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Integrated multi-level quality control for proteomic profiling studies using mass spectrometry
Authors:David A Cairns  David N Perkins  Anthea J Stanley  Douglas Thompson  Jennifer H Barrett  Peter J Selby  Rosamonde E Banks
Institution:1. Institute for Theoretical Chemistry, University of Vienna, W?hringerstra?e 17, 1090, Wien, Austria
2. Department of Computer Science, Bioinformatics Group,University of Leipzig, H?rtelstrasse 16-18, D-04109, Leipzig, Germany
3. EMBL-European Bioinformatics Institute,Wellcome Trust Genome Campus, Hinxton, Cambridge, CB10 1SD, UK
Abstract:

Background

Evolutionary conservation of RNA secondary structure is a typical feature of many functional non-coding RNAs. Since almost all of the available methods used for prediction and annotation of non-coding RNA genes rely on this evolutionary signature, accurate measures for structural conservation are essential.

Results

We systematically assessed the ability of various measures to detect conserved RNA structures in multiple sequence alignments. We tested three existing and eight novel strategies that are based on metrics of folding energies, metrics of single optimal structure predictions, and metrics of structure ensembles. We find that the folding energy based SCI score used in the RNAz program and a simple base-pair distance metric are by far the most accurate. The use of more complex metrics like for example tree editing does not improve performance. A variant of the SCI performed particularly well on highly conserved alignments and is thus a viable alternative when only little evolutionary information is available. Surprisingly, ensemble based methods that, in principle, could benefit from the additional information contained in sub-optimal structures, perform particularly poorly. As a general trend, we observed that methods that include a consensus structure prediction outperformed equivalent methods that only consider pairwise comparisons.

Conclusion

Structural conservation can be measured accurately with relatively simple and intuitive metrics. They have the potential to form the basis of future RNA gene finders, that face new challenges like finding lineage specific structures or detecting mis-aligned sequences.
Keywords:
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