k- Strong Inference Algorithm: A Hybrid Information Theory Based Gene Network Inference Algorithm

被引:0
作者
Cingiz, Mustafa Ozgur [1 ]
机构
[1] Bursa Tech Univ, Fac Engn & Nat Sci, Comp Engn Dept, Mimar Sinan Campus, TR-16310 Yildirim, Bursa, Turkiye
关键词
Association estimators; Gene network inference algorithms; Gene co-expression networks; Gene regulatory networks; Overlap analysis; ASSOCIATION ESTIMATORS; REGULATORY NETWORKS; COEXPRESSION; EXPRESSION; DATABASE;
D O I
10.1007/s12033-023-00929-2
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
Gene networks allow researchers to understand the underlying mechanisms between diseases and genes while reducing the need for wet lab experiments. Numerous gene network inference (GNI) algorithms have been presented in the literature to infer accurate gene networks. We proposed a hybrid GNI algorithm, k-Strong Inference Algorithm (ksia), to infer more reliable and robust gene networks from omics datasets. To increase reliability, ksia integrates Pearson correlation coefficient (PCC) and Spearman rank correlation coefficient (SCC) scores to determine mutual information scores between molecules to increase diversity of relation predictions. To infer a more robust gene network, ksia applies three different elimination steps to remove redundant and spurious relations between genes. The performance of ksia was evaluated on microbe microarrays database in the overlap analysis with other GNI algorithms, namely ARACNE, C3NET, CLR, and MRNET. Ksia inferred less number of relations due to its strict elimination steps. However, ksia generally performed better on Escherichia coli (E.coli) and Saccharomyces cerevisiae (yeast) gene expression datasets due to F- measure and precision values. The integration of association estimator scores and three elimination stages slightly increases the performance of ksia based gene networks. Users can access ksia R package and user manual of package via https://github.com/ozgurcingiz/ksia.
引用
收藏
页码:3213 / 3225
页数:13
相关论文
共 64 条
  • [1] Inferring the conservative causal core of gene regulatory networks
    Altay, Goekmen
    Emmert-Streib, Frank
    [J]. BMC SYSTEMS BIOLOGY, 2010, 4
  • [2] Guidance for RNA-seq co-expression network construction and analysis: safety in numbers
    Ballouz, S.
    Verleyen, W.
    Gillis, J.
    [J]. BIOINFORMATICS, 2015, 31 (13) : 2123 - 2130
  • [3] Consistent model selection of discrete Bayesian networks from incomplete data
    Balov, Nikolay
    [J]. ELECTRONIC JOURNAL OF STATISTICS, 2013, 7 : 1047 - 1077
  • [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] DCI: learning causal differences between gene regulatory networks
    Belyaeva, Anastasiya
    Squires, Chandler
    Uhler, Caroline
    [J]. BIOINFORMATICS, 2021, 37 (18) : 3067 - 3069
  • [6] Carriage of Shiga toxin phage profoundly affects Escherichia coli gene expression and carbon source utilization
    Berger, Petya
    Kouzel, Ivan U.
    Berger, Michael
    Haarmann, Nadja
    Dobrindt, Ulrich
    Koudelka, Gerald B.
    Mellmann, Alexander
    [J]. BMC GENOMICS, 2019, 20 (1)
  • [7] Using microarray gene signatures to elucidate mechanisms of antibiotic action and resistance
    Brazas, MD
    Hancock, REW
    [J]. DRUG DISCOVERY TODAY, 2005, 10 (18) : 1245 - 1252
  • [8] Butte A J, 2000, Pac Symp Biocomput, P418
  • [9] Butte A.J., 2003, Relevance networks: a first step toward finding genetic regulatory networks within microarray data, P428, DOI [10.1007/0-387-21679-0_19, DOI 10.1007/0-387-21679-0_19]
  • [10] Data mining of Saccharomyces cerevisiae mutants engineered for increased tolerance towards inhibitors in lignocellulosic hydrolysates
    Camara, Elena
    Olsson, Lisbeth
    Zrimec, Jan
    Zelezniak, Aleksej
    Geijer, Cecilia
    Nygard, Yvonne
    [J]. BIOTECHNOLOGY ADVANCES, 2022, 57