Upgrade to Pro — share decks privately, control downloads, hide ads and more …

Exploring bin2cell for Visium HD analysis

Exploring bin2cell for Visium HD analysis

I discuss the bin2cell manuscript (https://doi.org/10.1093/bioinformatics/btae546) which covers Python-based software for the genomic analysis of Visium HD data.

Nicholas Eagles

October 09, 2024
Tweet

More Decks by Nicholas Eagles

Other Decks in Research

Transcript

  1. Bin2cell reconstructs cells from high resolution Visium HD data Polański

    et al. DOI: 10.1093/bioinformatics/btae5460.1101/2023.11.26.568752 Presented by: Nick Eagles 2024/10/09
  2. Manuscript Overview - bin2cell operates on 2um bin resolution (highest

    offered by Visium HD) - Segments nuclei on H&E image then pools together bins that overlap cellular segmentations - Result is AnnData with genes as features and cells as observations
  3. bin2cell: advantages over 8um-bin analysis - bin2cell-constructed cells can be

    more confidently annotated - bin2cell-constructed cells have more expressed genes
  4. Accuracy of cell type and placement - Bin2cell improves accuracy

    of cell-type calls - 8μm bins predict cell types outside of tissue 8μm bin2cell
  5. Expansion strategy: nuclei to cells - First, nuclei are segmented

    on H&E images - Two possible expansion strategies are used to estimate cell bounds - Expanding by a fixed distance (e.g. 2 bins or 4um) - Expanding to satisfy cell-nucleus volume ratio (e.g. 4) - Lower expansion gave better annotation confidence but biased towards higher-gene-expression cell types - Optimal expansion strategy depends on density of cells and expression levels of particular cell types