Method Article
* Wspomniani autorzy wnieśli do projektu równy wkład.
The protocol describes the isolation of gut microbial EVs from salt-sensitive rats fed HSD using density gradient centrifugation. EVs were characterized by nanoparticle tracking, TEM, LPS/BCA assays, and 16S rRNA sequencing to analyze the size, morphology, composition, and microbiota origin.
High salt intake is a major risk factor for hypertension, and its underlying mechanism may be closely linked to extracellular vesicles (EVs) secreted by gut microbiota. These EVs, produced by gut microbiota, carry various bioactive components that may play a crucial role in the development of hypertension induced by a high-salt diet (HSD). To investigate this mechanism, we developed an efficient extraction method based on density gradient centrifugation to isolate EVs from the gut microbiota of salt-sensitive rats fed an HSD. Through particle size analysis, transmission electron microscopy (TEM), and lipopolysaccharide (LPS) detection, we identified the gradient distribution of gut microbiota EVs and achieved precise extraction. Furthermore, 16S rRNA gene sequencing was employed to analyze the origin and compositional differences of EVs between the normal and HSD groups, revealing the impact of high salt intake on the genetic characteristics of gut microbiota EVs. This study provides valuable tools and scientific insights into the gut microbiota mechanisms underlying salt-induced hypertension and offers new perspectives for the prevention and treatment of related diseases.
The gut microbiota, also known as gut microbiota microflora or gut microecology, is a complex of tens of thousands of microorganisms located in the biological gastrointestinal tract and plays a crucial role in the maintenance of human health1. In recent years, with further research, it has been found that the gut microbiota can produce extracellular vesicles (EVs)2. EVs are small vesicles released by cells, which carry various molecules in the cell, such as proteins, nucleic acids, and lipids3,4. They can interact with other microbes5, intestinal epithelial cells, and even distant tissues and organs6, thus affecting the health of the human body7,8. There is a tight link between the EVs produced by these gut microbiota and diet9.
EVs produced by gut microbiota may be significant agents through which a high-salt diet (HSD) affects body health. HSD not only directly disrupts the balance of gut microbiota10, leading to a significant reduction in the number of beneficial bacteria (such as Lactobacillus)11, but also promotes the proliferation of harmful bacteria (such as Bacteroides, etc.)12. This imbalance reduces the intestinal barrier function and increases the risk of intestinal inflammation. In addition, an HSD also further affects the acid-base balance and nutrient absorption in the intestine by changing the metabolic activities13 of the gut microbiota, such as reducing the production of short-chain fatty acids14,15 with multiple physiological functions.
These changes not only impact intestinal health but may also indirectly regulate the production and release of EVs and alter the EV's composition and function. The high salt environment may affect the normal physiological functions of intestinal cells, including the release and transport of EVs, thereby disturbing the role of EVs in intercellular information transmission and immune regulation. At the same time, intestinal inflammation may promote a variety of EVs with special functions16 and spread to the whole body through the intestinal-organ axis and other ways17,18, which is closely related to the occurrence and development of hypertension19,20, cardiovascular21 and cerebrovascular diseases22,23, obesity24,25, diabetes26 and other chronic diseases.
Therefore, the overall goal of this study was to develop an efficient and reliable method to extract EVs from the gut microbiota of salt-sensitive rats fed an HSD and to systematically study their physical properties, composition, and functions. Due to the characteristics of the significant increase in blood pressure after a high-salt diet, salt-sensitive rats were selected and revealed the effect of HSD on gut microbiota EV by constructing an efficient extraction method. The method was based on density gradient centrifugation and combined various dynamic identification techniques such as particle size detection, LPS/BCA measurement, transmission electron microscopy, and proteomic analysis. The protocol aims to reveal the effects of HSD on gut microbiota EV and its mechanisms in cardiovascular disease. With its high efficiency, reproducibility, and broad applicability, this approach not only provides an important tool for exploring the mechanism of gut microbiota EVs in salt-induced hypertension but also lays the theoretical foundation for developing disease intervention strategies based on EVs. Through this study, we hope to open up new avenues for the prevention and treatment of cardiovascular diseases, such as hypertension27,28.
This animal experimental study complies with the relevant ethical guidelines and international standards. Studies involving animals were approved by the Laboratory Animal Welfare and Ethics Committee of Chengdu University of Chinese Medicine (institution: Chengdu University of Chinese Medicine; protocol number: 2018-21).
1. Animal preparation and diet regime
2. Monitoring of blood pressure
NOTE: Tail cuff plethysmography was used as a non-invasive method for blood pressure measurement, and volumetric pressure recording (VPR) was used when blood pressure was measured from tail blood volume.
3. Extraction of EVs
4. EVs identification
EVs concentrations were determined in different fractions (Figure 2A). The experimental results showed that the concentration of the EVs exhibited a typical normal distribution pattern in a series of density gradient solutions (Figure 2B). Specifically, in fraction 9, the concentration of EVs reached its highest point (3.85 x 109), suggesting that the main distribution fraction of EVs may be 936.
For the determination of protein content, BCA kits were used to assess the protein content in different fractions (Figure 2C). In this method, the protein content in fraction 9 was 0.417 µg/µL, which further demonstrates the distribution of the EVs. Since LPS is a unique component of Gram-negative bacteria37,38, endotoxin detection kits were also used to determine the expression of LPS (Figure 2D) in order to assess the distribution of EVs in different fractions. The experimental results showed that in fractions 9 and 10, LPS expression was significantly higher than the other fractions (absorbance for fraction 9 = 0.8086, for fraction 10 = 0.8515), and its distribution showed a normal distribution, which proved that the EVs are mainly distributed in fraction 9. Relatively greater amounts of protein in fraction 9 were also observed in SDS-PAGE gel electrophoresis of EVs isolated from different fractions (Figure 2E).
This study examined EVs using transmission electron microscopy (TEM; Figure 2F). Through high-resolution imaging by TEM, it was able to clearly visualize the morphological structure of EVs, featuring circular membrane-like structures, which is crucial for understanding the biology of EVs.
Blood pressure changes were determined in the NSD and HSD groups after 2 months of rearing in the NSD and HSD of the rats. We can see that the SBP (Figure 3A), DBP (Figure 3B), and MBP (Figure 3C) were significantly increased in the HSD group, indicating that the hypertension model of this study was successfully constructed.
In this study, the concentration of EVs was detected in different groups (Figure 3D), and the results showed that the concentration of EVs in the HSD group was significantly higher than that of rats in the NSD group. This suggests that HSD affects the level of EVs, potentially due to changes in the composition of the gut microbiota from which the EVs originate.
The particle size of the EVs was then measured in this study. The measurement results indicate that the particle size of the EVs is predominantly around 60 nm (Figure 3E), and the particle size of the HSD group is slightly lower than that of the NSD group. The measured data provides important information for assessing the size distribution and homogeneity of the EVs, facilitating the subsequent experimental design and application development.
Then, in this study, the amount of LPS expression of EVs in the HSD group and NSD group was examined (Figure 3F). The results showed that the expression of LPS by EVs in the HSD group was also significantly higher than that in the NSD group. This may be due to the increase in Gram-negative bacteria in the exovesicle-derived gut microbiota or by the higher concentration of EVs in the HSD group than in the NSD group.
To further support the differences between EVs in the HSD and NSD groups, this study investigated the derived gut microbiota and conducted 16S rRNA sequencing of EVs samples from the NSD and HSD groups to further clarify the effect of HSD on EVs in the gut microbiota in mice.
α-Diversity analysis showed that the diversity of the gut microbiota was significantly reduced in the HSD group, with both the Shannon and ACE indices decreasing (Figure 4A). β -Diversity analysis, based on PCoA (Figure 4B), distinguished the microbial phenotypes between the groups at the ASV level. The high salt intervention partially reversed the phenotypic changes in the gut microflora and found significant differences in the composition of the external vesicle-derived gut microbiota between the groups (p = 0.001).
After filtering out low-abundance bacteria and standardizing the data, taxonomic annotation identified different ranges of microbial communities in the samples. The exovesicle-derived gut microbiota mainly consisted mainly of Proteobacteria (93.19%), Firmicutes (4.57%), and Bacteroidota (1.19%; Figure 4C). The HSD group significantly increased the abundance of Firmicutes external vesicles (Figure 4D). At the genus level, the results showed that genera such as Nevskia and Acinetobacter were more abundant in the NSD group, while Delftia, Burkholderia_Ca, and Clostridium_sen were more abundant in the HSD group (Figure 4E). In addition, this study also used heat maps to show the differences in the gut microbiota EVs between the HSD group and the NSD group (Figure 4F). After the high-salt intervention, the abundance of some bacteria, Delftia and Burkholderia_Ca, increased significantly, and Nevskia and Acinetobacter decreased significantly (Figure 4G). In conclusion, the high salt intervention significantly changed the difference in the production of intestinal microflora-derived EVs, mainly because it changed the distribution of their parental bacteria, and the main characteristics were decreases in diversity, changes in the equilibrium structure, and changes in the abundance of different bacteria.
Figure 1: Extraction and characterization of gut microbial-derived outer vesicles. (A) Flow chart of outer vesicle extraction. (B) Characterization of the outer vesicles. Please click here to view a larger version of this figure.
Figure 2: Basic characterization of the EVs and the analysis of the local density gradient. (A) Extra-vesicle concentration and particle size measurements with different density gradients (nm; particles/mL). (B) Comparison of solution external vesicle concentrations by density gradient 3 - 16 (particles/mL). (C) Solution protein content determination on density gradient 6-12 by the BCA kit (µg/mL). (D) Solution LPS expression measurement by density gradient 7-11 with an endotoxin detection kit (Abs). (E) Solutions with a density gradient of 6 - 12 were subjected to SDS-PAGE gel electrophoresis and stained with Coomassie brilliant blue. (F) TEM: The scale bar is 100 nm; individual vesicles are shown in the image. Please click here to view a larger version of this figure.
Figure 3: Analysis of the changes in blood pressure and EVs under different diets. (A) SBP; (B) DBP; (C) MBP; (D) Comparison of external vesicle concentrations in the HSD and NSD groups; (E) Comparison of outer vesicle size in the HSD and NSD groups. (F) LPS in the NSD and HSD samples determined by spectrophotometry. *p < 0.05, ** p < 0.01, *** p < 0.001, and NS means no significance, t-test. Please click here to view a larger version of this figure.
Figure 4: Analysis of the 16s rRNA-test under the different diets. (A) The α-diversity analysis; (B) Principal coordinates analysis; (C) the abundance of gut microbiota at the phyla level; (D) Changes in phylum-level bacteria; (E) LEfSe result; (F) the cluster heatmap analysis based on differential bacterial genera; (G) Changes in the genus-level bacteria. *p < 0.05, ** p < 0.01, *** p < 0.001, and NS means no significance, t-test. Please click here to view a larger version of this figure.
In this study, we focused on the gut microbiota EVs in salt-sensitive rats on an HSD and achieved a series of key achievements. First, an efficient extraction method based on density gradient centrifugation was successfully constructed to isolate EVs from salt-sensitive rat gut microbiota on HSD, and most non-EV components were isolated through a meticulous, standardized animal experimental manipulation and sample processing process. The EVs extraction method of density gradient centrifugation is highly efficient and reproducible, better than the conventional ultracentrifugation method, and can better retain the integrity and functionality of EVs, ensuring the sample quality and study feasibility.
Secondly, EVs were comprehensively identified through various dynamic technologies: particle size and concentration detection indicate that EVs have a specific size distribution; LPS and BCA measurements quantify the protein content and LPS expression of EVs; TEM clearly shows the morphological structure of EVs; and protein characteristics define the protein spectrum. These identification results comprehensively reveal the physical and biochemical properties of EVs, providing reliable data support for subsequent studies.
In addition, 16S rRNA gene sequencing technology using in-depth analysis of the differences between the origin and composition of normal and HSD EVs, and α-diversity analysis and β-diversity analysis showed that high salt intake significantly affects the genetic characteristics of gut microbial EVs, including microbial community structure, species richness, and diversity, to more comprehensively resolve the effects of high salt diet on gut microbiota EVs, provides multiple levels of evidence for mechanistic studies.
Although this method has some advantages over the conventional overspeed centrifugation method in terms of exosome recovery and integrity, there are still some limitations, such as high sample demand and difficulty in distinguishing the host from the microflora source. However, compared with existing methods, density gradient centrifugation has unique advantages in maintaining the functional integrity of exosomes, which provides reliable technical support for further investigation into the mechanism by which a high-salt diet affects host blood pressure through intestinal flora. Moreover, for the unclear gradient stratification encountered during the experiment, we also improved by extending the centrifugation time or replacing the higher-performance rotor.
In the future, we can further explore the mechanism of gut microbiota EVs in hypertension induced by a high salt diet, especially its interaction with the immune system, such as pro-inflammatory T cells39,40; or use plant-derived products to intervene in gut microbiota EVs41,42, further intervene in diseases and explore their role in regulating host metabolism and immune response.
In conclusion, this study not only provides an important tool to explore the mechanism of salt-induced hypertension of gut microbiota, through the salt-sensitive rat model, deepen the understanding of the relationship between HSD, gut microbiota and EVs, and also opened up a new way for the prevention and treatment of cardiovascular diseases such as hypertension, provides a unique perspective for the study of diet-microbe-host interaction.
The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.
This work was supported by the National Natural Science Foundation of China (82205240), the Natural Science Foundation of Sichuan Province (2025ZNSFSC1836), and the Clinical Basic Project of Sichuan Provincial Orthopedic Hospital (PY202414).
Name | Company | Catalog Number | Comments |
Essential Supplies | |||
Centrifugal Filter (10nkDa 2 mL) | Millipore | UFC903096 | |
Centrifuge Tude(50 mL) | BKMAN | 20220404 | |
Centrifuge Tudes | BECKMAN COULTER | Z30815SCA | |
Vacuum Filtration System | Biosharp | 24902581 | |
Reagents | |||
Chromogenic LAL Endotoxin Assay Kit | Beyotime | 022124240705 | |
Coomassie Blue Fast Staining Solution | Beyotime | Z972241010 | |
EDTA | Damas-beta | P3117308 | |
Enhanced BCA Protein Assay Kit | Beyotime | A006241112 | |
Ethanol | KESH | ||
HCl | |||
OptiPrep (60% wt/vol, iodixanol) | Serumwerk | 00124 | |
PBS | Labshark | 130114005 | |
phosphotungstic acid | RUIXIN | ||
Sucrose | Damas-beta | P1917057 | |
Tris (VWR) | Damas-beta | P3061764 | |
Trypan blue staining solution (0.4%) | Beyotime | BD07242904 | |
Equipment | |||
Absorbance Microplate Reader | SpectraMax | ABP01690 | |
Biomicroscope | Motic | BA210Digital | |
Desk centrifuge | Cence | CHT210R | |
Desktop high-speed micro centrifuge | DLAB | D3024 | |
Fixed Angle Aluminum Rotor + 500 mL Centrifugal Cup | Cence | ||
High precision electronic balance | SKR | BN-200 | |
Laminar flow cabinet | Nantong Hunan Scientific Instrument Co., Ltd. | SW-CJ-2FDS | |
SW 32.1 Ti Swing bucket turn+ SW 32.1 Ti Rotor bucket | BECKMAN COULTER | ||
Transmission electron microscope | JEOL | JEM-1400FLASH | |
Tube rotator | |||
Ultracentrifuge | BECKMAN COULTER | Optima XE-100 | |
Ultra-pure water system | ULPHW | UPR-II-15TNZ | |
Water-Cieculation Multifunction Vacuum Pump | Qiang Qiang | SHZ-D(III) |
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