Excited to share a new algorithm that we have been working on over the last year.
๐ก idea is to extend mutual nearest neighbors for
#spatial data. We call it spatial mutual nearest neighbors (spatialMNN) ๐
Thank you @haowen-zhou.bsky.social @pratibha-panwar.bsky.social who led this work! ๐ ๐งฌ๐ฅ๏ธ๐งช
05.12.2024 16:31
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If you didn't join #multiomics2024, here is a nice illustrative summary of my talk on normalisation in spatial txomics data.
TL;DR - Use SpaNorm, the only spatially aware normalisation method out there! We are improving as we learn more so stay tuned for updates!
Preprint doi.org/10.1101/2024...
04.12.2024 22:25
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You need to be careful with how you approach library size normalisation in spatial txomics, or what you could end up eliminating organs / meaningful structures.
-- Dharmesh Bhuva 2/
03.12.2024 01:00
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Many sources of variation in spatial -omics:
- Tissue structure / library sizes
- Images captured for each FOV (Field of View) separately
- Antibody-binding affinity differences
- Cells overlapping in z-axis
- Partial cells captured
- Background intensity
- Instrument noise
@bhuvad.bsky.social 3/
03.12.2024 01:11
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