Transcriptome and 16S rRNA Amplicon Sequencing Analysis of Nutrition Metabolism in Silver Pomfret at Varying Flow Rates
Simple Summary
Abstract
1. Introduction
2. Materials and Methods
2.1. Fish Rearing and Sampling
2.2. RNA-Sequence
2.2.1. RNA Quantification and Qualification
2.2.2. Library Preparation for Transcriptome Sequencing
2.2.3. Data Analysis
Quality Control
Transcriptome Assembly and Gene Functional Annotation
Differential Expression Analysis
Functional Analysis of DEGs
Analysis of Differential Gene Protein Interaction Network
2.3. 16S rRNA Amplicon Sequencing
2.3.1. DNA Extraction Library Preparation and Sequencing
2.3.2. Functional Prediction with FAPROTAX
2.3.3. Data Analysis
2.3.4. Statistical Analysis
3. Results
3.1. Transcriptome Analysis of Silver Pomfret at Varying Flow Rates
3.1.1. Transcriptome Assembly, Annotation and Quality Assessment
3.1.2. DEG Analysis
3.1.3. GO and KEGG Analysis of DEG
3.1.4. Analysis of Nutritional Metabolism Related DEG
3.1.5. WGCNA Analysis
3.2. The Effect of Different Flow Rates on the Gut Microbiota of Silver Pomfret
3.2.1. The α and β Diversity 16S rRNA Sequencing Results
3.2.2. Bacterial Composition and Difference in Silver Pomfret at Different Flow Rates
3.2.3. Stability and Community Assembly Analysis at Different Flow Rates
3.2.4. The Function Prediction of Microbiota at Different Flow Rates
4. Discussion
4.1. Impact of Water Flow Rate on the Growth Performance of Silver Pomfret
4.2. Impact of Water Flow Rate on the Nutritional Metabolism of Silver Pomfret
4.3. Impact of Water Flow Rate on the Gut Microbiota of Silver Pomfret
4.4. Practical Implications of Water Flow Rate for Silver Pomfret Aquaculture
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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| Type | Unigene | Transcript |
|---|---|---|
| Total number | 44,502 | 92,186 |
| Total base | 74,393,674 | 153,406,235 |
| Largest length (bp) | 28,120 | 28,120 |
| Smallest length (bp) | 201 | 201 |
| Average length (bp) | 1671.69 | 1664.09 |
| N50 length (bp) | 3302 | 2984 |
| E90N50 length (bp) | 3634 | 2902 |
| Fragment mapped percent (%) | 59.829 | 71.09 |
| GC percent (%) | 44.14 | 44.11 |
| TransRate score | 0.24313 | 0.30376 |
| BUSCO score | C:87.8% [S:83.9%; D:3.9%] | C:95.1% [S:47.1%; D:48.0%] |
| Databases | Unigene Number | Percent |
|---|---|---|
| GO | 7027 | 15.79% |
| KEGG | 16,702 | 37.53% |
| COG | 19,848 | 44.60% |
| NR | 22,664 | 50.93% |
| Swiss-Prot | 17,713 | 39.80% |
| Pfam | 15,894 | 35.72% |
| Total | 44,502 | 100.00% |
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© 2026 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license.
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Hu, J.; Li, Y.; Zhang, Y.; Zheng, R.; Yan, X.; Zhang, M.; Wang, Y.; Jia, L. Transcriptome and 16S rRNA Amplicon Sequencing Analysis of Nutrition Metabolism in Silver Pomfret at Varying Flow Rates. Animals 2026, 16, 1818. https://doi.org/10.3390/ani16121818
Hu J, Li Y, Zhang Y, Zheng R, Yan X, Zhang M, Wang Y, Jia L. Transcriptome and 16S rRNA Amplicon Sequencing Analysis of Nutrition Metabolism in Silver Pomfret at Varying Flow Rates. Animals. 2026; 16(12):1818. https://doi.org/10.3390/ani16121818
Chicago/Turabian StyleHu, Jiabao, Yuanbo Li, Youyi Zhang, Rongyue Zheng, Xiaojun Yan, Man Zhang, Yajun Wang, and Lingling Jia. 2026. "Transcriptome and 16S rRNA Amplicon Sequencing Analysis of Nutrition Metabolism in Silver Pomfret at Varying Flow Rates" Animals 16, no. 12: 1818. https://doi.org/10.3390/ani16121818
APA StyleHu, J., Li, Y., Zhang, Y., Zheng, R., Yan, X., Zhang, M., Wang, Y., & Jia, L. (2026). Transcriptome and 16S rRNA Amplicon Sequencing Analysis of Nutrition Metabolism in Silver Pomfret at Varying Flow Rates. Animals, 16(12), 1818. https://doi.org/10.3390/ani16121818

