Article ID Journal Published Year Pages File Type
4500292 Mathematical Biosciences 2012 7 Pages PDF
Abstract

Predicting protein functions computationally from massive protein–protein interaction (PPI) data generated by high-throughput technology is one of the challenges and fundamental problems in the post-genomic era. Although there have been many approaches developed for computationally predicting protein functions, the mutual correlations among proteins in terms of protein functions have not been thoroughly investigated and incorporated into existing prediction methods, especially in voting based prediction methods. In this paper, we propose an innovative method to predict protein functions from PPI data by aggregating the functional correlations among relevant proteins using the Choquet-Integral in fuzzy theory. This functional aggregation measures the real impact of each relevant protein function on the final prediction results, and reduces the impact of repeated functional information on the prediction. Accordingly, a new protein similarity and a new iterative prediction algorithm are proposed in this paper. The experimental evaluations on real PPI datasets demonstrate the effectiveness of our method.

► A novel method of protein function prediction incorporating functional aggregation. ► A new protein similarity derived from functional similarities. ► Combination of the iterative prediction approach and the functional aggregation. ► The method is more effective on real protein interaction datasets. ► Using functional aggregation is heuristic to other prediction approaches.

Related Topics
Life Sciences Agricultural and Biological Sciences Agricultural and Biological Sciences (General)
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