standard set of 79 repeat proteins representing all the subgroups in RepeatsDB. Comparison of known repeat and non-repeat proteins from the PDB suggested that the information content in dot plots could be used to identify repeat proteins from pure sequence with no requirement for structural information. Analysis of the UniRef90 database suggested that 16.9% of all known proteins could be classified as repeat proteins. These 13.3 million putative repeat protein chains were clustered and a significant amount (82.9%) of clusters containing between 5 and 200 members were of a single functional type. Conclusions Dot plot analysis of repeat proteins attempts to obviate issues that arise due to the sequence degeneracy of repeat proteins. These results show that this kind of analysis can efficiently be applied to analyze repeat proteins on a large scale.

Dyscyplina PBN
nauki biologiczne
Czasopismo
BMC Bioinformatics
Tom
21
Zeszyt
1
Strony od-do
art. no. 179
ISSN
1471-2105
Data udostępnienia w otwartym dostępie
2020-05-07
Licencja otwartego dostępu
Uznanie autorstwa