A Multi-omic Approach for the Study of Heart Regeneration Using Zebrafish as a Model Organism
Applications | 2017 | WatersInstrumentation
The ability of zebrafish to regenerate heart tissue offers a powerful model for understanding mechanisms of cardiac repair. Multi-omic profiling of plasma provides a systemic view of molecular changes during regeneration, which may reveal biomarkers and pathways relevant to regenerative medicine and translational research.
This study applied a label-free, data-independent acquisition strategy combining lipidomics and proteomics to plasma samples from zebrafish subjected to heart tissue amputation or sham operation. The goal was to capture qualitative and quantitative changes over a three-day post-amputation period to elucidate key pathways involved in heart regeneration.
Sample preparation included tryptic digestion for proteomics and protein precipitation for lipidomics. Analyses were performed using LC-HDMSE workflows. Instrumentation:
Chromatographic and MS parameters were optimized for high sensitivity, with gradient elution and ion mobility separation to increase peak capacity.
Unsupervised PCA of proteomic and lipidomic data demonstrated clear separation between operated and sham groups. Over 30 000 lipid features and 440 proteins were detected, with 18% of proteins and numerous lipid classes (PC, TG, LPC, ceramides, DG, PS, PE) showing significant regulation (fold change >2, ANOVA p≤0.05). Time-course profiling revealed dynamic lipid abundance changes, with normalization by day 21. Pathway analysis highlighted HDL transport, platelet activation, and signaling cascades, implicating ABCA1-mediated lipid efflux and apolipoprotein interactions in the regenerative response.
Integration with transcriptomic and metabolomic data may enable deeper mechanistic understanding. Advances in spatial omics and single-cell proteomics could localize regenerative signals. Machine learning on multi-omic datasets will enhance biomarker discovery and aid in translating zebrafish findings to mammalian models.
This label-free, multi-omic approach successfully profiled plasma changes during zebrafish heart regeneration, revealing key proteins, lipids, and pathways. The methodology offers a powerful platform for regenerative biology studies and biomarker identification.
Ion Mobility, LC/TOF, LC/HRMS, LC/MS, LC/MS/MS
IndustriesProteomics , Clinical Research, Lipidomics
ManufacturerWaters
Summary
Importance of the Topic
The ability of zebrafish to regenerate heart tissue offers a powerful model for understanding mechanisms of cardiac repair. Multi-omic profiling of plasma provides a systemic view of molecular changes during regeneration, which may reveal biomarkers and pathways relevant to regenerative medicine and translational research.
Objectives and Study Overview
This study applied a label-free, data-independent acquisition strategy combining lipidomics and proteomics to plasma samples from zebrafish subjected to heart tissue amputation or sham operation. The goal was to capture qualitative and quantitative changes over a three-day post-amputation period to elucidate key pathways involved in heart regeneration.
Methodology and Instrumentation
Sample preparation included tryptic digestion for proteomics and protein precipitation for lipidomics. Analyses were performed using LC-HDMSE workflows. Instrumentation:
- Waters ACQUITY UPLC M-Class for proteomics
- Waters ACQUITY UPLC I-Class for lipidomics
- Waters SYNAPT G2-Si mass spectrometer
- Progenesis QI and Progenesis QI for Proteomics software
Chromatographic and MS parameters were optimized for high sensitivity, with gradient elution and ion mobility separation to increase peak capacity.
Key Results and Discussion
Unsupervised PCA of proteomic and lipidomic data demonstrated clear separation between operated and sham groups. Over 30 000 lipid features and 440 proteins were detected, with 18% of proteins and numerous lipid classes (PC, TG, LPC, ceramides, DG, PS, PE) showing significant regulation (fold change >2, ANOVA p≤0.05). Time-course profiling revealed dynamic lipid abundance changes, with normalization by day 21. Pathway analysis highlighted HDL transport, platelet activation, and signaling cascades, implicating ABCA1-mediated lipid efflux and apolipoprotein interactions in the regenerative response.
Benefits and Practical Applications
- High sensitivity workflow suitable for limited-volume plasma samples
- Comprehensive coverage of proteome and lipidome in a single acquisition
- Seamless data processing to pathway interrogation for systems-level insights
- Identification of potential biomarkers and therapeutic targets for cardiac repair
Future Trends and Possibilities
Integration with transcriptomic and metabolomic data may enable deeper mechanistic understanding. Advances in spatial omics and single-cell proteomics could localize regenerative signals. Machine learning on multi-omic datasets will enhance biomarker discovery and aid in translating zebrafish findings to mammalian models.
Conclusion
This label-free, multi-omic approach successfully profiled plasma changes during zebrafish heart regeneration, revealing key proteins, lipids, and pathways. The methodology offers a powerful platform for regenerative biology studies and biomarker identification.
Reference
- Kikuchi M. Advances in understanding the mechanism of zebrafish heart regeneration. Stem Cell Res. 2014;13:542–555.
- Babaei F et al. Novel Blood Collection Method Allows Plasma Proteome Analysis from Single Zebrafish. J Proteome Res. 2013;12:1580–1590.
- Isaac G et al. Lipid Separation using UPLC with Charged Surface Hybrid Technology. 2011;720004107EN.
- Milacic M et al. Annotating cancer variants and anti-cancer therapeutics in Reactome. Cancers (Basel). 2012;4:1180–1211.
- Croft D et al. The Reactome pathway knowledgebase. Nucleic Acids Res. 2014;42:D472–477.
- Mi H et al. PANTHER in 2013: modeling gene function evolution. Nucleic Acids Res. 2012;41:D377–386.
- Tang C et al. The Macrophage Cholesterol Exporter ABCA1 Functions as an Anti-inflammatory Receptor. J Biol Chem. 2009;284:32336–32343.
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