| Literature DB >> 32133155 |
Delia Tomoiaga1, Vanessa Aguiar-Pulido2, Shristi Shrestha3, Paul Feinstein4, Shawn E Levy3, Christopher E Mason1,2,5,6, Jeffrey A Rosenfeld7,8.
Abstract
The human sperm is one of the smallest cells in the body, but also one of the most important, as it serves as the entire paternal genetic contribution to a child. Investigating RNA and mutations in sperm is especially relevant for diseases such as autism spectrum disorders (ASD), which have been correlated with advanced paternal age. Historically, studies have focused on the assessment of bulk sperm, wherein millions of individual sperm are present and only high-frequency variants can be detected. Using 10× Chromium single-cell sequencing technology, we assessed the transcriptome from >65,000 single spermatozoa across six sperm donors (scSperm-RNA-seq), including two who fathered multiple children with ASD and four fathers of neurotypical children. Using RNA-seq methods for differential expression and variant analysis, we found clusters of sperm mutations in each donor that are indicative of the sperm being produced by different stem cell pools. Finally, we have shown that genetic variations can be found in single sperm.Entities:
Keywords: Molecular medicine; Predictive markers
Year: 2020 PMID: 32133155 PMCID: PMC7035312 DOI: 10.1038/s41525-020-0117-4
Source DB: PubMed Journal: NPJ Genom Med ISSN: 2056-7944 Impact factor: 8.617
Fig. 1Single-sperm RNA-seq profiles and metrics.
a Metrics for (i) barcodes containing one or more genes and (ii) for the filtered set used in downstream analysis that includes all cells with 10 or more genes, all genes present in at least 20 cells, and all cells with at least 25 unique molecular identifiers (UMI). b The distribution of genes and unique molecular identifiers and percent mitochondrial genes/cell in the groups in the filtered set used for analysis. c Cell scatter plot comparing the range in scaled average expression in each cohort and the correlation statistic for the whole set. Each feature represents a gene expression value averaged across all single cells in the group. d, e Violin plots of the cohort-specific features in the data sets post-alignment of the data sets. f The number of common and unique genes in each group in the post-alignment set. g A Venn diagram of the number of genes expressed in our single-cell sperm sequencing as compared with bulk sperm sequencing.
Fig. 2Distinctive profiles between groups.
a Heatmap of representative DEGs (aligned set) from the top and bottom of the list ranked by average log fold change, between the ASD and the Control samples. Each rectangle represents the scaled average expression of the single cells for a specific gene. b–d GSEA enrichment plots showing: (b) Chromatin remodeling (c) Spermatogenesis (d) Flagellum. (e) Canonical pathways enrichment analysis in Qiagen IPA, the red bar represents the ratio of the # of DEGs in the pathway to total genes in the pathway.
Fig. 3SNVs from single-sperm cells.
Using the Integrative Genome Viewer (IGV), data are shown from alignments to the reference genome from single cells. a PRM1 variants are shown as coverage tracks (rows) with the reference genome on top and the donor variants on the bottom row. b Same as a, but shown for the same donor in PRM2. c The number of SNVs found in exonic, intronic, intergenic, and all three regions for the bulk RNA-seq analysis, normalized to the total number of reads mapped to the transcriptome by the size of the read. Values are shown in a log10 scale. d The number of SNVs found in the bulk RNA-seq analysis with an allele frequency < 0.001 in gnomAD per chromosome, normalized to the total number of reads mapped to the transcriptome by the size of the read and to the chromosome length. Values are shown in a log10 scale.