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Comparing the biological coherence of network clusters identified by different detection algorithms
引用本文:DONG Dong ZHOU Bing Jing-Dong J. HAN. Comparing the biological coherence of network clusters identified by different detection algorithms[J]. 科学通报(英文版), 2007, 52(21): 2938-2944. DOI: 10.1007/s11434-007-0454-z
作者姓名:DONG Dong ZHOU Bing Jing-Dong J. HAN
作者单位:[1]Graduate School, College of Life Sciences, Beijing Normal University, Beijing 100875, China; [2]Chinese Academy of Science Key Laboratory for Molecular Developmental Biology, Institute of Genetics and Developmental Biol- ogy, Chinese Academy of Sciences, Beijing 100101, China
基金项目:Supported by the National Natural Science Foundation of China (Grant No. 30588001)
摘    要:Protein-protein interaction networks serve to carry out basic molecular activity in the cell. Detecting the modular structures from the protein-protein interaction network is important for understanding the organization, function and dynamics of a biological system. In order to identify functional neighbor- hoods based on network topology, many network cluster identification algorithms have been devel- oped. However, each algorithm might dissect a network from a different aspect and may provide dif- ferent insight on the network partition. In order to objectively evaluate the performance of four com- monly used cluster detection algorithms: molecular complex detection (MCODE), NetworkBlast, shortest-distance clustering (SDC) and Girvan-Newman (G-N) algorithm, we compared the biological coherence of the network clusters found by these algorithms through a uniform evaluation framework. Each algorithm was utilized to find network clusters in two different protein-protein interaction net- works with various parameters. Comparison of the resulting network clusters indicates that clusters found by MCODE and SDC are of higher biological coherence than those by NetworkBlast and G-N algorithm.

关 键 词:网络簇检测算法 生物学 函数熵 双蛋白相互网络
收稿时间:2007-02-15
修稿时间:2007-02-15

Comparing the biological coherence of network clusters identified by different detection algorithms
Dong Dong,Zhou Bing,Jing-Dong J. Han. Comparing the biological coherence of network clusters identified by different detection algorithms[J]. Chinese science bulletin, 2007, 52(21): 2938-2944. DOI: 10.1007/s11434-007-0454-z
Authors:Dong Dong  Zhou Bing  Jing-Dong J. Han
Affiliation:(1) Graduate School, College of Life Sciences, Beijing Normal University, Beijing, 100875, China;(2) Chinese Academy of Science Key Laboratory for Molecular Developmental Biology, Institute of Genetics and Developmental Biology, Chinese Academy of Sciences, Beijing, 100101, China
Abstract:Protein-protein interaction networks serve to carry out basic molecular activity in the cell. Detecting the modular structures from the protein-protein interaction network is important for understanding the organization, function and dynamics of a biological system. In order to identify functional neighbor- hoods based on network topology, many network cluster identification algorithms have been devel- oped. However, each algorithm might dissect a network from a different aspect and may provide dif- ferent insight on the network partition. In order to objectively evaluate the performance of four com- monly used cluster detection algorithms: molecular complex detection (MCODE), NetworkBlast, shortest-distance clustering (SDC) and Girvan-Newman (G-N) algorithm, we compared the biological coherence of the network clusters found by these algorithms through a uniform evaluation framework. Each algorithm was utilized to find network clusters in two different protein-protein interaction net- works with various parameters. Comparison of the resulting network clusters indicates that clusters found by MCODE and SDC are of higher biological coherence than those by NetworkBlast and G-N algorithm.
Keywords:network cluster detection algorithms   biological relevance   function entropy   protein-protein interaction network
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