| Literature DB >> 23865740 |
Tao Pang, Chu-Yu Ye, Xinli Xia, Weilun Yin.
Abstract
BACKGROUND: Ammopiptanthus mongolicus (Maxim. ex Kom.) Cheng f., an evergreen broadleaf legume shrub, is distributed in Mid-Asia where the temperature can be as low as -30°C during the winter. Although A. mongolicus is an ideal model to study the plant response to cold stress, insufficient genomic resources for this species are available in public databases. To identify genes involved in cold acclimation (a phenomenon experienced by plants after low temperature stress), a high-throughput sequencing technology was applied.Entities:
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Year: 2013 PMID: 23865740 PMCID: PMC3728141 DOI: 10.1186/1471-2164-14-488
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Flow cytometry determination of the nuclear genome sizes of
| 15.53 | 47.07 | 0.329934141 | 824.8353516 |
| 16.48 | 50.06 | 0.329204954 | 823.0123851 |
| 15.62 | 48.16 | 0.324335548 | 810.8388704 |
| 819.56 ± 7.61 |
1Nuclei from maize young leaves serve as a size standard, which has a haploid genome size of 2500 Mb.
Overview of the sequencing and assembly
| Total Raw Reads | 71,441,910 | 73,279,028 | |
| Total Clean Reads | 65,075,656 | 67,287,120 | |
| Total Clean Nucleotides (nt) | 5,856,809,040 | 6,055,840,800 | |
| Q20 percentage | 97.39% | 97.60% | |
| N percentage | 0.00% | 0.00% | |
| GC percentage | 45.87% | 45.40% | |
| Total Number | 145,000 | 148,797 | |
| Total Length(nt) | 45,723,903 | 51,308,749 | |
| Mean Length(nt) | 315 | 345 | |
| N50 | 521 | 619 | |
| Total Number | 76,000 | 84,583 | 82,795 |
| Total Length(nt) | 48,956,203 | 57,108,594 | 67,554,337 |
| Mean Length(nt) | 644 | 675 | 816 |
| N50 | 1122 | 1191 | 1343 |
| Total Consensus Sequences | 76,000 | 84,583 | 82,795 |
| Distinct Clusters | 1,831 | 2,043 | 40,988 |
| Distinct Singletons | 74,169 | 82,540 | 41,807 |
Figure 1Length distribution of the contigs and unigenes. The length distribution of contigs of CT sample (A), contigs of CK sample (B), unigenes of CT sample (C), unigenes of CK sample (D), and the all-unigenes (E).
Figure 2Number of unigenes blasted to NR, Swiss-Prot, KEGG and COG (E < 0.00001).
Figure 3Histogram presentation of Gene Ontology classification. The results are summarized in three main categories: biological process, cellular component, and molecular function. The y-axis on the right side indicates the percent of genes in a category, and the y-axis on the left side means the number of genes.
Figure 4COG classificationf. A total of 17327 unigenes were assigned to 25 classifications. The capital letters in x-axis indicates the COG categories as listed on the right of the histogram, and the y-axis indicates the number of unigenes.
Figure 5Length distribution of the protein coding region prediction (CDS). A. The length distribution of CDs using BLASTx. B. The length distribution of proteins using BLASTx. C. The length distribution of CDs using ESTscan. D. The length distribution of proteins using ESTscan.
Figure 6Distribution of transcript changes in cold-stress sample compared with control sample. A. The expression levels of all-unigenes B. The distribution of differentially expressed genes.
Statistical enrichment analysis for KEGG metabolic pathways (≤0.05)
| | | | |||
|---|---|---|---|---|---|
| ko01100 | Metabolic pathways | 5905 (21.49%) | 607 | 2004 | 9.37E-18 |
| ko01110 | Biosynthesis of secondary metabolites | 2821 (10.27%) | 322 | 989 | 4.54E-16 |
| Carbohydrate metabolism | |||||
| ko00040 | Pentose and glucuronate interconversions | 233 (0.85%) | 31 | 130 | 3.28E-20 |
| ko00500 | Starch and sucrose metabolism | 651 (2.37%) | 72 | 257 | 3.70E-09 |
| ko00053 | Ascorbate and aldarate metabolism | 208 (0.76%) | 21 | 80 | 0.004397 |
| ko00010 | Glycolysis / Gluconeogenesis | 337 (1.23%) | 31 | 119 | 0.03086 |
| ko00660 | C5-Branched dibasic acid metabolism | 11 (0.04%) | 5 | 3 | 0.026546 |
| ko00620 | Pyruvate metabolism | 247 (0.9%) | 20 | 94 | 0.017667 |
| Amino acid metabolism | |||||
| ko00360 | Phenylalanine metabolism | 214 (0.78%) | 23 | 92 | 1.42E-05 |
| ko00270 | Cysteine and methionine metabolism | 225 (0.82%) | 34 | 78 | 0.000967 |
| ko00250 | Alanine, aspartate and glutamate metabolism | 171 (0.62%) | 21 | 63 | 0.006038 |
| ko00300 | Lysine biosynthesis | 39 (0.14%) | 5 | 21 | 0.000519 |
| ko00290 | Valine, leucine and isoleucine biosynthesis | 90 (0.33%) | 16 | 33 | 0.00268 |
| ko00380 | Tryptophan metabolism | 116 (0.42%) | 19 | 42 | 0.002663 |
| ko00260 | Glycine, serine and threonine metabolism | 139 (0.51%) | 16 | 52 | 0.013956 |
| ko00330 | Arginine and proline metabolism | 167 (0.61%) | 25 | 52 | 0.045321 |
| Metabolism of other amino acids | |||||
| ko00460 | Cyanoamino acid metabolism | 167 (0.61%) | 23 | 71 | 7.09E-06 |
| Biosynthesis of other secondary metabolites | |||||
| ko00940 | Phenylpropanoid biosynthesis | 483 (1.76%) | 57 | 201 | 2.29E-10 |
| ko00941 | Flavonoid biosynthesis | 272 (0.99%) | 29 | 124 | 1.24E-08 |
| ko00945 | Stilbenoid, diarylheptanoid and gingerol biosynthesis | 241 (0.88%) | 39 | 96 | 1.20E-07 |
| ko00944 | Flavone and flavonol biosynthesis | 78 (0.28%) | 8 | 37 | 0.000808 |
| ko00966 | Glucosinolate biosynthesis | 40 (0.15%) | 11 | 16 | 0.000298 |
| ko00402 | Benzoxazinoid biosynthesis | 43 (0.16%) | 3 | 24 | 0.001612 |
| ko00950 | Isoquinoline alkaloid biosynthesis | 40 (0.15%) | 5 | 18 | 0.015469 |
| Energy metabolism | |||||
| ko00195 | Photosynthesis | 113 (0.41%) | 4 | 72 | 1.86E-09 |
| Lipid metabolism | |||||
| ko00592 | alpha-Linolenic acid metabolism | 156 (0.57%) | 20 | 67 | 2.46E-05 |
| ko01040 | Biosynthesis of unsaturated fatty acids | 94 (0.34%) | 9 | 44 | 0.000624 |
| ko00565 | Ether lipid metabolism | 675 (2.46%) | 83 | 215 | 0.006119 |
| ko00062 | Fatty acid elongation | 6 (0.02%) | 2 | 4 | 0.003736 |
| ko00564 | Glycerophospholipid metabolism | 866 (3.15%) | 110 | 273 | 0.001839 |
| ko00100 | Steroid biosynthesis | 80 (0.29%) | 9 | 31 | 0.034756 |
| ko00591 | Linoleic acid metabolism | 76 (0.28%) | 5 | 35 | 0.013071 |
| ko00071 | Fatty acid metabolism | 136 (0.49%) | 11 | 56 | 0.012113 |
| Metabolism of cofactors and vitamins | |||||
| ko00785 | Lipoic acid metabolism | 11 (0.04%) | 0 | 9 | 0.005247 |
| ko00770 | Pantothenate and CoA biosynthesis | 79 (0.29%) | | | 0.045586 |
| Metabolism of terpenoids and polyketides | |||||
| ko00904 | Diterpenoid biosynthesis | 98 (0.36%) | 10 | 55 | 6.17E-08 |
| ko00903 | Limonene and pinene degradation | 205 (0.75%) | 33 | 83 | 4.46E-07 |
| ko00906 | Carotenoid biosynthesis | 195 (0.71%) | 25 | 85 | 1.07E-06 |
| ko00908 | Zeatin biosynthesis | 312 (1.14%) | 41 | 113 | 0.000209 |
| ko00902 | Monoterpenoid biosynthesis | 30 (0.11%) | 13 | 26 | 0.01791 |
| Glycan Biosynthesis and Metabolism | |||||
| ko00531 | Glycosaminoglycan degradation | 86 (0.31%) | 5 | 39 | 0.017583 |
| Immune system | |||||
| ko04650 | Natural killer cell mediated cytotoxicity | 123 (0.45%) | 23 | 42 | 0.00168 |
| Signal Transduction | |||||
| ko04075 | Plant hormone signal transduction | 1667 (6.07%) | 185 | 614 | 1.87E-13 |
| Environmental Adaptation | |||||
| ko04626 | Plant-pathogen interaction | 1719 (6.26%) | 139 | 693 | 3.34E-15 |
Figure 7Distribution of transcription factors in gene families. A. The distribution of transcription factors according to the gene family information. B. DEGs from every gene family involved in transcription.
Real-time RT-PCR with putative unique transcripts (PUTs)
| Unigene3649_All | CBF3 protein [Glycine max] | 2.11 ± 0.18 | 7.8564 |
| Unigene5045_All | PREDICTED: uncharacterized protein LOC100795990 isoform 1 [Glycine max] | 2.64 ± 0.51 | 2.1173 |
| CL9479.Contig1_All | ICE-like protein [Corylus heterophylla] | 1.90 ± 0.40 | 2.2465 |
| Unigene2612_All | PREDICTED: probable transcription factor PosF21-like [Glycine max] | 2.70 ± 0.67 | 4.3792 |
| CL26498.Contig1_All | Basic leucine zipper transcription factor [Medicago truncatula] | 4.30 ± 2.79 | 2.0836 |
| Unigene12211_All | PREDICTED: microtubule-associated protein 70-5-like [Glycine max] | 2.82 ± 0.11 | 2.9144 |
| CL25117.Contig1_All | Cold acclimation protein COR413-PM1 [Medicago truncatula] | 3.51 ± 0.32 | 2.9919 |
| CL33467.Contig1_All | PREDICTED: sugar transporter ERD6-like 5-like [Glycine max] | 2.44 ± 0.27 | 1.9228 |
| Unigene12905_All | PREDICTED: LOW QUALITY PROTEIN: sugar transporter ERD6-like 16-like [Glycine max] | 12.59 ± 7.89 | 10.7104 |
| CL21996.Contig1_All | PREDICTED: cysteine proteinase RD19a-like [Glycine max] | 1.78 ± 0.10 | 1.2868 |
| Unigene28735_All | Medicago truncatula HVA22-like protein a (MTR_4g108350) mRNA, complete cds | 2.35 ± 0.28 | 2.107 |
| Unigene5543_All | HVA22-like protein e [Medicago truncatula] | 9.91 ± 2.45 | 6.7199 |
| Unigene6814_All | PREDICTED: HVA22-like protein k-like [Glycine max] | 7.02 ± 0.32 | 2.8637 |
| Unigene37576_All | PREDICTED: low-temperature-induced 65 kDa protein-like [Glycine max] | 2.78 ± 1.34 | 7.4373 |
| CL11725.Contig1_All | PREDICTED: low-temperature-induced 65 kDa protein-like [Glycine max] | 2.16 ± 0.17 | 7.5431 |
| CL5093.Contig1_All | Hydrophobic protein LTI6B [Medicago truncatula] | 2.12 ± 0.10 | 3.8777 |
| Unigene5480_All | Hydrophobic protein RCI2A [Arabidopsis thaliana] | 4.32 ± 0.32 | 5.8638 |
| CL26053.Contig1_All | PREDICTED: hydrophobic protein LTI6A-like [Glycine max] | 3.43 ± 0.26 | 1.5422 |
| Unigene37577_All | PREDICTED: low-temperature-induced 65 kDa protein-like [Glycine max] | 3.53 ± 1.07 | 6.5686 |
| CL30168.Contig1_All | seed maturation protein [Glycine tomentella] | 7.42 ± 0.88 | 3.3724 |