@arcinstitute: PerturbSpace presses a tissue section onto a chip of barcoded microwells. Antibodies in each well tag the cells above w…
Summary
PerturbSpace is a spatial transcriptomics method that presses a tissue section onto a chip of barcoded microwells, using antibodies to tag cells with location codes before single-cell sequencing, achieving >90% confident spatial assignment.
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Cached at: 05/27/26, 05:18 AM
PerturbSpace presses a tissue section onto a chip of barcoded microwells. Antibodies in each well tag the cells above with that well’s location code. The tagged cells then go through standard single-cell sequencing, with >90% getting a confident spatial assignment. https://t.co/nF8PaJiHL0
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