2013
DOI: 10.1186/1752-0509-7-1
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Inference of dynamical gene-regulatory networks based on time-resolved multi-stimuli multi-experiment data applying NetGenerator V2.0

Abstract: BackgroundInference of gene-regulatory networks (GRNs) is important for understanding behaviour and potential treatment of biological systems. Knowledge about GRNs gained from transcriptome analysis can be increased by multiple experiments and/or multiple stimuli. Since GRNs are complex and dynamical, appropriate methods and algorithms are needed for constructing models describing these dynamics. Algorithms based on heuristic approaches reduce the effort in parameter identification and computation time.Results… Show more

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Cited by 127 publications
(154 citation statements)
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“…We first applied LSOSS to detect differentially expressed microRNAs and genes from the RNA-seq data. LSOSS generally outperforms the t -statistics and is more competent for cancer data analysis, as our previous studies indicated [22, 37]. Then the inverse expression pattern of miRNAs and genes was predicted by the spearman correlation.…”
Section: Discussionmentioning
confidence: 97%
“…We first applied LSOSS to detect differentially expressed microRNAs and genes from the RNA-seq data. LSOSS generally outperforms the t -statistics and is more competent for cancer data analysis, as our previous studies indicated [22, 37]. Then the inverse expression pattern of miRNAs and genes was predicted by the spearman correlation.…”
Section: Discussionmentioning
confidence: 97%
“…Based on these annotations, the edges were assigned directions, however, interactions describing a ‘binding’ event were represented as bidirectional edges. SignaLink v 2.0 (Fazekas et al, 2013) was mined to identify regulatory interactions of transcriptional, post-transcriptional and pathway regulators. Additional interactions present in non-disease conditions were identified from the Cancer Cell Map (Krogan et al, 2015), and the BioGRID database (Chatr-Aryamontri et al, 2015) was mined to identify unique interactions not reported by the other resources used.…”
Section: Methodsmentioning
confidence: 99%
“…The first reported human pathogens that could infect and cause disease in zebrafish were bacteria (reviewed in Trede et al, 2004; van der Sar et al, 2004; Phelps and Neely, 2005; Sullivan and Kim, 2008; Meijer and Spaink, 2011; Milligan-Myhre et al, 2011; Novoa and Figueras, 2011). There are now reports of zebrafish models of human fungal (Chao et al, 2010; Brothers et al, 2011; Brothers et al, 2013; Chen et al, 2013; Gratacap et al, 2013; Kuo et al, 2013; Y.-C. Wang et al, 2013) and human viral pathogen infections (Burgos et al, 2008; Ding et al, 2011; Antoine et al, 2013; Palha et al, 2013; K. A. Gabor and C. H. Kim, personal communication). We will describe the human viral illnesses for which there are currently zebrafish infection models and then discuss the findings and insights obtained thus far from these zebrafish models of human viral infections.…”
Section: Zebrafish Models Of Human Viral Illnessesmentioning
confidence: 99%