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国家自然科学基金(61134013)

作品数:6 被引量:14H指数:3
相关作者:冯文辉赵文虓陈翰馥更多>>
相关机构:中国科学院数学与系统科学研究院更多>>
发文基金:国家自然科学基金国家重点基础研究发展计划SA-SIBS优秀人才奖励基金更多>>
相关领域:理学医药卫生建筑科学生物学更多>>

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6 条 记 录,以下是 1-8
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Proteome-wide prediction of protein-protein interactions from high-throughput data
2012年
In this paper,we present a brief review of the existing computational methods for predicting proteome-wide protein-protein interaction networks from high-throughput data.The availability of various types of omics data provides great opportunity and also un-precedented challenge to infer the interactome in cells.Reconstructing the interactome or interaction network is a crucial step for studying the functional relationship among proteins and the involved biological processes.The protein interaction network will provide valuable resources and alternatives to decipher the mechanisms of these functionally interacting elements as well as the running system of cellular operations.In this paper,we describe the main steps of predicting protein-protein interaction networks and categorize the available ap-proaches to couple the physical and functional linkages.The future topics and the analyses beyond prediction are also discussed and concluded.
Zhi-Ping LiuLuonan Chen
关键词:PROTEOMICSPREDICTION
Variable selection in identification of a high dimensional nonlinear non-parametric system
2015年
The problem of variable selection in system identification of a high dimensional nonlinear non-parametric system is described.The inherent difficulty, the curse of dimensionality, is introduced. Then its connections to various topics and research areas are briefly discussed, including order determination, pattern recognition, data mining, machine learning, statistical regression and manifold embedding. Finally, some results of variable selection in system identification in the recent literature are presented.
Er-Wei BAIWenxiao ZHAOWeixing ZHENG
关键词:模式识别非线性高维
Edge biomarkers for classification and prediction of phenotypes被引量:5
2014年
In general,a disease manifests not from malfunction of individual molecules but from failure of the relevant system or network,which can be considered as a set of interactions or edges among molecules.Thus,instead of individual molecules,networks or edges are stable forms to reliably characterize complex diseases.This paper reviews both traditional node biomarkers and edge biomarkers,which have been newly proposed.These biomarkers are classified in terms of their contained information.In particular,we show that edge and network biomarkers provide novel ways of stably and reliably diagnosing the disease state of a sample.First,we categorize the biomarkers based on the information used in the learning and prediction steps.We then briefly introduce conventional node biomarkers,or molecular biomarkers without network information,and their computational approaches.The main focus of this paper is edge and network biomarkers,which exploit network information to improve the accuracy of diagnosis and prognosis.Moreover,by extracting both network and dynamic information from the data,we can develop dynamical network and edge biomarkers.These biomarkers not only diagnose the immediate pre-disease state but also detect the critical molecules or networks by which the biological system progresses from the healthy to the disease state.The identified critical molecules can be used as drug targets,and the critical state indicates the critical point of disease control.The paper also discusses representative biomarker-based methods.
ZENG TaoZHANG WanWeiYU XiangTianLIU XiaoPingLI MeiYiLIU RuiCHEN LuoNan
关键词:生物标志物网络信息分子间相互作用疾病控制
基于集值辨识的复杂疾病全基因组关联分析
本文基于集值辨识方法对复杂疾病进行全基因组关联分析。首先建立集值系统模型以刻画单核苷酸多态性(SNP)信息与复杂疾病表型的关系,为了辨识系统参数,介绍了集值辨识中的一种基于极大似然估计的迭代算法,给出了一个仿真算例说明迭...
毕文健赵延龙刘晨星岳伟华
关键词:复杂疾病全基因组关联分析迭代算法
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Big Biological Data:Challenges and Opportunities被引量:3
2014年
In‘‘Omics’’era of the life sciences,data is presented in many forms,which represent the information at various levels of bio logical systems,including data about genome,transcriptome epigenome,proteome,metabolome,molecular imaging,molec ular pathways,different population of people and clinical/med ical records.The biological data is big,and its scale has already been well beyond petabyte(PB)even exabyte(EB).
Yixue LiLuonan Chen
关键词:生物数据个性化医疗数据呈现逻辑系统分子成像
无抑制作用代谢网络在多平衡态性质意义下的强连通分解
针对无抑制作用的代谢网络,本文提出了一种强连通分解方法,通过研究分解后的子网络分析整体网络的多平衡态性质。基于代谢网络的拓扑结构,构造了其对应的代谢反应图和相互作用图,引入了紧缩运算的定义,构造了强连通分解算法;给出了该...
毕文健郭金赵延龙张纪峰
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多自主单输入单输出Hammerstein系统的输出同步
本文研究噪声环境下多自主单输入单输出Hammerstein系统的输出同步问题.通过将问题转化为未知函数求根,基于分布式扩张截尾随机逼近算法给出了分布式控制,并证明了控制算法的收敛性.最后,通过数值仿真验证了理论结果.
冯文辉陈翰馥
关键词:HAMMERSTEIN系统多自主体系统分布式算法
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多输入多输出Hammerstein和Wiener系统的适应调节被引量:2
2016年
研究多输入多输出Hammerstein系统和Wiener系统的适应调节,系统输入维数不超过输出维数,并且量测带有加性噪声.首先证明了最优调节控制的存在性,接着构造了基于扩展截尾随机逼近(SAAWET)算法的适应调节控制,并证明了调节误差在一定条件下达到最小,最后通过数值仿真验证了理论结果.
冯文辉陈翰馥赵文虓
关键词:HAMMERSTEIN系统
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