Title
Protein Subcellular Localization Prediction Using a Hybrid of Similarity Search and Error-Correcting Output Code Techniques That Produces Interpretable Results.
Abstract
In silico prediction of protein subcellular localization based on amino acid sequence can reveal valuable information about the protein's innate roles in the cell. Unfortunately, such prediction is made difficult because of complex protein sorting signals. Some prediction methods are based on searching for similar proteins with known localization, assuming that known homologs exist. However, it may not perform well on proteins with no known homolog. In contrast, machine learning-based approaches attempt to infer a predictive model that describes the protein sorting signals. Alas, in doing so, it does not take advantage of known homologs (if they exist) by doing a simple "table lookup". Here, we capture the best of both worlds by combining both approaches. On a dataset with 12 locations, similarity-based and machine learning independently achieve an accuracy of 83.8% and 72.6%, respectively. Our hybrid approach yields an improved accuracy of 85.9%. We compared our method with three other methods' published results. For two of the methods, we used their published datasets for comparison. For the third we used the 12 location dataset. The Error Correcting Output Code algorithm was used to construct our predictive model. This algorithm gives attention to all the classes regardless of number of instances and led to high accuracy among each of the classes and a high prediction rate overall. We also illustrated how the machine learning classifier we use, built over a meaningful set of features can produce interpretable rules that may provide valuable insights into complex protein sorting mechanisms.
Year
Venue
Field
2006
In Silico Biology
Similitude,Decision tree,Protein subcellular localization prediction,Error detection and correction,Sorting,Protein Sorting Signals,Artificial intelligence,Bioinformatics,Machine learning,Nearest neighbor search,Mathematics,Learning classifier system
DocType
Volume
Issue
Journal
6
5
ISSN
Citations 
PageRank 
1386-6338
3
0.44
References 
Authors
0
4
Name
Order
Citations
PageRank
Mark Doderer1272.12
Kihoon Yoon2483.14
John Salinas330.44
Stephen Kwek435818.57