Title :
Computational Prediction of Abiotic Stress Responsible MicroRNAs in Vitis vinifera Genome
Author_Institution :
Biol. Sci. Dept., DeZhou Univ., Dezhou
Abstract :
In this paper, we predicted abiotic stress responsive microRNAs in wine grape genome by homolog search based on computational approach. We successfully predicted 18 grape microRMAs from total 12 query-microRNAs families which chosed from Arabidopsis, Oryza and Populus plants. The MiPred software prediction results, the stem-loop structure feature analysis and pol II promoter prediction results showed that these 18 putative microRNAs are real plant microRNAs. Several known cold, drought stress responding transcript factor binding motifs were identified in these 18 promoter regions. Word spyanalysis displayed 2 remarkable consensus motifs in these promoters with Arabidopsis microRNAs. Four groups of targets were predicted in this work, including CCAAT-binding transcription factor, ring finger transcription factor, sugar metabolism and transport proteins, methyl-transferase and some unknown grape proteins. 3 putative targets of vv-mirRNA169j, 477a and vv-miR393a have reverse transcriptase and leucine-rich repeats (LRRs) ribonuclease inhibitor activity.
Keywords :
biology computing; genomics; macromolecules; organic compounds; MicroRNA; Populus plants; Vitis vinifera genome; abiotic stress; computational prediction; leucine-rich repeats; ribonuclease inhibitor activity; ring finger transcription factor; stem-loop structure feature analysis; sugar metabolism; transcript factor binding motifs; transport proteins; wine grape genome; Animal structures; Biochemistry; Bioinformatics; Biology computing; Computational biology; Genomics; Pipelines; Proteins; RNA; Stress; Abiotic stress; Computational Prediction; Vitis vinifera; microRNAt;
Conference_Titel :
Electronic Computer Technology, 2009 International Conference on
Conference_Location :
Macau
Print_ISBN :
978-0-7695-3559-3
DOI :
10.1109/ICECT.2009.101