Computational Detection of Stage-Specific Transcription Factor Clusters during Heart Development

2016 | journal article. A publication with affiliation to the University of Göttingen.

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​Computational Detection of Stage-Specific Transcription Factor Clusters during Heart Development​
Zeidler, S. ; Meckbach, C. ; Tacke, R.; Raad, F. S. ; Roa, A.; Uchida, S. & Zimmermann, W.-H.  et al.​ (2016) 
Frontiers in Genetics7 art. 33​.​ DOI: https://doi.org/10.3389/fgene.2016.00033 

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Authors
Zeidler, Sebastian ; Meckbach, Cornelia ; Tacke, Rebecca; Raad, Farah S. ; Roa, Angelica; Uchida, Shizuka; Zimmermann, Wolfram-Hubertus ; Wingender, Edgar ; Gültas, Mehmet
Abstract
Transcription factors (TFs) regulate gene expression in living organisms. In higher organisms, TFs often interact in non-random combinations with each other to control gene transcription. Understanding the interactions is key to decipher mechanisms underlying tissue development. The aim of this study was to analyze co-occurring transcription factor binding sites (TFBSs) in a time series dataset from a new cell-culture model of human heart muscle development in order to identify common as well as specific co-occurring TFBS pairs in the promoter regions of regulated genes which can be essential to enhance cardiac tissue developmental processes. To this end, we separated available RNAseq dataset into five temporally defined groups: (i) mesoderm induction stage; (ii) early cardiac specification stage; (iii) late cardiac specification stage; (iv) early cardiac maturation stage; (v) late cardiac maturation stage, where each of these stages is characterized by unique differentially expressed genes (DEGs). To identify TFBS pairs for each stage, we applied the MatrixCatch algorithm, which is a successful method to deduce experimentally described TFBS pairs in the promoters of the DEGs. Although DEGs in each stage are distinct, our results show that the TFBS pair networks predicted by MatrixCatch for all stages are quite similar. Thus, we extend the results of MatrixCatch utilizing a Markov clustering algorithm (MCL) to perform network analysis. Using our extended approach, we are able to separate the TFBS pair networks in several clusters to highlight stage-specific co-occurences between TFBSs. Our approach has revealed clusters that are either common (NFAT or HMGIY clusters) or specific (SMAD or AP-1 clusters) for the individual stages. Several of these clusters are likely to play an important role during the cardiomyogenesis. Further, we have shown that the related TFs of TFBSs in the clusters indicate potential synergistic or antagonistic interactions to switch between different stages. Additionally, our results suggest that cardiomyogenesis follows the hourglass model which was already proven for Arabidopsis and some vertebrates. This investigation helps us to get a better understanding of how each stage of cardiomyogenesis is affected by different combination of TFs. Such knowledge may help to understand basic principles of stem cell differentiation into cardiomyocytes
Issue Date
2016
Publisher
Frontiers Media S.A.
Journal
Frontiers in Genetics 
ISSN
1664-8021
eISSN
1664-8021
Language
English

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