A novel algorithm for finding optimal driver nodes to target control complex networks and its applications for drug targets identification
Abstract Background The advances in target control of complex networks not only can offer new insights into the general control dynamics of complex systems, but also be useful for the practical application in systems biology, such as discovering new therapeutic targets for disease intervention. In m...
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doaj-7e6f45fd58d9425baa9ddc7f33f573462020-11-25T01:18:03ZengBMCBMC Genomics1471-21642018-01-0119S1677910.1186/s12864-017-4332-zA novel algorithm for finding optimal driver nodes to target control complex networks and its applications for drug targets identificationWei-Feng Guo0Shao-Wu Zhang1Qian-Qian Shi2Cheng-Ming Zhang3Tao Zeng4Luonan Chen5Key Laboratory of Information Fusion Technology of Ministry of Education, School of Automation, Northwestern Polytechnical UniversityKey Laboratory of Information Fusion Technology of Ministry of Education, School of Automation, Northwestern Polytechnical UniversityKey Laboratory of Systems Biology, Institute of Biochemistry and Cell Biology, University of Chinese Academy of sciencesKey Laboratory of Systems Biology, Institute of Biochemistry and Cell Biology, University of Chinese Academy of sciencesKey Laboratory of Systems Biology, Institute of Biochemistry and Cell Biology, University of Chinese Academy of sciencesKey Laboratory of Information Fusion Technology of Ministry of Education, School of Automation, Northwestern Polytechnical UniversityAbstract Background The advances in target control of complex networks not only can offer new insights into the general control dynamics of complex systems, but also be useful for the practical application in systems biology, such as discovering new therapeutic targets for disease intervention. In many cases, e.g. drug target identification in biological networks, we usually require a target control on a subset of nodes (i.e., disease-associated genes) with minimum cost, and we further expect that more driver nodes consistent with a certain well-selected network nodes (i.e., prior-known drug-target genes). Results Therefore, motivated by this fact, we pose and address a new and practical problem called as target control problem with objectives-guided optimization (TCO): how could we control the interested variables (or targets) of a system with the optional driver nodes by minimizing the total quantity of drivers and meantime maximizing the quantity of constrained nodes among those drivers. Here, we design an efficient algorithm (TCOA) to find the optional driver nodes for controlling targets in complex networks. We apply our TCOA to several real-world networks, and the results support that our TCOA can identify more precise driver nodes than the existing control-fucus approaches. Furthermore, we have applied TCOA to two bimolecular expert-curate networks. Source code for our TCOA is freely available from http://sysbio.sibcb.ac.cn/cb/chenlab/software.htm or https://github.com/WilfongGuo/guoweifeng . Conclusions In the previous theoretical research for the full control, there exists an observation and conclusion that the driver nodes tend to be low-degree nodes. However, for target control the biological networks, we find interestingly that the driver nodes tend to be high-degree nodes, which is more consistent with the biological experimental observations. Furthermore, our results supply the novel insights into how we can efficiently target control a complex system, and especially many evidences on the practical strategic utility of TCOA to incorporate prior drug information into potential drug-target forecasts. Thus applicably, our method paves a novel and efficient way to identify the drug targets for leading the phenotype transitions of underlying biological networks.http://link.springer.com/article/10.1186/s12864-017-4332-zTarget controlObjectives-guided optimizationDrug targetsDynamics of complex networks |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Wei-Feng Guo Shao-Wu Zhang Qian-Qian Shi Cheng-Ming Zhang Tao Zeng Luonan Chen |
spellingShingle |
Wei-Feng Guo Shao-Wu Zhang Qian-Qian Shi Cheng-Ming Zhang Tao Zeng Luonan Chen A novel algorithm for finding optimal driver nodes to target control complex networks and its applications for drug targets identification BMC Genomics Target control Objectives-guided optimization Drug targets Dynamics of complex networks |
author_facet |
Wei-Feng Guo Shao-Wu Zhang Qian-Qian Shi Cheng-Ming Zhang Tao Zeng Luonan Chen |
author_sort |
Wei-Feng Guo |
title |
A novel algorithm for finding optimal driver nodes to target control complex networks and its applications for drug targets identification |
title_short |
A novel algorithm for finding optimal driver nodes to target control complex networks and its applications for drug targets identification |
title_full |
A novel algorithm for finding optimal driver nodes to target control complex networks and its applications for drug targets identification |
title_fullStr |
A novel algorithm for finding optimal driver nodes to target control complex networks and its applications for drug targets identification |
title_full_unstemmed |
A novel algorithm for finding optimal driver nodes to target control complex networks and its applications for drug targets identification |
title_sort |
novel algorithm for finding optimal driver nodes to target control complex networks and its applications for drug targets identification |
publisher |
BMC |
series |
BMC Genomics |
issn |
1471-2164 |
publishDate |
2018-01-01 |
description |
Abstract Background The advances in target control of complex networks not only can offer new insights into the general control dynamics of complex systems, but also be useful for the practical application in systems biology, such as discovering new therapeutic targets for disease intervention. In many cases, e.g. drug target identification in biological networks, we usually require a target control on a subset of nodes (i.e., disease-associated genes) with minimum cost, and we further expect that more driver nodes consistent with a certain well-selected network nodes (i.e., prior-known drug-target genes). Results Therefore, motivated by this fact, we pose and address a new and practical problem called as target control problem with objectives-guided optimization (TCO): how could we control the interested variables (or targets) of a system with the optional driver nodes by minimizing the total quantity of drivers and meantime maximizing the quantity of constrained nodes among those drivers. Here, we design an efficient algorithm (TCOA) to find the optional driver nodes for controlling targets in complex networks. We apply our TCOA to several real-world networks, and the results support that our TCOA can identify more precise driver nodes than the existing control-fucus approaches. Furthermore, we have applied TCOA to two bimolecular expert-curate networks. Source code for our TCOA is freely available from http://sysbio.sibcb.ac.cn/cb/chenlab/software.htm or https://github.com/WilfongGuo/guoweifeng . Conclusions In the previous theoretical research for the full control, there exists an observation and conclusion that the driver nodes tend to be low-degree nodes. However, for target control the biological networks, we find interestingly that the driver nodes tend to be high-degree nodes, which is more consistent with the biological experimental observations. Furthermore, our results supply the novel insights into how we can efficiently target control a complex system, and especially many evidences on the practical strategic utility of TCOA to incorporate prior drug information into potential drug-target forecasts. Thus applicably, our method paves a novel and efficient way to identify the drug targets for leading the phenotype transitions of underlying biological networks. |
topic |
Target control Objectives-guided optimization Drug targets Dynamics of complex networks |
url |
http://link.springer.com/article/10.1186/s12864-017-4332-z |
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