Achieving High Accuracy Prediction of Minimotifs
Author(s) -
Tian Mi,
Sanguthevar Rajasekaran,
Jerlin Camilus Merlin,
Michael R. Gryk,
Martin Schiller
Publication year - 2012
Publication title -
plos one
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.99
H-Index - 332
ISSN - 1932-6203
DOI - 10.1371/journal.pone.0045589
Subject(s) - false positive paradox , support vector machine , artificial neural network , artificial intelligence , computer science , true positive rate , false positives and false negatives , false positive rate , filter (signal processing) , pattern recognition (psychology) , regression , linear regression , machine learning , data mining , statistics , mathematics , computer vision
The low complexity of minimotif patterns results in a high false-positive prediction rate, hampering protein function prediction. A multi-filter algorithm, trained and tested on a linear regression model, support vector machine model, and neural network model, using a large dataset of verified minimotifs, vastly improves minimotif prediction accuracy while generating few false positives. An optimal threshold for the best accuracy reaches an overall accuracy above 90%, while a stringent threshold for the best specificity generates less than 1% false positives or even no false positives and still produces more than 90% true positives for the linear regression and neural network models. The minimotif multi-filter with its excellent accuracy represents the state-of-the-art in minimotif prediction and is expected to be very useful to biologists investigating protein function and how missense mutations cause disease.
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