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FOGBoston2024

 FOGBoston2024

Festival of Genomics and Biodata 2024 in Boston workshop presentation https://festivalofgenomics.com/boston/en/page/workshops.

Leonardo Collado-Torres

June 12, 2024
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  1. @lcolladotor lcolladotor.github.io lcolladotor.github.io/bioc_team_ds An Introduction to spatialLIBD: an R/Bioconductor package

    to visualize spatially-resolved transcriptomics data Leonardo Collado Torres, LIBD Investigator + Asst. Prof. Johns Hopkins Biostatistics Festival of Genomics & Biodata June 13 2024 Slides available at speakerdeck.com/lcolladotor
  2. Zoom in: spatial omics Kristen R Maynard @kr_maynard Keri Martinowich

    @martinowk Stephanie C Hicks @stephaniehicks Andrew E Jaffe @andrewejaffe Stephanie C Page @CerceoPage
  3. Visium Platform for Spatial Gene Expression Image from 10x Genomics

    - A slide contains 4 capture areas, each full of thousands of 55um-wide “spots” (often containing 1-10 cells) - Unique barcodes in each spot bind to particular genes; after sequencing, gene expression can be tied back to exact spots, forming a spatial map Kristen R. Maynard 5
  4. bioconductor.org/packages/spatialLIBD Pardo et al, 2022 DOI 10.1186/s12864-022-08601-w Maynard, Collado-Torres, 2021

    DOI 10.1038/s41593-020-00787-0 Brenda Pardo Abby Spangler @PardoBree @abspangler Louise A. Huuki-Myers @lahuuki
  5. 2 pairs spatial adjacent replicates x subject = 12 sections

    7 Subject 1 Subject 2 Subject 3 Adjacent spatial replicates (0μm) Adjacent spatial replicates (300μm) PCP4 Maynard, Collado-Torres, et al, Nat Neuro, 2021
  6. DOI: 10.1038/s41593-020-00787-0 twitter.com/lcolladotor/status/1233661576433061888 from 2020-02-29 DOI 10.1093/bioinformatics/btac299 Since Feb 2020

    spatialLIBD::fetch_data() provides access to SpatialExperiment R/Bioconductor objects Stephanie C Hicks @stephaniehicks Lukas M Weber @lmweber
  7. Some analysis differences • 10x Genomics CellRanger → SpaceRanger (or

    other tools) • DropletUtils::read10xVisium() → spatialLIBD::read10xVisiumWrapper() • Spot QC ◦ Drop high mitochondria % spots? ◦ Drop spots with low UMI counts? ▪ Biological vs technical reasons • Spot clustering (spatially-aware) and/or manual annotation • Choosing a spot clustering resolution ◦ Can be guided by spatially cluster registration
  8. Loupe Browser Manually: • Align fiducial frame • Select spots

    “in tissue” lmweber.org/Visium- data-preprocessing/
  9. Some analysis differences • 10x Genomics CellRanger → SpaceRanger (or

    other tools) • DropletUtils::read10xVisium() → spatialLIBD::read10xVisiumWrapper()
  10. Some analysis differences • 10x Genomics CellRanger → SpaceRanger (or

    other tools) • DropletUtils::read10xVisium() → spatialLIBD::read10xVisiumWrapper() • Spot QC ◦ Drop high mitochondria % spots? ◦ Drop spots with low UMI counts?
  11. sc/snRNA-seq QC metrics such as # detected genes, # UMI,

    mitochondria expression % are likely biologically related!
  12. Some analysis differences • 10x Genomics CellRanger → SpaceRanger (or

    other tools) • DropletUtils::read10xVisium() → spatialLIBD::read10xVisiumWrapper() • Spot QC ◦ Drop high mitochondria % spots? ◦ Drop spots with low UMI counts? ▪ Biological vs technical reasons
  13. doi.org/10.1089/genbio.2023.0019 Fig S9 Low library size (UMIs, # detected genes):

    • Biological: ◦ Not all cells / layers are equally active • Technical: ◦ Edge of tissue: should have been called “out of tissue” ◦ Truly low quality
  14. Prashanthi Ravichandran @prashanthi-ravichandran (GH) Artifacts in general are normalized away

    by library size, though there are caveats doi.org/10.1126/science.adh1938
  15. Having more data is useful to provide context! Here 4

    new samples have low sequencing saturation (outliers) but are within range of good samples from other studies
  16. Having more data is useful to provide context! Those 4

    samples have great median UMI counts per spot ^_^
  17. Software keeps evolving and as leaders in the field we

    aim to use the best methods 33 Moses, L., Pachter, L. Museum of spatial transcriptomics. Nat Methods 19, 534–546 (2022). https://doi.org/10.1038/s41592-022-01409-2
  18. Some analysis differences • 10x Genomics CellRanger → SpaceRanger (or

    other tools) • DropletUtils::read10xVisium() → spatialLIBD::read10xVisiumWrapper() • Spot QC ◦ Drop high mitochondria % spots? ◦ Drop spots with low UMI counts? ▪ Biological vs technical reasons • Spot clustering (spatially-aware) and/or manual annotation
  19. Some analysis differences • 10x Genomics CellRanger → SpaceRanger (or

    other tools) • DropletUtils::read10xVisium() → spatialLIBD::read10xVisiumWrapper() • Spot QC ◦ Drop high mitochondria % spots? ◦ Drop spots with low UMI counts? ▪ Biological vs technical reasons • Spot clustering (spatially-aware) and/or manual annotation • Choosing a spot clustering resolution ◦ Can be guided by spatially cluster registration
  20. spatialLIBD apps • Useful for visualizing & annotating the data

    • Immediately make them after running SpaceRanger • Update them as we generate more results • Share them with the publication of the results • spatial.libd.org/spatialLIBD/ • research.libd.org/spatialDLPFC/#interactive-websites • research.libd.org/Visium_SPG_AD/#interactive-websites • …
  21. lcolladotor.github.io/#projects • Every assay has caveats • We re-use tricks:

    think adding 0, multiplying by 1 • It nearly always takes a team • Data sharing accelerates science + democratizes access to it • Zooming in allows us to reduce the heterogeneity • We can learn from each other: from uniformly processing our data & re-using it → replicate / validate?
  22. @MadhaviTippani Madhavi Tippani @HeenaDivecha Heena R Divecha @lmwebr Lukas M

    Weber @stephaniehicks Stephanie C Hicks @abspangler Abby Spangler @martinowk Keri Martinowich @CerceoPage Stephanie C Page @kr_maynard Kristen R Maynard @lcolladotor Leonardo Collado-Torres @Nick-Eagles (GH) Nicholas J Eagles Kelsey D Montgomery Sang Ho Kwon Image Analysis Expression Analysis Data Generation Thomas M Hyde @lahuuki Louise A Huuki-Myers @BoyiGuo Boyi Guo @mattntran Matthew N Tran @sowmyapartybun Sowmya Parthiban Slides available at speakerdeck.com /lcolladotor + Many more LIBD, JHU, and external collaborators @mgrantpeters Melissa Grant-Peters @prashanthi-ravichandran (GH) Prashanthi Ravichandran