| Literature DB >> 35869434 |
Ao-Mei Li1, Zhong-Liang Chen1, Cui-Xian Qin1, Zi-Tong Li2, Fen Liao1, Ming-Qiao Wang3, Prakash Lakshmanan1,4,5, Yang-Rui Li1, Miao Wang6, You-Qiang Pan7, Dong-Liang Huang8.
Abstract
BACKGROUND: Sugarcane is the most important sugar crop, contributing > 80% of global sugar production. High sucrose content is a key target of sugarcane breeding, yet sucrose improvement in sugarcane remains extremely slow for decades. Molecular breeding has the potential to break through the genetic bottleneck of sucrose improvement. Dissecting the molecular mechanism(s) and identifying the key genetic elements controlling sucrose accumulation will accelerate sucrose improvement by molecular breeding. In our previous work, a proteomics dataset based on 12 independent samples from high- and low-sugar genotypes treated with ethephon or water was established. However, in that study, employing conventional analysis, only 25 proteins involved in sugar metabolism were identified .Entities:
Keywords: Differentially abundant protein; Proteomics; Statistical approach; Sucrose accumulation; Sugarcane
Mesh:
Substances:
Year: 2022 PMID: 35869434 PMCID: PMC9308345 DOI: 10.1186/s12864-022-08768-2
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 4.547
Fig. 1The scatter plot of first and second principal components (PCs) ofsugarcane proteomics data. PCs were calculated from the data before (a) and after (b) batch effect correction
Fig. 2Summary of DAPs detected by three different statistical analysis approaches. Venn diagram of DAPs detected by three methods based on comparisons between genotypes (A) and between water and ethephon treatments (C). Up-regulated and down-regulated proteins detected in genotype (B) and treatments (D)comparisons by the three methodsThe protein number of S1-S3 in (A) is identical to that in Supplementary Tables 1, 2 and 3, and the number of S5-S7 in (C) is identical to that in Supplementary Tables 5, 6 and 7
Fig. 3KEGG analysis of annotated DAPs detected by three different statistical approaches. The size of the dots corresponds to the number of DAPs in each pathway. The color displays the significance of enrichment
Differentially abundant proteins related to sucrose accumulation identified in this work
Protein ID and names in italic bold indicate DAPs with their encoding genes showing differential expression at transcriptional level [18], and those with bold font with gray background indicate proteins overlapping between those identified in the current and our previous work [19]
Fig. 4Western blot validation of differentially abundant proteins. RCK: high-sugar genotype with water control; MCK: low-sugar genotype with water control; R400: high-sugar genotype with ethephon treatment; M400: low-sugar genotype with ethephon treatment. Number after sample code (-1, -2, -3) represents the replicate number
Fig. 5The protein-protein interaction network based on DAPs related to sugar metabolism. Each node represents a protein. The helical symbol in the node indicates the known 3D structure of the protein, and empty nodes indicate unknown proteins. The line between two nodes represents interaction and multiple lines represent various interactions between two proteins
Fig. 6The putative network of key proteins associated with sucrose accumulation in sugarcane