| Literature DB >> 28464824 |
Audra L Andrew1, Blair W Perry1, Daren C Card1, Drew R Schield1, Robert P Ruggiero2, Suzanne E McGaugh3, Amit Choudhary4,5, Stephen M Secor6, Todd A Castoe7.
Abstract
BACKGROUND: Previous studies examining post-feeding organ regeneration in the Burmese python (Python molurus bivittatus) have identified thousands of genes that are significantly differentially regulated during this process. However, substantial gaps remain in our understanding of coherent mechanisms and specific growth pathways that underlie these rapid and extensive shifts in organ form and function. Here we addressed these gaps by comparing gene expression in the Burmese python heart, liver, kidney, and small intestine across pre- and post-feeding time points (fasted, one day post-feeding, and four days post-feeding), and by conducting detailed analyses of molecular pathways and predictions of upstream regulatory molecules across these organ systems.Entities:
Keywords: Hyperplasia; Hypertrophy; NRF2; RNAseq; Regeneration; mTOR
Mesh:
Substances:
Year: 2017 PMID: 28464824 PMCID: PMC5412052 DOI: 10.1186/s12864-017-3743-1
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Fig. 1Conceptual overview of differences between Canonical Pathway Analysis (CPA) and Upstream Regulatory Molecule Analysis (URMA). Pairwise analyses on experimental gene expression data (a) identify significantly upregulated and downregulated genes (b). Significantly differentially expressed genes are then analyzed in two distinct IPA analyses (CPA and URMA) (c) Canonical Pathway Analysis predicts pathway activation based on overlap of gene expression data with molecules within the pathway. d Upstream Regulatory Molecule Analysis predicts activation of specific regulatory molecules based on downstream molecules in our gene expression dataset
Numbers of differentially expressed genes between pre- and post-feeding time points for the four organs studied
| Time point Comparisons | ||||||
|---|---|---|---|---|---|---|
| Fasted v 1DPF | 1DPF v 4DPF | Fasted v 4DPF | ||||
| Up | Down | Up | Down | Up | Down | |
| Heart | 208 | 228 | 36 | 40 | 5 | 3 |
| Kidney | 244 | 100 | 5 | 3 | 125 | 22 |
| Liver | 335 | 126 | 29 | 12 | 295 | 76 |
| Small Intestine | 1,271 | 1,042 | 268 | 146 | 547 | 345 |
For each comparison, the numbers of up and downregulated genes were inferred using pairwise analysis with a Benjamini-Hochberg corrected p-value <0.05
Fig. 2Summary of significantly differentially expressed genes for all four organs identified via regression analysis. a Venn diagram depicting the numbers of genes significantly differentially expressed across time points. Darker colors indicate a large number of genes and lighter colors indicate a smaller number of genes. b Heatmaps depicting all significantly differentially expressed genes across all time points in each organ. 722 genes were significantly differentially expressed in the heart. There were 750 genes significantly differentially expressed in the kidney. 711 genes were significantly differentially expressed in the liver and 1,284 genes showed significant differential expression in the small intestine
Fig. 3Canonical pathways predicted to be activated or inhibited from gene expression data. Each pathway shown is significantly enriched for our genes with a Fisher’s Exact test p-value less than 0.01 (depicted with an asterisk). Pathways were shown only if they met our criteria for significance and had a predicted activation state in at least one organ. Z-scores of 0.000 indicate pathway predictions that lack a bias in the direction of gene regulation observed in our dataset. PPAR signaling (P < 0.05) was also included
Fig. 4Predicted upstream regulators from IPA analysis of gene expression changes from fasted to 1DPF. a Venn diagram of all upstream regulatory molecules analyzed. b Heatmap of predicted activation z-scores for selected classes of upstream regulatory molecules. Green indicates predicted activation, blue indicates predicted inhibition, white indicates the regulator is not predicted to function in that organ, and grey indicates that the upstream regulator is predicted to have significant involvement but the activation state cannot be determined based on the gene expression data. Regulators shown in this heatmap were filtered by three conditions: 1) were present in at least three of the four organs, 2) are significantly predicted (p-value < 0.05), and 3) have activation z-scores greater than |1.5| in at least one organ. Biological drug, chemical, and microRNA categories were excluded from URM analyses
Fig. 5Combined gene expression and predicted activation information for the mTOR pathway in the heart and small intestine. a Gene expression and predicted activity for the mTOR pathway in the heart. b Gene expression and predicted activity for the mTOR pathway in the small intestine. Differentially expressed genes identified in our RNAseq data set are highlighted in red (upregulated) and blue (downregulated) while predicted activation states are highlighted in orange (activation) and green (inhibition). c CPA and URMA results for pathways and upstream regulatory molecules involved in mTOR signaling and other relevant growth pathways
Fig. 6IPA generated pathway prediction for the NRF2-mediated oxidative stress response in the small intestine. Predicted activation state of the pathway was estimated using genes identified as significantly differentially expressed from our RNAseq data set. a Gene expression and predicted activity for the NRF2 pathway in the small intestine. Differentially expressed genes identified in our RNAseq data set are highlighted in red (upregulated) and blue (downregulated) while predicted activation states are highlighted in orange (activation) and green (inhibition). b CPA and URMA results for pathways and upstream regulatory molecules involved in NRF2 signaling and other related pathways