{"id":1028676,"date":"2024-06-14T02:46:59","date_gmt":"2024-06-14T06:46:59","guid":{"rendered":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/uncategorized\/spatial-multi-omics-of-human-skin-reveals-kras-and-inflammatory-responses-to-spaceflight-nature-com.php"},"modified":"2024-06-14T02:46:59","modified_gmt":"2024-06-14T06:46:59","slug":"spatial-multi-omics-of-human-skin-reveals-kras-and-inflammatory-responses-to-spaceflight-nature-com","status":"publish","type":"post","link":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/space-flight\/spatial-multi-omics-of-human-skin-reveals-kras-and-inflammatory-responses-to-spaceflight-nature-com.php","title":{"rendered":"Spatial multi-omics of human skin reveals KRAS and inflammatory responses to spaceflight &#8211; Nature.com"},"content":{"rendered":"<p><p>Transcriptome-wide changes in response to spaceflight    <\/p>\n<p>    To understand the impact of spaceflight to skin and tissue    microenvironment, paired 4mm skin punch biopsies from    Inspiration4 crew members upper arms were used for pathology    evaluation and spatial transcriptomics profiling    (Fig.1a and Supplementary    Fig.1). In total, 95 ROIs    were collected across 16 slides for processing, with the GeoMx    whole transcriptome profiling probe set (18,422 probes). Based    on imaging we selected four region types of interest, including    the outer epidermis, inner epidermis, outer dermis, and the    vasculature (OE, IE, OD, and VA). We also performed a skin    histopathology analysis from the biopsied samples, which showed    no significant abnormalities or changes in tissue morphologies    or gross architecture (Supplementary Fig.2).  <\/p>\n<p>            a Experimental design and workflow with            representative tissue staining images (created with            BioRender.com), b Uniform Manifold Approximation            and Projection (UMAP) of all ROIs collected, c            Volcano plot of overall post- vs. pre-spaceflight DEGs            (using DESeq2 method), d Pathway enrichment            analysis comparing DEGs from pre- and post-spaceflight            skin tissues, visualizing normalized enrichment scores            of MSigDB Hallmark pathways, and e Cell            proportion comparisons between pre- and            post-spaceflight samples (ns non-significant,            *p0.05, **p0.01,            ***p0.001, and ****p0.0001 by            Wilcoxon test, two-sided; boxplot shows            median\/horizontal line inside the box, the            interquartile range\/box boundaries, whiskers extending            to 1.5 times the interquartile range, and outliers as            individual points outside the whiskers; exact p            values are included in the Source Data). Source data            are provided as a Source Data file.          <\/p>\n<p>    From GeoMx spatial transcriptomics analysis, unsupervised    clustering of all ROIs showed large clustering around    compartmental identities. Slight shifts in response to    spaceflight, and batch effects from both technical and    biological replicates were not apparent after normalization    (Fig.1b and Supplementary    Fig.3a). Differential    gene expression analysis comparing post-spaceflight to    pre-spaceflight samples found significant upregulation in 95    genes (log2FC>0 and q value<0.05 by DESeq2)    including ARHGAP31, GALNT9, CPNE2,    NMB, GPR50, CLDN2, OOSP2, and    downregulation in 121 genes (log2FC<0 and q    value<0.05 by DESeq2) such as AP3B1, LMNA,    COL6A2, VIM, HLA-B, PPP1CB,    PABPC1 (Fig.1c and Supplementary    Data1). Furthermore,    proteins associated with cell junctions and extracellular    matricesparticularly those from vimentin (VIM) and    keratin (KRT) familywere the primary transcripts lost    based on the DEG analyses.  <\/p>\n<p>    Pathway analysis of these differentially expressed genes (DEGs)    revealed statistically significant enrichment in kirsten rat    sarcoma viral oncogene homolog (KRAS) signaling pathways, while    transcripts associated with cell junctions and protein (i.e.,    apical junction, unfolded protein response) decreased    (Fig.1d and Supplementary    Data2). From expression    levels, cell type composition for each ROI was estimated and    compared across timepoints. We also observed statistically    significant decreases in the cell type associated gene    signatures of the major skin cell types and immune cells (e.g.,    melanocyte, pericyte, fibroblast, and T cells)    (Fig.1e).  <\/p>\n<p>    We then investigated region-specific expression changes across    pre- and post-spaceflight samples for each ROI type label (OE,    IE, OD, and VA). OE and IE regions were selected based on and    corresponds to stratum granulosum and spinosum\/basal,    respectively. OD ROIs were selected by capturing a minimum of    200 cells inside of the basal cell layer (therefore mostly    papillary layer), while VA ROIs were collected based on    epithelial (FAP) and fibroblast (SMA) staining    (Fig.1a). We observed    transcripts specific to each ROI label and timepoint    (Supplementary Fig.3b, c).  <\/p>\n<p>    For each ROI type, differential gene expression analyses were    performed comparing postflight samples relative to preflight    samples (Fig.2a and Supplementary    Data1). For example, we    found that the decrease in transcripts related to fibroblast    and junction genes (e.g., DES, ACTA2,    TLN1, TAGLN) specifically near the vasculature    sites (VA). Loss of KRT14 as well as other keratin    family transcripts (KRT1, 5, and 10) were found    predominantly in the dermal layer (OD). Taking the    intersections of these DEGs to identify unique and overlapping    genes across ROI types, we confirmed that most of the gene    overlaps occur within ROI types that are relatively close to    each other (i.e., VA and OD) (Fig.2b). In particular,    changes in AP3B1, a transcript related to granule    formation, cytokine production, and inflammatory responses,    were found in multiple comparisons (overall, OE, and OD) and    was orthogonally validated with another technology, RNA scope    (Supplementary Fig.4ac)23. In the inner    layers of the tissue (OD and VA), we found overlapping DEGs    related to stress and growth factor associated pathways, such    as COL6A2, CRKL, HLA-B.  <\/p>\n<p>            a Volcano plot showing DEGs by ROI typesOE, IE,            OD, and VA respectively; the number of DEGs were            determined by cutoffs of adjusted p            value<0.1 and |log2FC|>0.5 (using DESeq2            method), b UpSet plots comparing the            intersections of region-specific DEGs, c            Hallmark, non-germline gene set enrichment analysis            across four ROI types; NES Normalized Enrichment            Scores; Arrow indicates tissue locations, where OE is            the outermost layer and VA is the innermost layer.            Source data are provided as a Source Data file.          <\/p>\n<p>    Gene set enrichment analysis (GSEA) revealed the consistent    increase of KRAS signaling and inflammatory responses across    all regions while specific immune pathways such as Interferon    alpha and gamma response showed positive enrichment only in    epidermal regions (OE and IE) (Fig.2c and Supplementary    Data2). Pathways such as    DNA repair, apoptosis, and UV response, reactive oxygen species    were enriched only in the OE. We observed downregulation in    genes involved with mitochondrial metabolism (e.g., myc target    genes and oxidative phosphorylation) across all regions,    particularly stronger in IE and OD ROIs. Also, the myogenesis    pathway and EMT-related genes showed stronger decrease in    enrichment scores in the VA ROIs, underscoring the region- and    layer-specific responses to spaceflight. Comparing the    pathway-level changes to blood sequencing datasets from the    same mission and previous mission (NASA Twin Study, although    with different duration of exposure), we found consistent    changes in pathways such as KRAS signaling,    epithelial-to-mesenchymal transition, and angiogenesis    (Supplementary Fig.4d)5.  <\/p>\n<p>    In addition to differential analyses, we also found that the    marker genes reported to be specific to each skin layer and    cell type corresponded to the expression levels in each ROI    type and were consistent with the previous findings    (Supplementary Fig.3b,    c)24,25,26. Based on the    reference datasets, deconvolved cell type abundances were    compared across ROI types and timepoints (Supplementary    Fig.5a). We found a loss    of melanocyte related gene signatures specifically in the    middle layers (IE and OD), not in the outermost region (OE) or    vascular region deeper in the dermal layer (VA). On the    contrary, fibroblast related gene expressions were decreased    across all regions except for the outermost epidermal layer    (OE). Although fibroblast is an unanticipated cell type in the    epidermis ROIs, decreased fibroblast signature could indicate    loss or damage of cellular and matrix interactions, consistent    with previous reports highlighting the role of fibroblasts with    epidermal regeneration (Supplementary Fig.5b,    c)27,28.  <\/p>\n<p>    To investigate the phenotypic impact of spaceflight, we then    focused on genes and pathways related to skin barrier    formation, disruption, and regeneration. From the pathway    analysis, we found enrichment changes in apical junction, UV    stress response, hypoxia, and TGF signaling    (Fig.2c and Supplementary    Data2). Specifically, we    observed a decrease in filaggrin (FLG) expression, a    gene related to skin barrier function and plays a crucial role    during epidermal differentiation by controlling interactions    across cytoskeleton components, in postflight relative to    preflight samples29. The decrease of    FLG was the most evident in the OE region (Supplementary    Data1). Related to this    observation, we also observed decreases in transcripts such as    HAS1, HAS2, HAS3, OCLN,    CLDN, TGM2 in the OE region    (Fig.3a).  <\/p>\n<p>            a Gene expression changes of interest, b            fold change of proportions in post-flight samples            relative to pre-flight samples, by compartments,            c cell type correlation matrix changes. Black            boxes represent undetermined spots (due to minimal cell            counts); boxes with X marks represent correlations that            did not pass statistical testing (p            value<0.05, Pearson correlation, two-sided).            Source data are provided as a Source Data file.          <\/p>\n<p>    The decrease in protein production and response potentially are    connected to decrease in keratinocyte and increase in immune    signatures (potentially related to interactions with T cells    and fibroblasts) in OE region ROIs (Fig.3b)30. Although    weaker, the IE region shows a similar trend of cell proportion    fold changes. Specifically, among fibroblast populations we    also found that gene signatures of reticular fibroblast    increased in postflight samples while there were no    statistically significant changes in papillary fibroblast,    suggesting disruptions in regeneration processes (Supplementary    Fig.5b,    c)31,32. Taking    co-occurrence of the proportion changes, cellular interactions    within the ROIs were estimated. While cluster disruption was    relatively minimal, an increase in melanocyte-macrophage    interactions were found in the epidermis (OE and IE) ROIs    (Fig.3c). In addition,    expression changes related to vascular and lymphatic    endothelial cells and pericytes varied across the skin regions.    The most pronounced cell signature changes were seen in the OE    and VA compartments. In the OE compartment, we observed an    increase in signatures related to lymphatic endothelial cells,    potentially indicating the changes in the skins vascular and    immune system (Fig.3b). While blood and    lymphatic capillaries are not typically found in the epidermis,    these adaptations may be suggestive of a wound-healing    phenotype with the skin, which is supported by our results    showing increased damage, inflammation, apoptosis, ROS,    hypoxia, angiogenesis, TGF-beta expression, etc., in the    epidermis (Fig.2c)33,34. On the other    hand, in the VA compartment, there was an increase of gene    signatures related to blood endothelium and decrease in    lymphatic endothelium, also associated with vascular remodeling    events.  <\/p>\n<p>    To test whether immune activation and epithelial barrier    disruption can be explained with external environmental change,    we performed metagenomics and metatranscriptomics analysis on    the skin swabs collected right before biopsies (Supplementary    Fig.6a). After assignment    of taxonomic labels to DNA sequences, we identified 826    bacterial and 9819 viral species with non-zero counts from    metagenomics analysis, and 88 bacterial and 1456 viral species    from metatranscriptomics analysis (Supplementary    Data3). From PCA    analysis, no major clustering was observed, although post    flight samples were located closer to one another in the PCA    space (Fig.4a). The shifts of the    samples were mostly from species from Staphylococcus and    Streptococcus family, along the PC2 axis. Slight    decrease in overall numbers of bacterial and viral species was    observed in postflight samples relative to preflight, with one    exception of C003 in metagenomics data and of C004 in    metatranscriptomics data (Fig.4b). Gross comparison    of bacterial species by family showed decreased abundance in    Actinobacteria (e.g., Actinomyces sp000220835)    while increased abundance in Firmicutes\/Bacillota (e.g.,    Peptoniphilus C\/B) and    Proteobacteria\/Pseudomonadota (e.g., Caulobacter    vibrioides, Sphingomonas carotinifaciens, Roseomonas    mucosa\/nepalensis) (Fig.4c, d and Supplementary    Fig.6b). When grouped    into genus, several species, including Cutibacterium    (e.g., Cutibacterium acnes\/avidum\/modestum\/porci),    Mycobacterium (e.g., Mycobacterium paragordonae,    Mycobacterium phocaicum), and Pseudomonas (e.g.,    Pseudomonas aeruginosa\/nitroreducens) showed    statistically significant decrease (p values<0.05).    Several species including Streptococcus (e.g.,    Staphylococcus capitis, Streptococcus mitis BB) and    Veillonella (e.g., Veillonella    atypica\/parvula\/rogosae) showed significant increase    (Fig.4d). Also, species    under the Staphylococcus genus, such as    staphylococcus capitis\/epidermidis\/saprophyticus showed    slight decrease while the relative abundances were highly    variable across biological replicates.  <\/p>\n<p>            a PCA across all metagenomic and            metatranscriptomic (bacterial and viral reads) relative            abundance features and all crew members pre- and            post-flight, b Total number of bacterial and            viral species with nonzero counts, c Relative            abundances by sample and timepoint, grouped by family,            d Changes in relative abundance before and after            spaceflight, grouped by genus; statistically            significant or previously reported microbes are            visualized (two-sided Wilcoxon test across four crew            members was performed to compare means between pre- and            post-flight samples and to obtain p values, and            error bars represent the standard error of the mean),            and e Correlation across relative abundance of            bacterial phyla identified by metagenomics data and            known barrier\/immune genes associated with skin            diseases and disruptions. Source data are provided as a            Source Data file.          <\/p>\n<p>    Changes of bacterial species were then linked to skin gene    expression profiles, especially dermatitis-related genes (i.e.,    STAT3, STAT5B, FLG, CDSN, and    ADAM17) previously associated with Staphylococcus    species, as Staphylococcus aureus-dependent atopic    dermatitis have been reported to activate immune system and    reduce microbe diversity35,36,37    (Fig.4e and Supplementary    Fig.6c). When subsetting    previously reported bacterial species and associated genes, we    found Staphylococcus species show an inverse    relationship with JAK1 (Fig.4e). In particular,    Staphylococcus correlates closely to FLG,    SPINK5, and DSG1, all of which are related with    epithelial barriers (stratum corneum and junctional    barriers)38. Also, microbes    belong to Carnobacteriaceae, Lactobacillaceae,    Nanosynbacteraceae, and Weeksellaceae families    showed high correlation with both barrier and immune genes    (CDSN, DSP, DSG1, SPINK5, FLG, and JAK1), whereas    common skin microbes from Dermatophilaceae and    Dermabacteraceae families showed no correlation.    Although larger sample size is needed, it is possible that skin    microbiome disruptions, such as those observed in these    bacterial families, also contribute to barrier disruption and    immune activation during short-term spaceflight.  <\/p>\n<p>    In addition, from alignment to known viral assemblies we found    statistically significant decrease in abundance of reads    associated with those from Uroviricota (i.e.,    Fromanvirus, Acadianvirus, Armstrongvirus,    Amginevirus, Bixzunavirus) and    Naldaviricetes (i.e., Alphabaculovirus), and    increased abundance of reads associated with those from    Negarnaviricota (i.e., Almendravirus,    Orthotospovirus) and Cossaviricota (i.e.,    Betapapillomavirus, Betapolyomavirus) (p    values<0.05). Virome changes are limited by the depth of    the sequencing and skin virome knowledge, however we also    report relative abundances of both bacterial and viral species    (Supplementary Data3). To explore    microbiota-skin interactions, we also identified potential    associations between microbiome shifts from    metagenomics\/metatranscriptomics data and human gene expression    from skin spatial transcriptomics data; these included    associations were with viral phyla (i.e., Uroviricota,    Cressdnaviricota, Phixviricota), which is a    potentially interesting area to explore as more crew samples    are collected. (Supplementary Fig.6d, e and    Supplementary Data3).  <\/p>\n<p>    To investigate immune changes that occur beneath the epidermis    we also examined changes in immune cells in the profiled    vascular regions vs. PBMCs. We saw overall decrease of T cells    and increase of macrophage DCs in VA ROIs    (Fig.3b), indicating an    immune-epidermis interaction. Related to this, we also observed    increased cytokines and inflammatory signals including    IL4, IL5, and IFNG in the inner regions    (VA and OD ROIs) of the tissue (Fig.5a)39,40. As a    confirmation, we observed that these specific cytokines are    also shown to be increased in cytokine assays from the crew    members serum samples (Fig.5b). To compare immune    change observations from VA ROIs to system-wide immune system    changes, we performed leveraged 10X multiome sequencing (dual    snRNA and ATAC sequencing from each cell) on timepoint-matched    PBMCs from the crew members (Supplementary    Fig.7a). We analyzed    151,411 cells across 9 gross cell types and performed    differential expression analysis (Supplementary    Fig.7b, c). Overall, we    observed fluctuations of T-cells across timepoints, consistent    to the observations from skin spatial transcriptomics data    (Fig.5c, d and Supplementary    Fig.7d). Among 555 DEGs    from multiome samples and 446 DEGs from GeoMx VA ROIs, 12    overlapping DEGs were found (both log2FC>0.1 and p    values<0.01, DESeq2), including ATP11A,    CEP85L, CEPT1, DMXL1, DOP1A,    EVI5, GSAP, MDFIC, SENP7,    TBCK, VAV3, and VPS13C    (Fig.5c and Supplementary    Fig.7c). Several of these    genes are related to cellular metabolism and cytosolic    transports. In particular, VAV3, one of signaling    adapters in NK\/T cell activation, has been previously reported    to be associated with atopic dermatitis    onset41,42,43. While all these    overlapping DEGs were temporary in PBMCs, i.e., upregulated in    the immediate postflight samples (R+1 timepoint) and returned    to pre-flight expression levels, the chromatin accessibility of    these genes stayed slightly longer, up to R+45 timepoint    (Fig.5d).  <\/p>\n<p>            a Notable cytokine changes and locations from            (a) skin transcriptomics data by region and,            b cytokine assay from serum samples (sig.            Indicates overall statistical significance of the            cytokine levels in the postflight samples relative to            the preflight samples, where red indicates            significantly increased, and green means stable\/no            change; two-sided Wilcoxon test was done with the            p value cutoff of 0.05), c Comparison of            DEGs between PBMC multiome data and spatial            transcriptomics data from VA ROIs, d Dot plots            visualizing mRNA transcript expression levels (left)            and gene activity score from ATAC signals (right),            where preflight samples were collected 44 days before            launch (L-44) and postflight samples were collected 1,            45, and 82 days post return (R+1, R+45, and R+82,            respectively), e Flight and cell type specific            gene signature enrichment in spatial data by timepoint            and ROI types, f gene signature enrichment            analysis using gene signatures built from skin            disease-related gene expression profiles; two-sided            Wilcoxon test across four crew members and 95 ROIs was            performed to obtain p value, where            *p0.05 and **p0.01, and error bars            represents standard deviation of the mean. Source data            are provided as a Source Data file.          <\/p>\n<p>    Finally, we derived cell type- and spaceflight-specific gene    signatures from the multiome data, to examine any enrichment in    the GeoMx samples (using single-sample gene set enrichment    analysis, or ssGSEA approach) (Fig.5e). Most of the immune    cell specific postflight DEGs enrichments were near the    innermost ROIs (OD and VA), except for T cells (both CD4+ and    CD8+), which showed enrichment in the postflight OE ROIs. While    it was previously reported that spaceflight stressors change    the immune system, increased enrichment of the T cells in the    epidermal region correlates with activated T cell activity and    connects to inflammatory responses and barrier    disruptions44,45,46,47,48. Lastly, we    found that these increased T cell signatures in the OE region    may not have direct connection to Th17 T cells or psoriasis,    rather have closer connection to the antigen-associated and    lymphatic T cells infiltrated from inner layers of the skin    (Fig.5f)49,50. Also, the    ssGSEA analysis using skin disease-associated gene signatures    showed a slight increase in melanoma signatures. The slight    increase can be explained with previous observations throughout    this manuscript, including increase in cell death, immune    activation, and stress response (Supplementary    Fig.7e, f), but more    research is needed to prove the direct connection or causality    of gene expression shifts.  <\/p>\n<p><!-- Auto Generated --><\/p>\n<p>Here is the original post: <\/p>\n<p><a target=\"_blank\" href=\"https:\/\/www.nature.com\/articles\/s41467-024-48625-2\" title=\"Spatial multi-omics of human skin reveals KRAS and inflammatory responses to spaceflight - Nature.com\" rel=\"noopener\">Spatial multi-omics of human skin reveals KRAS and inflammatory responses to spaceflight - Nature.com<\/a><\/p>\n","protected":false},"excerpt":{"rendered":"<p> Transcriptome-wide changes in response to spaceflight To understand the impact of spaceflight to skin and tissue microenvironment, paired 4mm skin punch biopsies from Inspiration4 crew members upper arms were used for pathology evaluation and spatial transcriptomics profiling (Fig.1a and Supplementary Fig.1).  <a href=\"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/space-flight\/spatial-multi-omics-of-human-skin-reveals-kras-and-inflammatory-responses-to-spaceflight-nature-com.php\">Continue reading <span class=\"meta-nav\">&rarr;<\/span><\/a><\/p>\n","protected":false},"author":1,"featured_media":0,"comment_status":"closed","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"limit_modified_date":"","last_modified_date":"","_lmt_disableupdate":"","_lmt_disable":"","footnotes":""},"categories":[18],"tags":[],"class_list":["post-1028676","post","type-post","status-publish","format-standard","hentry","category-space-flight"],"modified_by":null,"_links":{"self":[{"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/posts\/1028676"}],"collection":[{"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/comments?post=1028676"}],"version-history":[{"count":0,"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/posts\/1028676\/revisions"}],"wp:attachment":[{"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/media?parent=1028676"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/categories?post=1028676"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/tags?post=1028676"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}