| Literature DB >> 33971952 |
Sunny Z Wu1,2, Daniel L Roden1,2, Ghamdan Al-Eryani1,2, Nenad Bartonicek1,2, Kate Harvey1, Aurélie S Cazet1,2, Chia-Ling Chan1,3, Simon Junankar1,2, Mun N Hui1,4, Ewan A Millar5,6,7, Julia Beretov5,8, Lisa Horvath1,4,9, Anthony M Joshua1,10, Phillip Stricker10, James S Wilmott11,12, Camelia Quek11,12, Georgina V Long11,12,13, Richard A Scolyer11,12,14, Bertrand Z Yeung15, Davendra Segara10, Cindy Mak4, Sanjay Warrier16,17, Joseph E Powell3,18, Sandra O'Toole1,2, Elgene Lim1,2,10, Alexander Swarbrick19,20.
Abstract
BACKGROUND: High throughput single-cell RNA sequencing (scRNA-Seq) has emerged as a powerful tool for exploring cellular heterogeneity among complex human cancers. scRNA-Seq studies using fresh human surgical tissue are logistically difficult, preclude histopathological triage of samples, and limit the ability to perform batch processing. This hindrance can often introduce technical biases when integrating patient datasets and increase experimental costs. Although tissue preservation methods have been previously explored to address such issues, it is yet to be examined on complex human tissues, such as solid cancers and on high throughput scRNA-Seq platforms.Entities:
Keywords: Breast cancer; CITE-Seq; Cryopreservation; Melanoma; Prostate cancer; Single-cell RNA sequencing; Tumour heterogeneity
Mesh:
Substances:
Year: 2021 PMID: 33971952 PMCID: PMC8111910 DOI: 10.1186/s13073-021-00885-z
Source DB: PubMed Journal: Genome Med ISSN: 1756-994X Impact factor: 11.117
Fig. 1Cryopreservation allows for robust cell-type detection in clinical breast cancer samples. a Experimental workflow. b UMAP visualisation of 23,803, 29,828 and 24,250 cells sequenced across dissociated fresh tissue (FT; green), dissociated cryopreserved cell suspensions (CCS; orange) and solid cryopreserved tissue (CT; purple) replicates from three primary breast cancer cases (BC-P1, BC-P2 and BC-P3). UMAPs are coloured by cryopreserved replicate (top) and by cluster ID (bottom) with cell types annotations overlayed. Matched replicates were integrated using the Seurat v3 method. c Number of cells detected per cluster. Cells were downsampled to the lowest replicate size. d FeaturePlot visualisations of gene expression from BC-P1 fresh and cryopreserved replicates, showing the conservation of the housekeeping gene ACTB and heterogeneous cancer/epithelial (EPCAM), immune (PTPRC/CD45), endothelial (PECAM1/CD31) and fibroblast/perivascular (PDGFRB) clusters. e, g Distribution of silhouette scores (range −1 to + 1) (e), mixing metric (f) and local structure metrics (g) of clustering following cryopreservation. Samples were downsampled by replicate and cluster sizes and compared to the respective FT samples. Cell comparisons were performed across downsampled FT-1 vs FT-2 cells (positive control), FT vs CCS cells and FT vs CT cells. Stars represent standard deviations: e silhouette scores s.d. 0.02–0.05* and s.d. > 0.05**; f mixing metrics s.d. 2–10* and s.d. > 10**; g local structure metrics s.d. > 0.05*
Fig. 2Cryopreservation allows for robust cell-type detection in clinical prostate cancer and melanoma samples. a UMAP visualisation of 18,331 cells sequenced across FT (green), CCS (orange) and CT (purple) from primary prostate cancer case PC-P1. UMAPs are coloured by cryopreserved replicate (top) and by cluster ID (bottom) with cell types annotations overlayed. Matched replicates were integrated using the Seurat v3 method. b UMAP visualisation as in a of 21,361 cells sequenced across FT (green), CCS (orange) and cryopreserved overnight (CO; purple) replicates from metastatic melanoma case M-P1. c Number of cells detected per cluster from PC-P1 and M-P1, highlighting the conservation of clusters detected in the FT samples following cryopreservation. Cells were downsampled to the lowest replicate size. d, e FeaturePlot visualisations of gene expression in prostate cancer (d) and melanoma (e) showing the conservation of the housekeeping gene ACTB and heterogeneous cancer/epithelial (EPCAM in d or MITF in e), immune (PTPRC/CD45), endothelial (PECAM1/CD31) and fibroblast/perivascular (PDGFRB) clusters following cryopreservation as FT, CCS and CT or CO. f–h Distribution of silhouette scores (f), mixing metric (g) and local structure metrics (h) of clustering following cryopreservation as analysed in Fig. 1e–g. Stars represent standard deviations: f silhouette scores s.d. 0.02–0.05* and s.d. > 0.05**; g mixing metrics s.d. 2–10* and s.d. > 10**; h local structure metrics s.d. > 0.05*
Fig. 3Cryopreservation maintains the integrity and complexity of single-cell transcriptomes in clinical human cancers. a, b Number of genes (a) and UMIs (b) detected per cell across all FT, CCS, CT and CO replicates from breast (BC-P1, BC-P2 and BC-P3), prostate (PC-P1 and PC-P2) and melanoma samples (M-P1). Sequencing libraries were downsampled to equal number of mapped reads per cell using the cellranger aggregate function to account for differences in sequencing depth. Note that only one CCS replicate in M-P1 (orange) and one CT replicate in BC-P1 (purple) had significantly lower number of genes and UMIs per cell compared to their matching FT replicate. Statistical significance was determined using an unpaired Student’s t test. P values denoted by asterisks: *p < 0.05, p < 0.01, *p < 0.001 and ****p < 0.0001. c Pseudobulk gene correlations between FT cells with CCS (red line) and CT or CO (blue line) replicates. Correlation values (adjusted-R) were computed using linear regression in R to model the log-normalised gene expression values between two replicates. In all cases, CCS replicates had higher R values compared to CT and CO comparisons. d Cluster-level gene correlations between FT cells with CCS (circle), CT (triangle) and CO (square) replicates show similar trends with pseudobulk gene correlations. Dotted lines join corresponding clusters between different comparison methods. Plasmablasts (c18 in BC-P1 and c22 in BC-P2) were the only cell type identified in multiple cases to have significantly lower correlations
Fig. 4Methods of human tumour cryopreservation maintain biological pathways. a Euler diagrams highlighting the overlaps between gene ontology (GO) pathways detected in FT clusters and cryopreserved replicates from CCS, CT and CO. A total of 315, 347, 368, 262, 230 and 311 pathways were assessed from the FT replicates across the BC-P1, BC-P2, BC-P3, PC-P1, PC-P2 and M-P1 cases, respectively. b–d Sensitivity of pathway enrichment scores detected in clusters across cryopreserved replicates of BC-P1 (b), PC-P1 (c) and M-P1 (d). The minimum, mean and maximum -log10 q value are plotted in the error bars of each GO pathway. All DEGs from each cluster were passed on to the ClusterProfiler package for functional enrichment with the CC sub-ontology under the human org. Hs.eg.db database. GO pathway descriptions can be found in Additional file 4
Fig. 5Gene expression artefacts arising from cryopreservation. a–c Enrichment scores for gene ontology pathways that are unique to cryopreservation conditions: cryopreserved cell suspension (CCS; a), cryopreserved tissue (CT; b) and cryopreserved after overnight cold storage (CO; c). Comparisons were performed between all cells from each matched condition, which were first downsampled by total cell number and total number of sequencing reads. For the CCS (a) and CT (b) conditions, only pathways that were shared across multiple cases were analysed, which led to a total of 5 and 21 pathways for each condition, respectively. A total of 54 pathways were enriched in the CO (c) condition. Only the top 10 pathways based on enrichment scores are plotted for CT (b) and CO (c) conditions. DEGs from each condition (Additional file 5) were passed on to the ClusterProfiler package for functional enrichment with the CC sub-ontology under the human org.Hs.eg.db database. GO pathway descriptions can be found in Additional file 6. d–h Expression violin plots of the genes HSPA1A, HSPA1B and HSP90AA1 from cell stress response pathways (heat shock protein binding GO:0031072 and unfolded protein binding GO:0051082) that were commonly enriched across CT and CO conditions. Tumours for BC-P1 (d), BC-P2 (e), BC-P3 (f), PC-P1 (g) and M-P1 (h) are grouped by their cryopreservation conditions: fresh tissue (FT), CCS, CT or CO. Asterisk indicates significance values where adjusted p values are less than 0.05, as calculated using the MAST method
Fig. 6Cryopreservation provides high quality immunophenotyping using CITE-Seq. a UMAP visualisation of 2621 cells sequenced from a breast cancer case cryopreserved as CT. Clusters were annotated based on canonical cell type markers by RNA expression. CITE-Seq was performed on this case using a panel of 15 canonical cell type markers. b Heatmap of rescaled antibody-derived tag (ADT) values for relevant markers for cancer/epithelial cells (EPCAM), endothelial cells (CD31/PECAM1 and CD34), perivascular cells (MCAM/CD146 and THY-1/CD90), cancer-associated fibroblasts (THY-1/CD90 and CD34), immune cells (CD45/PTPRC), T-cells (CD3, CD4, CD8, CD69 and CD103), monocytes/macrophages (CD11c and CD11d) and MHC molecules (MHC-II and MHC-I). c FeaturePlot representation of ADT protein expression values for selected markers from b highlighting the specificity of major lineage markers on RNA based clustering in a