DREAM4: Combining Genetic and Dynamic Information to Identify Biological Networks and Dynamical Models

被引:177
作者
Greenfield, Alex [1 ]
Madar, Aviv [2 ]
Ostrer, Harry [3 ]
Bonneau, Richard [1 ,2 ,4 ]
机构
[1] NYU, Sackler Sch Med, Computat Biol Program, New York, NY 10012 USA
[2] NYU, Dept Biol, Ctr Genom & Syst Biol, New York, NY 10003 USA
[3] NYU, Dept Pediat, Langone Med Ctr, Human Genet Program, New York, NY 10016 USA
[4] NYU, Courant Inst Math Sci, Dept Comp Sci, New York, NY 10012 USA
来源
PLOS ONE | 2010年 / 5卷 / 10期
基金
美国国家卫生研究院; 美国国家科学基金会;
关键词
REGULATORY NETWORKS; CLUSTER-ANALYSIS; CHIP-SEQ; INFERENCE; RECONSTRUCTION;
D O I
10.1371/journal.pone.0013397
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Background: Current technologies have lead to the availability of multiple genomic data types in sufficient quantity and quality to serve as a basis for automatic global network inference. Accordingly, there are currently a large variety of network inference methods that learn regulatory networks to varying degrees of detail. These methods have different strengths and weaknesses and thus can be complementary. However, combining different methods in a mutually reinforcing manner remains a challenge. Methodology: We investigate how three scalable methods can be combined into a useful network inference pipeline. The first is a novel t-test-based method that relies on a comprehensive steady-state knock-out dataset to rank regulatory interactions. The remaining two are previously published mutual information and ordinary differential equation based methods (tlCLR and Inferelator 1.0, respectively) that use both time-series and steady-state data to rank regulatory interactions; the latter has the added advantage of also inferring dynamic models of gene regulation which can be used to predict the system's response to new perturbations. Conclusion/Significance: Our t-test based method proved powerful at ranking regulatory interactions, tying for first out of 19 methods in the DREAM4 100-gene in-silico network inference challenge. We demonstrate complementarity between this method and the two methods that take advantage of time-series data by combining the three into a pipeline whose ability to rank regulatory interactions is markedly improved compared to either method alone. Moreover, the pipeline is able to accurately predict the response of the system to new conditions (in this case new double knock-out genetic perturbations). Our evaluation of the performance of multiple methods for network inference suggests avenues for future methods development and provides simple considerations for genomic experimental design. Our code is publicly available at http://err.bio.nyu.edu/inferelator/.
引用
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页数:14
相关论文
共 49 条
  • [1] ALVAREZ M, 2009, P 12 INT WORKSH ART, V5, P9
  • [2] [Anonymous], 1993, An introduction to the bootstrap
  • [3] [Anonymous], BMC BIOINFORMATICS
  • [4] Inference of gene regulatory networks and compound mode of action from time course gene expression profiles
    Bansal, M
    Della Gatta, G
    di Bernardo, D
    [J]. BIOINFORMATICS, 2006, 22 (07) : 815 - 822
  • [5] How to infer gene networks from expression profiles
    Bansal, Mukesh
    Belcastro, Vincenzo
    Ambesi-Impiombato, Alberto
    di Bernardo, Diego
    [J]. MOLECULAR SYSTEMS BIOLOGY, 2007, 3 (1)
  • [6] Reverse engineering of regulatory networks in human B cells
    Basso, K
    Margolin, AA
    Stolovitzky, G
    Klein, U
    Dalla-Favera, R
    Califano, A
    [J]. NATURE GENETICS, 2005, 37 (04) : 382 - 390
  • [7] Iterative signature algorithm for the analysis of large-scale gene expression data
    Bergmann, S
    Ihmels, J
    Barkai, N
    [J]. PHYSICAL REVIEW E, 2003, 67 (03): : 18
  • [8] Learning biological networks: from modules to dynamics
    Bonneau, Richard
    [J]. NATURE CHEMICAL BIOLOGY, 2008, 4 (11) : 658 - 664
  • [9] A predictive model for transcriptional control of physiology in a free living cell
    Bonneau, Richard
    Facciotti, Marc T.
    Reiss, David J.
    Schmid, Amy K.
    Pan, Min
    Kaur, Amardeep
    Thorsson, Vesteinn
    Shannon, Paul
    Johnson, Michael H.
    Bare, J. Christopher
    Longabaugh, William
    Vuthoori, Madhavi
    Whitehead, Kenia
    Madar, Aviv
    Suzuki, Lena
    Mori, Tetsuya
    Chang, Dong-Eun
    DiRuggiero, Jocelyne
    Johnson, Carl H.
    Hood, Leroy
    Baliga, Nitin S.
    [J]. CELL, 2007, 131 (07) : 1354 - 1365
  • [10] The Inferelator:: an algorithm for learning parsimonious regulatory networks from systems-biology data sets de novo
    Bonneau, Richard
    Reiss, David J.
    Shannon, Paul
    Facciotti, Marc
    Hood, Leroy
    Baliga, Nitin S.
    Thorsson, Vesteinn
    [J]. GENOME BIOLOGY, 2006, 7 (05)