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ALMOB
2007

Evaluating deterministic motif significance measures in protein databases

13 years 11 months ago
Evaluating deterministic motif significance measures in protein databases
Background: Assessing the outcome of motif mining algorithms is an essential task, as the number of reported motifs can be very large. Significance measures play a central role in automatically ranking those motifs, and therefore alleviating the analysis work. Spotting the most interesting and relevant motifs is then dependent on the choice of the right measures. The combined use of several measures may provide more robust results. However caution has to be taken in order to avoid spurious evaluations. Results: From the set of conducted experiments, it was verified that several of the selected significance measures show a very similar behavior in a wide range of situations therefore providing redundant information. Some measures have proved to be more appropriate to rank highly conserved motifs, while others are more appropriate for weakly conserved ones. Support appears as a very important feature to be considered for correct motif ranking. We observed that not all the measures are s...
Pedro Gabriel Ferreira, Paulo J. Azevedo
Added 08 Dec 2010
Updated 08 Dec 2010
Type Journal
Year 2007
Where ALMOB
Authors Pedro Gabriel Ferreira, Paulo J. Azevedo
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