Abstract
In contrast to mammalian cells, bacterial cells lack mRNA polyadenylated tails, presenting a hurdle in isolating mRNA amidst the prevalent rRNA during single-cell RNA-seq. This study introduces a novel method, Ribosomal RNA-derived cDNA Depletion (RiboD), seamlessly integrated into the PETRI-seq technique, yielding RiboD-PETRI. This innovative approach offers a cost-effective, equipment-free, and high-throughput solution for bacterial single-cell RNA sequencing. By efficiently eliminating rRNA reads and substantially enhancing mRNA detection rates (up to 92%), our method enables precise exploration of bacterial population heterogeneity. Applying RiboD-PETRI to investigate biofilm heterogeneity, distinctive subpopulations marked by unique genes within biofilms were successfully identified. Notably, Pdel, a marker for the cell-surface attachment subpopulation, was observed to elevate cyclic diguanylate (c-di-GMP) levels, promoting persister cell formation. Thus, we address a persistent challenge in bacterial single-cell RNA-seq regarding rRNA abundance, exemplifying the utility of this method in exploring biofilm heterogeneity. These findings advance our understanding of biofilm biology and offer insights for targeted therapeutic strategies against persistent bacterial infections.
Introduction
Biofilms, comprising approximately 80% of chronic and recurrent microbial infections in the human body, contain bacterial cells existing in a diverse array of physiological states1–3. This diversity in states reflects a division of labor within the biofilm, contributing to increased resistance to various stresses4. However, the study of biofilms faces significant limitations, primarily stemming from challenges in investigating heterogeneity within a bacterial population. Single-cell RNA-seq emerges as a promising avenue for addressing this5–12. Expending on established protocols for cell fixation and permeabilization which facilitate in-cell barcoding while avoiding cell lysis, combinatorial barcoding-based bacterial scRNA-seq techniques, such as Prokaryotic Expression profiling by Tagging RNA in situ and sequencing (PETRI-seq) 7 and Microbial Split-Pool Ligation Transcriptomics (microSPLiT)9, have been developed. Nevertheless, these methods encounter challenges in terms of low transcript recovery rates due to overwhelmingly abundant rRNA, restricting the comprehensive analysis of within-population heterogeneity. In comparison to mammalian cells, the absence of mRNA polyadenylated tails in bacteria necessitates an alternative approach for isolating mRNA (~5%) from the significantly more abundant rRNA (~95%). Here, by integrating a Ribosomal RNA derived cDNA Depletion protocol (RiboD) into a PETRI-seq, we developed RiboD-PETRI-seq that efficiently eliminates rRNA reads, thereby significantly improving mRNA detection rates and enabling exploration of within-population heterogeneity.
Results
In the RiboD protocol, we designed a set of probe primers that spans all regions of the bacterial rRNA sequence. The 3’-end of the probes is specifically complementary to the rRNA-derived cDNA, while the 5’- end complements a biotin-labeled universal primer. Following template switching and RNaseH treatment on the barcoded cDNA from lysed cells to eliminate hybridized RNA, the library of probe primers and biotin-labeled universal primers is introduced to facilitate adequate hybridization. Pre-treated Streptavidin magnetic beads are then added to eliminate the hybridized rRNA-derived cDNA. The mRNA-derived cDNA remains in the supernatant and is collected for subsequent library construction and sequencing (Fig. 1A). The Multiplet frequency of this method is 1.16% - 3.35%, demonstrating the ability of RiboD-PETRI to capture transcriptomes of single cells (Sl)7.
To assess the performance of RiboD-PETRI, we conducted a comprehensive evaluation of rRNA depletion efficiency across gram-negative and gram-positive bacterial species. The results highlight a substantial enhancement in rRNA-derived cDNA depletion, with mRNA ratio increases from 8.2% to 81 % for E. coli from exponential phase, from 10% to 92% for S. aureus from stationary phase, and from 3.9% to 54% for C. crescentus from exponential phase (Fig. 1B). With equivalent sequencing depth, RiboD-PETRI demonstrates a significantly enhanced Unique Molecular Identifier (UMI) counts detection rate compared PETRI-seq alone (Fig. 1C), indicating the number of detected mRNA per cell increased prominently. Notably, this enhancement was achieved while maintaining mRNA profiles consistent with non-depleted samples (r = 0.93; Fig. 1D) and show a significant correlation with profiles from the traditional bulk RNA-seq method (r = 0.84; Fig. 1E).
We subsequently investigated the transcriptome coverage of RiboD-PETRI across different bacterial species. For exponential phase E. coli cells, we sequenced a library with 60,000 cells, recovering approximately 30,004 cells (50% recovery), each with ≥15 UMIs. Analysis revealed 99.86% gene expression collectively and an average of 128.8 UMIs per single cell. Top 1,000, 5,000, and 10,000 high-quality cells showed averages of 462,259, and 193 detected UMIs, respectively (Fig. 1F). For stationary phase S. aureus cells, we sequenced a library with 30,000 cells, recovering approximately 9,982 cells (33.3% recovery), each with ≥15 UMIs. Analysis showed 99.96% gene expression collectively, and at the single-cell level, an average of 153.8 UMIs. Top 1,000, 5,000, and 8,000 high-quality cells exhibited averages of 273,122, and 94 detected UMIs, respectively (Fig. S1A). In the exponential phase of C. crescentus cells, a library with 30,000 cells was sequenced, recovering approximately! 3,897 cells (46.3% recovery), each with ≥15 UMIs. Analysis showed 99.64% gene expression collectively, and at the singlecell level, an average of 439.7 UMIs. Top 1,000, 5,000, and 10,000 high-quality cells demonstrated averages of 2190,662, and 225 detected UMIs, respectively (Fig. S1F). This performance surpassed other reported bacterial scRNA-seq methods7,9–11,13. Considering that this large library was sequenced with 1,508 reads per cell for E. coli, 2,372 for S. aureus, and 8,790 for C. crescentus, it is anticipated that a higher number of UMIs per cell will be detected with increased sequencing depth.
Our results affirm RiboD-PETRI’s reliability in capturing the bacterial single-cell transcriptome, providing ample coverage and sensitivity for various species. We investigated its ability to consistently identify within-population heterogeneity across different bacterial species and growth conditions. In the exponential phase of E. coli, we recovered 1,464 cells and identified three major subpopulations (Fig. 1G), with 17 cells (1.2%) in a unique subpopulation characterized by pentose and glucuronate interconversions (Fig. 1H, I). For stationary phase S. aureus cells, we recovered 9,386 cells and found six major subpopulations (Fig. S1D), with 437 cells (4.7%) in a distinct subpopulation named cluster 4. In the stationary phase of C. crescentus cells, we recovered 5728 cells and identified four major subpopulations (Fig. S1I), with 603 cells (10.5%) in a unique subpopulation named cluster 3. These findings highlight RiboD-PETRI’s consistent ability to unveil within-population heterogeneity, crucial for understanding bacterial population complexity.
We next focused on exploring biological heterogeneity of a biofilm at the early stage of development by utilizing the static biofilm system14. E. coli cells were cultured in microtiter dishes overnight, adhered cells were fixed for RiboD-PETRI processing in duplicate experiments, each consisting of 1621 or 3999 cells. No significant batch effect was observed (Fig. S2C, H). Replicate 1 was sequenced 1,563 reads per cell, while replicate 2 with 2,034 reads per cell, yielding an average of 283/239 UMIs per cell (Fig. 2A). Unsupervised clustering analysis identified four major subpopulations in each replicate, with a consistently identified rare subpopulation (2.6%/2.1 %) as cluster 2, driven by cell envelope genes (Fig. 2B, D). Marker genes for this cluster included yffO, IptE, rdgB, pdel, sstT, fixA, yjjG, rlml, yncD, accC and yaiA (Fig. 2C, E, F). Pdel, identified among marker genes, was predicted as a phosphodiesterase enzyme hydrolyzing c-di-GMR a vital bacterial second messenger (Fig. 2G, H). To validate this, we created a Pdel-BFP fusion construct under the native pdel promoter, integrated with a ratiometric c-di-GMP sensing system in E. coli. Confocal microscopy revealed Pdel as a membrane protein (Fig. 2I). Single-cell level monitoring showed cell-to-celI variability in c-di-GMP levels and Pdel expression, with a positive correlation observed (Fig. 2J). Pdel upregulated c-di-GMP synthesis rather than degradation, confirmed by both microscopy and HPLC LC-MS/MS, which showed an approximately elevenfold increase in c-di-GMP concentration in the Pdel overexpression strain compared to the control strain (Fig. 2K).
Confocal laser scanning microscopy confirmed that Pdel-positive cells, exhibiting elevated c-di-GMP levels, were predominantly located at the bottom of the static biofilm (Fig. 2L), corresponding to the region of cell-surface attachment. To investigate the association of the Pdel-high cluster with bacterial persistence in the early stage of biofilm development, Pdel-high cells were isolated by fluorescence-activated cell sorting (FACS) (Fig. 2M, N) and subjected to an ampicillin antibiotic killing assay to determine their persister frequency. Results show that the Pdel-high population produced a significant higher ratio of persister cells (~7.3%) compared to that of the whole biofilm population (~0.6%) (Fig. 2o). Time-lapse imaging during the antibiotic killing process consistently revealed that persisters mainly originated from Pdel-GFP positive cells (Fig. 2P and Movie SI). Pdel-GFP positive cells, displaying dormancy, survived ampicillin treatment for 6 hours without growth or division. Upon antibiotic removal and replacement with fresh growth medium, the Pdel-GFP positive persister cells resumed activity, elongating, dividing, and forming new microcolonies (Fig. 2P and Movie S1). These findings suggest that c-di-GMR a molecule whose intracellular levels are upregulated by Pdel, plays a significant role in generating a persister subpopulation during the early stages of biofilm development.
Discussion
In conclusion, we report an improved approach, called RiboD-PETRI, which offers a cost-effective ($0.0049 per cell in RiboD-PETRI, and $0,056 per cell in PETRI-seq), equipment-free, and high-throughput solution for bacterial scRNA-seq. By integrating a probe hybridization-based rRNA derived cDNA depletion protocol, our method efficiently removes rRNA reads and significantly enhances mRNA detection rates. This improvement enables us to explore and analyze within-population heterogeneity. One important advantage of RiboD is the depletion process takes place at the cDNA level, following cell pooling and lysis. Consequently, RiboD only requires customization in the library preparation step. By implementing RiboD, we effectively reduce the necessary sequencing depth and overall sequencing costs, making it an attractive option for cost-conscious researchers. Beyond serving as a proof of principle, our study exemplifies the application of RiboD-PETRI to investigate the heterogeneity within biofilms, specifically delving into the early stages of biofilm development. This showcases the versatility and efficacy of RiboD-PETRI in exploring complex biological systems. The ability to uncover hidden variations within bacterial populations, as demonstrated in our biofilm analysis, underlines the potential impact of RiboD-PETRI on advancing our understanding of microbial behavior and population dynamics.
Materials and methods
Resource availability
Further information and requests for resources and reagents should be directed to and will be fulfilled by the lead contact, Yingying Pu (yingyingpu@whu.edu.cn).
Materials availability
Plasmids generated in this study are available from the lead contact upon request.
Data and code availability
Sequencing data, the processing data and original code have been deposited to GEO repository (Uploading).
Bacterial strains and growth conditions
The bacterial strains used in this study included Escherichia coli strains MG1655, Caulobacter crescentus NAI 000 and Staphylococcus aureus strain ATCC 25923 were included. Cultures of E. coli were grown in Luria Broth (LB) medium. Caulobacter crescentus strain NAI 000 was grown in peptone yeast extract (PYE) medium. And Staphylococcus aureus strain ATCC 25923 was grown in Mueller-Hinton Broth (MHB) medium. All bacterial strains were routinely grown at 37°C and 220 rpm. To maintain plasmids, when necessary, media were supplemented with chloramphenicol (25 μg/ml). For arabinose-induction system expression experiments, 0.002% arabinose was supplemented in the medium.
Strains construction.
The construction of recombinant plasmids was performed using the 2 × MultiF Seamless Assembly Mi× (ABclonal, RK21020). To label the Pdel gene, pdel, along with its native promoter, was fused with either gfp or bfp and cloned into the pBAD backbone. For gene overexpression, the target genes of interest were cloned into either a p15A ori plasmid or a pUC ori plasmid, under the control of the Arabinose-induction system. For the c-di-GMP sensor (Snapgene: #182291), the plasmid origin was replaced with the p15A ori.
RiboD-PETRI
Cell preparation.
E. coli MG1655 cells were cultured overnight and subsequently diluted at a ratio of 1:100 into fresh LB medium and grown statically for 24h at 37°C. For 3h exponential period E. coli sample, E. coli MG1655 cells were grown overnight and then diluted 1:100 into fresh LB medium and grown for 3 h at 37°C and 220 rpm. Caulobacter crescentus strain NAI 000 cells were grown overnight and then diluted 1:100 into fresh Mueller-Hinton Broth (MHB) medium and grown for 9h at 37°C and 220 rpm. And Staphylococcus aureus strain ATCC 25923 cells were grown overnight and then diluted 1:100 into fresh peptone yeast extract (PYE) medium and grown for 3 h at 37°C and 220 rpm. All the culture was vigorously shaken using a vortex, and the cells were then centrifuged at 5,000g for 2 minutes at 4°C. The pellet was resuspended in 2 ml of ice-cold 4% formaldehyde (F8775, Millipore Sigma, diluted into PBS). This suspension was rotated at 4°C for 16 hours.
Cell permeabilization.
1 ml of fixed cells were centrifuged at 5,000g for 5 minuts at 4°C, followed by resuspension in 1 ml washing buffer (100 mM Tris-HCI pH7.0,0.02 U/μl SUPERase-ln RNase Inhibitor, AM2696, Invitrogen). After another centrifugation at 5,000g for 5 minuts at 4°C, the supernatant was removed. The pellet was then resuspended in 250 μl permeabilization buffer (0.04% Tween-20 in PBS-RI, PBS with 0.01 U/μl SUPERase-ln RNase Inhibitor) and incubated on ice for 3 minuts. 1 ml cold PBS-RI was added, and the cells were centrifuged at 5,000g for 5 minuts at 4°C, followed by resuspension in 250 μl Lysozyme Mix (Dissolving 250 μg/ml Lysozyme or 5 μg/ml Lysostaphin for S. aureus in TEL-RI buffer, comprising 100 mM Tris, pH 8.0 (AM9856, Invitrogen), 50 mM EDTA (AM9261, Invitrogen), and 0.1 U/μl SUPERase In RNase Inhibitor). The samples were incubated at 37°C and mixed gently every minute. Then cold PBS-RI (1 ml) was added immediately, and cells were centrifuged at 5,000g for 5 min at 4°C. The cells underwent another wash with 1 ml cold PBS-RI. Subsequently, cells were resuspended in 40 μl DNasel-RI buffer (4.4 μl 10xreaction buffer, 0.2 μl SUPERase In RNase inhibitor, 35.4 μl H2O), followed by addition of 4 μl DNasel (AMPD1, Millipore Sigma). The samples were incubated for 30 min at room temperature and mixed gently every 5 minutes. 4 μl Stop Solution was added, and the samples were incubated for 10 minutes at 50°C with gentle mixing every minuts. Following centrifugation at 5,000g for 10 minutes at 4°C, cells were washed twice with 0.5 ml cold PBS-RI. Finally, cells were resuspended in 200 μl cold PBS-RI, and their count and integrity were assessed using the ACEA NovoCyte flow cytometer with a 100× oil immersion lens.
Primer preparation.
For round 1 RT, round 2 and round 3 ligation reactions, all primers design and preparation as previously described 7. All primers were purchased from Sangon Biotech (Table S1). For ligation primers preparation, mixtures were prepared as follows: 31.1 μl each R2 primer (100 μM), 28.5 μl SB83 (100 μM) and 21.4 μl H2O, were splitted to 2.24 μl for one sample. Mixtures containing 63.2 μl each R3 primer (70 μM) and 58 μl SB8 (70 μM), were splitted to 3.49 μl for one sample. Before use, ligation primers were incubated as follows: 95 °C for 3 min, then decreasing the temperature to 20 °C at a ramp speed of -0.1 °C s-1,37 °C for 30 min. For blocking mix preparation, 50 μl primer SB84 (400 μM) and 80 μl primer SB81 (400 μM) were incubated as follows: 94°C for 3 min, then decreasing the temperature to 25 °C at a ramp speed of -0.1 °C s-1,4°C for keeping. Round 2 blocking primers were mixed as follows: 37.5 μl 400 μM SB84,37.5 μl 400 μM SB85,25 μl 10× T4 ligase buffer, 150 μl H2O. Round 3 blocking primers were mixed as follows: 72 μl 400 μM SB81,72 μl 400 μM SB82,120 μl 10× T4 ligase buffer, 336 μl H2O, 600 μl 0.5 M EDTA.
Round 1 RT reaction.
About 3×107 cells were introduced into an RT reaction mix composed of 240 μl 5× RT buffer, 24 μl dNTPs (N0447L, NEB), 12 μl SUPERase In RNase Inhibitor and 24 μl Maxima H Minus Reverse Transcriptase (EP0753, Thermo Fisher Scientific). Nuclease-free water was added to achieve a total reaction volume of 960 μl, and the mixture was thoroughly mixed by vortexing. Subsequently, 8 μl of the reaction mixture was dispensed into each well of a 96-well plate, where 2 μl of each RT primer had been added previously. The sealed 96-well plate was inverted repeatedly for thorough mixing, followed by a brief spin. The plate was then incubated as follows: 50 °C for 10 min, 8 °C for 12 s, 15 °C for 45 s, 20 °C for 45 s, 30 °C for 30 s, 42 °C for 6 min, 50 °C for 16 min, and finally held at 4 °C. After the RT process, all 96 reactions were pooled into one tube. 75 μl of 0.5% Tween-20 was added, and the reactions were incubated on ice for 3 minutes. Cells were centrifuged at 7,000g for 10 minutes at 4°C and then resuspended in 0.4 ml PBS-RL Thirty-two microliters of 0.5% Tween-20 was added, and the cells underwent centrifugation at 7,000g for 10 minutes at 4°C.
Round 2 ligation reaction.
Cells were resuspended in 500 μl 1× T4 ligase buffer, followed by the addition of 107.5 μl PEG8000,37.5 μl 10× T4 ligase buffer, 16.7 μl SUPERase In RNase Inhibitor, 5.6 μl BSA, and 27.9 μl T4 ligase (M0202L, NEB). The reaction solution was thoroughly mixed by vortexing. Subsequently, 5.76 μl of the reaction mixture was dispensed into each well of a 96-well plate, where 2.24 μl of each round 2 ligation primer had been added previously. The sealed 96-well plate was inverted repeatedly for thorough mixing and then subjected to a short spin. The plate was incubated at 37°C for 45 minutes. Following this, 2 μl of round 2 blocking mix was added to each well and incubated at 37°C for an additional 45 minutes. All 96 reactions were pooled into one tube after incubation.
Round 3 ligation reaction.
A mixture comprising 89 μl H20,26 μl PEG8000,46 μl 10× T4 ligase buffer, and 12.65 μl T4 ligase was prepared and thoroughly mixed by vortexing. Subsequently, 8.51 μl of the reaction mixture was dispensed into each well of a 96-well plate, where 3.49 μl of each round 3 ligation primer had been added previously. The sealed 96-well plate was inverted repeatedly for thorough mixing and then subjected to a brief spin. The plate was incubated at 37°C for 45 minutes. Following this, 10 μl of round 3 blocking mix was added to each well and incubated at 37°C for an additional 45 minutes. All 96 reactions were combined into one tube after incubation.
Cells lysis.
42 μl of 0.5% Tween-20 was added, and cells were centrifuged at 7,000g for 10 minutes at 4°C. The cells underwent two washes using 200 μl TEL-RI containing 0.01 % Tween-20, each time centrifuged at 7,000g for 10 minutes at 4°C. Subsequently, cells were resuspended in 30 μl TEL-RI buffer. Cell counting and integrity checks were performed using the ACEA NovoCyte flow cytometer with a 100× oil immersion lens. A moderate amount of cells was then added to the lysis buffer (50 mM Tris pH 8.0,25 mM EDTA, 200 mM NaCI, 0.5% Triton X-100), and 5 μl of proteinase K (AM2548, Invitrogen) was introduced. Samples were incubated at 55°C for 60 minutes and gently mixed every minute.
Library construction.
To facilitate template switching, lysates were purified with VAHTS DNA Clean Beads (N411, Vazyme) at a ratio of 2.0×, and cDNA was eluted in 12 μl of water. The purified cDNA was then combined with 4 μl of 5× RT buffer, 1 μl of dNTPs (N0447L, NEB), 0.5 μl of SUPERase In RNase Inhibitor, 0.5 μl of Maxima H Minus Reverse Transcriptase, and 0.5 μl of the TSO primer (100 mM, Table S1). This reaction solution underwent incubation as follows: 25°C for 30 min, 42°C for 90 min, 85°C for 5 min, and then held at 4°C. Subsequently, 1 μl of RNaseH was added, and the reaction solution was incubated at 37°C for 30 min. The cDNA was purified once again with VAHTS DNA Clean Beads at a ratio of 2.0× and eluted in 13 μl of H2O. The integrity of the cDNA was assessed using primers TSO-2 and RI or R2 or R3 by qPCR (Table S1).
Ribosomal RNAderived cDNA depletion (RiboD).
We developed a set of cDNA probe primers to selectively deplete r-cDNA (Table S1). These probe primers possess the ability to specifically hybridize with r-cDNA and also hybridize with a biotin-labeled universal primer. In the reaction, 5 μl of r-cDNA probe primers (10 μM), 2.5 μl of 10× hybridization buffer (Tris-HCI pH 8.0 100 mM, NaCI 500 mM, EDTA pH 8.0 10 mM), and 5 μl of biotin primer (10 μM) were added to 12.5 μl of purified cDNA. The reaction solution underwent incubation as follows: 95°C for 2 min, followed by a temperature decrease to 20°C at a ramp speed of -0.1 °C s-1, and then held at 37°C for 30 min. Subsequently, 20 μl of Streptavidin magnetic beads (BEAVER, 22307) was washed twice using 1 ml of 1 × B&W buffer (Tris-HCI pH 7.5 10 mM, EDTA 1 mM, NaC11M, Tween-20 0.05%) and resuspended in 25 μl of 2× B&W buffer. Twenty-five microliters of washed Streptavidin magnetic beads were added to 25 μl of annealed cDNA. The reaction solution was incubated at room temperature for 30 min with gentle mixing per minute. Following this, the reaction solution tube was placed into a magnetic stand to collect the supernatant. The cDNA depleted of r-cDNA was purified using VAHTS DNA Clean Beads at a ratio of 2.0× and eluted in 12.5 μl of H2O. The depletion of r-cDNA could be repeated using the above protocol, and ultimately, the cDNA was eluted in 20 μl of H2O.
Library amplification and sequencing.
To the 20 μl cDNA solution, the following components were added: 2.4 μl R3 primer (10 mM, Table SI), 2.4 μl TSO-2 primer (10 mM, Table SI), 40 μl 2× KAPA HIFI mix (KAPA, 2602), 1.6 μl Sybr green (25x), 0.8 μl MgCI2 (0.1 M), and 12.8 μl H2O. This PCR reaction solution was placed in a thermocycler and incubated with the following parameters: 98 °C for 45 s, followed by cycling of 98 °C for 15 s, 60 °C for 30 s, and 72 °C for 60 s. Cycling continued on a qPCR machine until the reaction approached saturation. PCR products were then purified using VAHTS DNA Clean Beads at a ratio of 0.9× and eluted in 25 μl of H20. Finally, the purified PCR products underwent end repair and adaptor ligation using the VAHTS Universal DNA Library Prep Kit for Illumina V3 (Vazyme, ND607).
Bulk RNA-seq library construction
Total RNA of the samples was extracted utilizing the Bacteria RNA Extraction Kit (R403-01, Vazyme). Subsequently, the RNA underwent mRNA enrichment (N407, Vazyme), fragmentation, cDNA synthesis, and library preparation using the VAHTSTM Total RNA-seq (H/M/R) Library Prep Kit for Illumina® (NR603, Vazyme).
Bioinformatics analysis Methods
Single-Cell Analysis.
The sequencing data underwent processing into matrices using scripts and a pipeline as previously described7 in Python 2.7.15, with some modifications (the detailed original code and all the data were deposited in the GEO repository). After the count tables were made, subsequent analysis of single-cell data was conducted using Seurat package (version 4.3.0; http://satijalab.org/seurat/) in R (https://www.r-project.org/). Since there are two replicates of E. coli static biofilm, these two datas need to be merged into one SeuratObject and removed batch effects. However, the samples for exponential period E. coli, S. aureus and C. crescentus only had one sample, so they did not need this process. At the beginning of doing the scRNA-seq analysis, we screened the datas of all samples. For preprocessing of E. coli static biofilm data, cells were filtered with UMI per cell more than 100 and less than 2000 for replicate 1 and replicate 2 to obtain 1621 and 3999 cells, respectively. For exponential period E. coli data. The data was screened for cells with UMIs greater than 200 and less than 5000 to obtain 1464 cells. The screening criteria of S. aureus were cells with UMIs greater than 15 and less than 1000 and genes greater than 30 (1000>UMIs>15, gene counts>30). The screening criteria of C. crescentus were cells with UMIs greater than 200 and less than 5000 and gene counts greater than 30 (5000>UMIs>200, gene counts>30). After screening, all the datas were normalized using a scale factor of 10000 through a global-scaling normalization method called “LogNomnalize”. Highly variable features were then identified, returning 500 features per dataset. Then we combine the data of the two replicates of E. coli static biofilm into a single SeuratObject by FindlntegrationAnchors and IntegrateData functions. Then all the datas underwent scaling using the ScaleData function, followed by dimension reduction through principal component analysis. After principal component analysis, we removed batch effect by RunHarmony of the two replicates of E. coli static biofilm datas. Then a graph-based clustering approach was employed in all datas to identify clusters of gene expression programs using the Louvain algorithm (Seurat 4.3.0). The dims we choosed were 6. And the resolution was 0.3 for C. crescentusand S. aureus or 0.4 for E coli datas. Marker genes for each cluster were computed using the Wilcoxon Ranksum test. Specifically, marker genes for each cluster were initially obtained using the FindMarkers function of Seurat. Then we performed pathway enrichment analysis of marker gene by clusterProfiler function16 within R.
Comparison of scRNA-seq with Bulk RNA-Seq.
The bulk RNA-seq clean data reads were mapped to the E coli MG1655 k12 genome (EnsemblBacteria Taxonomy ID: 511145) using the BWA aligner software (vO.7.17-r1188, https://github.com/lh3/bwa.git). Converting sam files to bam files using samtool (v1.9). The mapping results were counted by featurecounts (v2.0.1, https://github.com/topics/featurecounts) to generate expression results. Single-cell and bulk transcriptomes of E. coli were compared by computing the Pearson correlation of Iog2 reads per gene of bulk RNA-seq and Iog2 UMI per gene of scRNA-seq.
Flow cytometry and FACS analysis
All samples were measured on a Beckman CytoFLEX SRT flow cytometer with a 70 μM nozzle in which normal saline was used as sheath fluid. Pdel-BFP or c-di-GMP sensor labeled strain in the 24 h static biofilm growth phase was washed and resuspended in sterile PBS. Microorganisms were identified by FSC (forward scatter) and SSC (side scatter) parameters. Cells were sorted into different groups based on their fluorescence intensity (PB450 for BFR FITC for mVenusNB, ECD for mScarlet-l). The results were analyzed by FlowJo VI0 software (Treestar, Inc.).
Antibiotic killing and persister counting assay
Cells sorted from FACS were suspended in fresh LB broth containing 150 μg/ml ampicillin and incubated for an additional 3 hours at 37°C with continuous shaking at 220 rpm. Following this, the cells were plated on LB plates for colony-forming unit (CFU) counts before the ampicillin challenge, and the plates were incubated overnight at 37°C. After the ampicillin challenge, cells were washed with PBS buffer and plated again for CFU counts. The persister ratio was defined as the ratio of CFU after ampicillin challenge to CFU before ampicillin challenge. Averages and standard deviations presented are representative of three biological replicates.
Microscopy
Bright-field and fluorescence imaging.
Inverted microscopes (Nikon Eclipse Ti2 and Leica Stellaris 5 WLL) were utilized, with illumination provided by different lasers: 405 nm for BFR 488 nm for GFR respectively. The fluorescence emission signal was captured by an sCMOS camera (pco.edge 4.2 bi). Filter sets tailored to each fluorophore’s spectrum were employed. Image analysis was conducted using Imaged software (Fiji). For c-di-GMP sensor analysis, the ratio of mVenusNB to mScarlet-l (R) exhibited a negative correlation with the concentration of c-di-GMP. Therefore, R-1 displayed a positive correlation with the concentration of c-di-GMP.
Time-lapse imaging.
To observe antibiotic killing and bacteria resuscitation processes, cells labeled with Pdel-GFP in the 24-hour static growth phase were collected, washed twice with PBS buffer, and imaged on a gel pad containing 3% low melting temperature agarose in PBS [REF]. The gel pad was prepared in the center of the FCS3 chamber as a gel island. The cells were then observed under bright field or epifluorescence illumination. Subsequently, the gel pad was surrounded by LB broth containing 150 μg/ml ampicillin for 6 hours at 35°C. Fresh LB broth was flushed in, and the growth medium was refreshed every 3 hours, allowing cells to recover sufficiently.
Determination of c-di-GMP concentration by HPLC-MS/MS
Determination of c-di-GMP concentration by HPLC-MS/MS involved growing MG1655 Δara pBAD::pdel and MG1655 Δara to mid-exponential growth phase, followed by induction with 0.002% arabinose. After 2 hours of incubation, cells were harvested and washed with PBS. The washed cells were rapidly frozen using liquid nitrogen. Simultaneously, another portion of washed cells was stained with SYT0TM24 and quantified using flow cytometry. c-di-GMP concentration detection was conducted by Wuhan Lixinheng Technology Co. Ltd. through high-pressure liquid chromatography-tandem mass spectrometry (HPLC-MS/MS). All strains were assayed in biological triplicates, and measured values were converted into intracellular c-di-GMP concentrations (pg) per cell.
Quantification and statistical analysis
Statistical analysis was conducted using GraphPad Prism 9 software for Windows. Significance was determined by a two-tailed Student’s t-test. Error bars indicate the standard deviations of the mean from a minimum of three independent experiments. A significance threshold of P < 0.05 was applied. Asterisks were used to denote significant differences (*, P < 0.05; **, P < 0.01; ***, P < 0.001; ****, P < 0.0001).
Acknowledgements
We thank Prof. Fan Bai (Peking University) for valuable discussions. We thank Drs. Jidong Xing and Ziyang Liu for support in bioinformatics. We also thank the members of our laboratory for helpful discussion. This work is supported by the grants to Y.P. from the National Key R&D Program of China (2021YFC2701602), the National Natural Science Foundation of China (31970089), and Science Fund for Distinguished Young Scholars of Hubei Province (2022CFA077). This work is also supported by the grants to Y.Z. for the National Science Fund for Distinguished Young Scholars (82025011) and C.G. from the Natural Science Foundation of Yunnan Province of China (202001BB050005). We also thank all the staff in the Core Facilities of Medical Research Institute at Wuhan University and the Core Facilities at School of Life Sciences at Peking University for their technical support.
Additional information
Author Contributions
Conceptualization: Y.Z., H.L., Y.P.; Methodology: H.L., X.Y, C.W., C.H.; Investigation: H.L., X.Y, C.W., C.H.; Visualization: H.L., C.W.; Bioinformatics analysis: X.Y; Clinical stain isolation: C.G.; Supervision: Y.P.; Writing - original draft: H.L., Y.P.; Writing - review & editing: H.L., YP.
Competing Interest Statement
Authors declare that they have no competing interests.
Additional Declarations
The authors declare no competing interests.
References
- 1.Bacterial biofilms: a common cause of persistent infectionsScience 284:1318–1322
- 2.Spatial heterogeneity in biofilm metabolism elicited by local control of phenazine methylationProceedings of the National Academy of Sciences of the United States of America 120
- 3.Physiological heterogeneity in biofilmsNature reviews. Microbiology 6:199–210
- 4.Division of Labor: How Microbes Split Their ResponsibilityCurrent biology: CB 28:R697–R699
- 5.Single-cell sequencing-based technologies will revolutionize whole-organism scienceNature reviews. Genetics 14:618–630
- 6.mRNA-Seq whole-transcriptome analysis of a single cellNature methods 6:377–382
- 7.Prokaryotic single-cell RNA sequencing by in situ combinatorial indexingNature microbiology 5:1192–1201
- 8.Single-cell RNA-sequencing reports growth-condition-specific global transcriptomes of individual bacteriaNature microbiology 5:1202–1206
- 9.Microbial single-cell RNA sequencing by split-pool barcodingScience
- 10.Bacterial droplet-based single-cell RNA-seq reveals antibiotic-associated heterogeneous cellular statesCell 186:877–891
- 11.Single-cell massively-parallel multiplexed microbial sequencing (M3-seq) identifies rare bacterial populations and profiles phage infectionNature microbiology 8:1846–1862
- 12.Probe-based bacterial single-cell RNA sequencing predicts toxin regulationNature microbiology 8:934–945
- 13.Improved Bacterial Single-Cell RNA-Seq through Automated MATQ-Seq and Cas9-Based Removal of rRNA ReadsmBio 14
- 14.Growing and analyzing static biofilmsCurrent protocols in microbiology Chapter 1, Unit 1B
- 15.Signaling events that occur when cells of Escherichia coli encounter a glass surfaceProceedings of the National Academy of Sciences of the United States of America
- 16.clusterProfiler: an R package for comparing biological themes among gene clustersOmics : a journal of integrative biology 16:284–287
Article and author information
Author information
Version history
- Preprint posted:
- Sent for peer review:
- Reviewed Preprint version 1:
- Reviewed Preprint version 2:
Copyright
© 2024, Pu et al.
This article is distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use and redistribution provided that the original author and source are credited.
Metrics
- views
- 738
- downloads
- 43
- citations
- 0
Views, downloads and citations are aggregated across all versions of this paper published by eLife.