| Literature DB >> 35538547 |
Charles P Hinzman1, Meth Jayatilake2, Sunil Bansal2, Brian L Fish3, Yaoxiang Li2, Yubo Zhang2, Shivani Bansal2, Michael Girgis2, Anton Iliuk4, Xiao Xu5, Jose A Fernandez5, John H Griffin5, Elizabeth A Ballew6, Keith Unger6, Marjan Boerma7, Meetha Medhora3, Amrita K Cheema8,9.
Abstract
BACKGROUND: Urinary extracellular vesicles (EVs) are a source of biomarkers with broad potential applications across clinical research, including monitoring radiation exposure. A key limitation to their implementation is minimal standardization in EV isolation and analytical methods. Further, most urinary EV isolation protocols necessitate large volumes of sample. This study aimed to compare and optimize isolation and analytical methods for EVs from small volumes of urine.Entities:
Keywords: Extracellular vesicles; LC/MS; Laboratory methods and tools; Mass spectrometry; Metabolomics; Radiation injury
Mesh:
Substances:
Year: 2022 PMID: 35538547 PMCID: PMC9092707 DOI: 10.1186/s12967-022-03414-7
Source DB: PubMed Journal: J Transl Med ISSN: 1479-5876 Impact factor: 8.440
Fig. 1Extracellular vesicle (EV) isolation method comparison workflow. EVs were isolated from two different initial volumes of urine (0.5 mL or 1 mL) from rats exposed to either 0 Gy (sham) or 13 Gy, X-irradiation, using 3 independent methods; ultracentrifugation with filtration (UC), size-exclusion chromatography (SEC) or a proprietary magnetic bead-based method (MBB). EV isolates were then characterized using cryogenic electron microscopy, nanoparticle tracking analysis and immunoblot array. Finally, the biochemical content of EVs was evaluated using untargeted quadrupole time of flight (QToF) mass spectrometry for both overall detection signals and potential contaminants
Fig. 2Mass spectrometry analysis of EV isolation methods. A Total number of features (positive and negative ionization) identified by each isolation method, at each starting volume of urine. B Manhattan plots showing each feature by mass-to-charge ratio (m/z, y-axis) and retention time (rt, x-axis). Highlighted area in red shows distinct features in MBB samples which were not detected in EVs isolated by either UC or SEC. C Total ion chromatogram (TIC) plots from positive ionization mode of EV samples isolated by UC (top), SEC (middle) and MBB (bottom). Area highlighted in red shows distinct signals detected in MBB samples which were not detected in either UC or SEC samples. D–E Venn diagrams showing the number of unique features detected in EV samples isolated by each isolation method from D 0.5 mL or E 1 mL starting volume of urine
Fig. 3EVs isolated from small volumes of urine demonstrate potential as a source of biomarkers for ionizing radiation exposure. A Workflow showing EV isolation process from small volumes of urine to untargeted QToF metabolomics analysis. B Principal Component Analysis (PCA) plot demonstrates distinct separation between EVs isolated from sham irradiated rats (yellow) vs. rats exposed to 13 Gy irradiation (blue). C Volcano plot reveals a significant number of detected features are significantly dysregulated. Each dot represents a feature (m/z and rt pair) detected by QToF-MS. Grey = no significance, green = significant by fold change (> 2 or < 0.5), blue = significant by FDR-adjusted p-value (< 0.05) and red = significant by both FDR-adjusted p-value (< 0.05) and fold change (> 2 or < 0.5). Student’s two-tailed t-test with homogeneous variance was used for comparing irradiated vs. sham rats. D Heatmap of features identified in irradiated and sham irradiated urinary EVs demonstrating distinct signatures. Color represents fold change with red indicating upregulation and blue indicating downregulation
Fig. 4Validation of the potential for EVs isolated from small volumes of urine to serve as biomarkers for ionizing radiation exposure. A Abbreviated experimental design investigating utility of urinary EVs as a source of radiation biomarkers in rats exposed to 13 Gy ionizing radiation. B Principal Component Analysis (PCA) plots demonstrate clear separation between EVs isolated from mice exposed to 0 Gy (blue) and 13 Gy (yellow) irradiation 1-, 14-, 30- and 90-days post-irradiation. C Rain drop plot showing distinct down-regulation of specific lipid species in the acute (24 h) time frame post-irradiation, followed by recovery and upregulation of these species 14-, 30- and 90-days post-irradiation, compared to control rats. P-value refers to FDR-adjusted p-value as determined by student’s two-tailed t-test with homogeneous variance comparing irradiated vs. sham rats at each time point
Fig. 5Human urine EVs can be used as a biological matrix to identify the effects of radiation exposure. A Total ion chromatogram (TIC) plots of human urine EV samples generated by UPLC-QToF-MS in positive (left) and negative (right) ionization mode. B Metabolites with significant expression changes in human urine EVs post-radiotherapy, quantified using LC–MS/MS. P-values: * = < 0.05, ** = < 0.01, *** = < 0.001. Student’s two-tailed t-test with homogeneous variance was used to compare changes pre- and post-radiotherapy
Significantly dysregulated metabolites quantified in human urinary EVs using LC–MS/MS
| Metabolite | p-value | Fold change |
|---|---|---|
| Butyryl-coenzyme A | 0.001 | 1.256 |
| 2-KetoHexanoic acid | 0.004 | 0.781 |
| Pantothenate | 0.006 | 0.721 |
| Lactate | 0.008 | 0.834 |
| 2-phosphoglycerate | 0.013 | 0.840 |
| 5-methyltetrahydrofolic acid | 0.014 | 0.522 |
| Xanthylic acid | 0.038 | 0.763 |
| Imidazole | 0.040 | 0.837 |
| dTTP | 0.047 | 1.344 |
| Flavin mononucleotide | 0.047 | 0.807 |
| Ethanolamine | 0.048 | 0.892 |
List of metabolites that were significantly altered (p-value < 0.05) in human patient urinary EVs post-RT