DTW-MIC Coexpression Networks from Time-Course Data

被引:5
|
作者
Riccadonna, Samantha [1 ]
Jurman, Giuseppe [2 ]
Visintainer, Roberto [2 ]
Filosi, Michele [2 ]
Furlanello, Cesare [2 ]
机构
[1] Fdn Bruno Kessler, Trento, Italy
[2] Fdn Edmund Mach, Res & Innovat Ctr, San Michele All Adige, Italy
来源
PLOS ONE | 2016年 / 11卷 / 03期
关键词
MAXIMAL INFORMATION COEFFICIENT; GENE REGULATORY NETWORKS; MUTUAL INFORMATION; SERIES DATA; INFERENCE; EXPRESSION; ALGORITHM; RECONSTRUCTION; DREAM; CLASSIFICATION;
D O I
10.1371/journal.pone.0152648
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
When modeling coexpression networks from high-throughput time course data, Pearson Correlation Coefficient (PCC) is one of the most effective and popular similarity functions. However, its reliability is limited since it cannot capture non-linear interactions and time shifts. Here we propose to overcome these two issues by employing a novel similarity function, Dynamic Time Warping Maximal Information Coefficient (DTW-MIC), combining a measure taking care of functional interactions of signals (MIC) and a measure identifying time lag (DTW). By using the Hamming-Ipsen-Mikhailov (HIM) metric to quantify network differences, the effectiveness of the DTW-MIC approach is demonstrated on a set of four synthetic and one transcriptomic datasets, also in comparison to TimeDelay ARACNE and Transfer Entropy.
引用
收藏
页数:29
相关论文
共 50 条
  • [1] Dynamic probabilistic threshold networks to infer signaling pathways from time-course perturbation data
    Kiani, Narsis A.
    Kaderali, Lars
    BMC BIOINFORMATICS, 2014, 15
  • [2] Inference of dynamic networks using time-course data
    Kim, Yongsoo
    Han, Seungmin
    Choi, Seungjin
    Hwang, Daehee
    BRIEFINGS IN BIOINFORMATICS, 2014, 15 (02) : 212 - 228
  • [3] Scalable reverse-engineering of gene regulatory networks from time-course measurements
    Montefusco, Francesco
    Procopio, Anna
    Bates, Declan G.
    Amato, Francesco
    Cosentino, Carlo
    INTERNATIONAL JOURNAL OF ROBUST AND NONLINEAR CONTROL, 2023, 33 (09) : 5023 - 5038
  • [4] Genexpi: a toolset for identifying regulons and validating gene regulatory networks using time-course expression data
    Modrak, Martin
    Vohradsky, Jiri
    BMC BIOINFORMATICS, 2018, 19
  • [5] Inferring cluster-based networks from differently stimulated multiple time-course gene expression data
    Shiraishi, Yuichi
    Kimura, Shuhei
    Okada, Mariko
    BIOINFORMATICS, 2010, 26 (08) : 1073 - 1081
  • [6] An Information Theoretic Approach to Reverse Engineering of Regulatory Gene Networks from Time-Course Data
    Zoppoli, Pietro
    Morganella, Sandro
    Ceccarelli, Michele
    COMPUTATIONAL INTELLIGENCE METHODS FOR BIOINFORMATICS AND BIOSTATISTICS, 2010, 6160 : 97 - 111
  • [7] Bootstrapping Time-Course Gene Expression Data for Gene Networks: Application to Gene Relevance Networks
    Garren, Jeonifer M.
    Kim, Jaejik
    JOURNAL OF COMPUTATIONAL BIOLOGY, 2018, 25 (12) : 1374 - 1384
  • [8] Inferring Gene Regulatory Networks from Single-Cell Time-Course Data Based on Temporal Convolutional Networks
    Tan, Dayu
    Wang, Jing
    Cheng, Zhaolong
    Su, Yansen
    Zheng, Chunhou
    CURRENT BIOINFORMATICS, 2024, 19 (08) : 752 - 764
  • [9] Properties of sparse penalties on inferring gene regulatory networks from time-course gene expression data
    Liu, Li-Zhi
    Wu, Fang-Xiang
    Zhang, Wen-Jun
    IET SYSTEMS BIOLOGY, 2015, 9 (01) : 16 - 24
  • [10] Dynamic Gene and Transcriptional Regulatory Networks Inferring with Multi-Laplacian Prior from Time-Course Gene Microarray Data
    Zhang, L.
    Wu, H. C.
    Chan, S. C.
    Wang, C.
    2017 22ND INTERNATIONAL CONFERENCE ON DIGITAL SIGNAL PROCESSING (DSP), 2017,