Identification of Potential Genes Encoding Protein Transporters in Arabidopsis thaliana Glucosinolate (GSL) Metabolism.
Sarahani HarunNor Afiqah-AlengFatin Izzati Abdul HadiSu Datt LamZeti Azura Mohamed HusseinPublished in: Life (Basel, Switzerland) (2022)
Several species in Brassicaceae produce glucosinolates (GSLs) to protect themselves against pests. As demonstrated in A. thaliana , the reallocation of defence compounds, of which GSLs are a major part, is highly dependent on transport processes and serves to protect high-value tissues such as reproductive tissues. This study aimed to identify potential GSL-transporter proteins (TPs) using a network-biology approach. The known A. thaliana GSL genes were retrieved from the literature and pathway databases and searched against several co-expression databases to generate a gene network consisting of 1267 nodes and 14,308 edges. In addition, 1151 co-expressed genes were annotated, integrated, and visualised using relevant bioinformatic tools. Based on three criteria, 21 potential GSL genes encoding TPs were selected. The AST68 and ABCG40 potential GSL TPs were chosen for further investigation because their subcellular localisation is similar to that of known GSL TPs (SULTR1;1 and SULTR1;2) and ABCG36, respectively. However, AST68 was selected for a molecular-docking analysis using AutoDOCK Vina and AutoDOCK 4.2 with the generated 3D model, showing that both domains were well superimposed on the homologs. Both molecular-docking tools calculated good binding-energy values between the sulphate ion and Ser419 and Val172, with the formation of hydrogen bonds and van der Waals interactions, respectively, suggesting that AST68 was one of the sulphate transporters involved in GSL biosynthesis. This finding illustrates the ability to use computational analysis on gene co-expression data to screen and characterise plant TPs on a large scale to comprehensively elucidate GSL metabolism in A. thaliana . Most importantly, newly identified potential GSL transporters can serve as molecular tools in improving the nutritional value of crops.
Keyphrases
- molecular docking
- genome wide
- genome wide identification
- poor prognosis
- molecular dynamics simulations
- bioinformatics analysis
- arabidopsis thaliana
- systematic review
- human health
- big data
- binding protein
- copy number
- dna methylation
- long non coding rna
- squamous cell carcinoma
- early stage
- risk assessment
- radiation therapy
- deep learning
- single cell
- neoadjuvant chemotherapy
- rectal cancer