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Progressive clustering based method for protein function prediction

journal contribution
posted on 2013-01-01, 00:00 authored by Ashish Saini, Jingyu HouJingyu Hou
In recent years, significant effort has been given to predicting protein functions from protein interaction data generated from high throughput techniques. However, predicting protein functions correctly and reliably still remains a challenge. Recently, many computational methods have been proposed for predicting protein functions. Among these methods, clustering based methods are the most promising. The existing methods, however, mainly focus on protein relationship modeling and the prediction algorithms that statically predict functions from the clusters that are related to the unannotated proteins. In fact, the clustering itself is a dynamic process and the function prediction should take this dynamic feature of clustering into consideration. Unfortunately, this dynamic feature of clustering is ignored in the existing prediction methods. In this paper, we propose an innovative progressive clustering based prediction method to trace the functions of relevant annotated proteins across all clusters that are generated through the progressive clustering of proteins. A set of prediction criteria is proposed to predict functions of unannotated proteins from all relevant clusters and traced functions. The method was evaluated on real protein interaction datasets and the results demonstrated the effectiveness of the proposed method compared with representative existing methods.

History

Journal

Bulletin of mathematical biology

Volume

75

Issue

2

Pagination

331 - 350

Publisher

Springer

Location

Berlin, Germany

ISSN

1522-9602

eISSN

0092-8240

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

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