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Last active September 25, 2018 20:52
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Beyond the cell atlas conference

Can follow here: Beyond the Cell Atlas: Live – Chan Zuckerberg Biohub

Monday September 24, 2018

Ido Amit

  • Using single cell to understand molecular physiology
  • mostly around development of lung
  • also touched on alzheimers

Spyros Darmanis

  • from CZ biohub

  • one of the leads on the tabula muris project - a map of all cells in mice in more than 20 tissues

  • a lot of labs involved

  • pipeline:

    • annotate cells separately for each cell ( I think they used 10x)
    • PCA -> cluster -> DE -> annotate using known markers
    • no mention of high likelihood of batch effects
    • showed a big tSNE plot of all the data combined (no details about how this was done)
    • a little of bit benchmarking on no of genes detected across tissues to compare 10x, microwell and FACS (FACS most sensitive???)
    • found combinations of TFs are important for distinguishing cell types
  • ‘accelerating science’:

Ali Ertürk

  • about an imaging technique called vDISCO
  • lots of pretty 3d figures on whole mouse

Aviv Regev

Cell atlas -> cell circuit & tissue circuit Focus on tissue circuit Few examples

  • airways mapping disease genes to cells

    • knowing cells help determine where disease genes
    • found new cell types in mouse trachea
    • (again) transcription factors important for determining new cell types
    • cystic fibrosis gene expressed by rare cell types
    • known risk factor genes can be used to under their function in context of other disease like asthma
  • ulcerative colitis

    • use scRNAseq to look at cell composition changes
    • DE between healthy_inflamed_not inflamed
    • look at cell-cell interaction using change in proportion of cell A with expression of ligand cell B (similar idea up a bit later in Sarah Teichmann’s talk)
    • can use variation of cell type expression to predict GWAS gene functions
  • melanoma example modelling immunotherapy resistance with scRNAseq

    • I got a bit lost here

Sarah Teichmann

single cell reconstruction of the maternal and fatal interface

  • balance immuno modulation and tissue clearance
  • key questions:
    • what is cellular composition
    • how do maternal cells avoid fetal rejection and control EVT invasion
    • experimental design 11 decidua (maternal), 6 peripheral blood, 5 placentas
    • integration of 10x and smart seq
      • umap look at cell types and how they separate
      • genotype sc by wGS integrating with scRNA-seq
      • use t-cell repertoire to find clonal expansion (not sure how they did this)
      • cell-cell communication using receptor (in one cell) and ligand (in another cell) networks using cellphonedb
      • not sure of the exact details here but idea is to look at how network changes between maternal and fetal

Tuesday September 25, 2018

Ed Lein

Stenn Linnarsson

  • Cell types and lineage from single cell transcriptomes

  • classical approach: denovo clustering

  • mouse brains atlas: understand architecture of nervous system

  • droplet scRNA-seq

    • 500,000 cells
    • male and female mouse
    • whole brain (sectioned)
    • 265 cell types
    • explains a lot of brain development and new cell types (like astrocytes) were found
  • beyond cell atlas:

    • from static to dynamic: RNA velocity (see RNA velocity of single cells | Nature)
    • unspliced mRNA from naturally occurring polyA/T in intron encoded in genome
    • they are nascent
    • can use ratio of spliced/unspliced to estimate RNA velocity (a few assumptions are such as constant degradation but can different if there are splice variants)
    • can see independent processes such as cell cycle / lineage etc from this

Other links velocyto.org and mousebrain.org

Allistair Boettiger

  • talk about a new technique called ORCA (optimal reconstruction of chromatin architecture) for measuring 3d structure of the genome (
  • gave example of how genes in drosphilia

Jonah Cool

  • talked about seed network RFA for chi
    • at least 3 PIs
    • one must be computational
    • open until 13-Nov-18
    • not just gut based (that is a seperate grant)

Nicole King

  • talked about choanoflagellates and using that to infer animal evolution

Evan Macosko

  • molecular exploration of the brain at single cell resolution
  • individual brains vary a lot
    • we can at look this with new tech (drop seq)
    • comprehensive brain cell atlas
    • cell type specific disease characterisation
    • new tech drives biology (new cell types in striatum of brain)
    • cell type annotation requires support from multiple modalities (samples, species, measurement types)
    • need more data integration methods to reconcile variation at different modalities
    • LIGER: integrative NMF plus take maximal loadings to form a neighoring graph
    • lots of examples showing LIGER is great

Nikolaus Rajewsky

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sa-lee commented Sep 24, 2018

allencell.org vis interface for cell imaging

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