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9/ #Segger grew from conferences, hackathons, & community efforts. Huge thanks to the co-lead Andrew Moorman, co-authors and colleagues, and supervisors @moritzgerstung.bsky.social and @danapeer.bsky.social . More contributions of any kind are always welcomed! & Big thanks to @scverse.bsky.social

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8/ Please check our preprint (biorxiv.org/content/10.1...) and documentation (elihei2.github.io/segger_dev/), test #segger (github.com/EliHei2/segg...), and join in - PRs & issues invited!

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7/ "Speed and usability first"! #Segger is built on @scverse.bsky.social, @pytorch.org, @PyG, @lightningai.bsky.social, @geopandas & @RAPIDSai to zip through big ST datasets smoothly.

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Segmentation of Xenium lung cancer tissue was assessed using ground-truth staining. Cellpose served as a reference. 10x over-expanded boundaries (~180 µm²) with ~10% contamination, while Baysor over-segmented, doubling cell counts. Segger balanced precision and recall (~140 µm²), minimizing contamination (~5%) while preserving epithelial structure.

Segmentation of Xenium lung cancer tissue was assessed using ground-truth staining. Cellpose served as a reference. 10x over-expanded boundaries (~180 µm²) with ~10% contamination, while Baysor over-segmented, doubling cell counts. Segger balanced precision and recall (~140 µm²), minimizing contamination (~5%) while preserving epithelial structure.

6/ On @10xgenomics.bsky.social Xenium tests (with/without membrane staining), #segger outperforms other approaches - higher sensitivity & specificity, fewer edge errors, cleaner profiles, more reliable downstream results, in a split of compute time.

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segger optionally regroups unassigned transcripts based on their gene identity and spatial proximity into fragments

segger optionally regroups unassigned transcripts based on their gene identity and spatial proximity into fragments

Some fragments and cells are shown for 2 FOVs on a Xenium breast cancer dataset.

Some fragments and cells are shown for 2 FOVs on a Xenium breast cancer dataset.

5/ Cell-assigned transcripts form #segger 's “cells”. Optionally, the rest (up to 50%) could be grouped as “fragments”. First time to split these two entities semantically—key for handling cut-up, overlapping, or unstained cells!

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#Segger embeds cells & transcripts into a shared space and assigns the cell with the highest score for each transcript within a receptive field.

#Segger embeds cells & transcripts into a shared space and assigns the cell with the highest score for each transcript within a receptive field.

4/ #segger embeds cells & transcripts in a shared latent space - closer means likelier transcript-to-cell matches. It assigns each transcript to the cell with the highest score within a radius, in the physical space.

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segger's network architecture.

segger's network architecture.

Schematic of #segger’s workflow: cell polygons and transcript points build a heterogenous graph. A graph attention network then propagates messages on this graph to compute transcript-to-cell association scores.

Schematic of #segger’s workflow: cell polygons and transcript points build a heterogenous graph. A graph attention network then propagates messages on this graph to compute transcript-to-cell association scores.

3/ #segger ’s trick? Graph Attention Networks (GATs) + GPU acceleration on heterogeneous graphs. It represents transcripts and cells as nodes of a heterogeneous graph, and computes on gene identities, transcript locations (in 3D), nucleus/membrane stains, and their morphology.

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Accurate cell segmentation in ST data faces challenges like overlapping cells, transcript diffusion, background noise, and missing nuclei. Conservative assignments may over-segment cells, while under-segmentation leads to false positives that contaminate profiles. Effective segmentation must balance splitting cells and merging multiple cells.

Accurate cell segmentation in ST data faces challenges like overlapping cells, transcript diffusion, background noise, and missing nuclei. Conservative assignments may over-segment cells, while under-segmentation leads to false positives that contaminate profiles. Effective segmentation must balance splitting cells and merging multiple cells.

2/ If you’ve worked with Spatial Transcriptomics (ST) data, you’ve indeed had some troubles with segmentation accuracy. Segmentation problems mess up downstream analysis & obscure cell-cell interactions - which are ST’s biggest promises. #segger

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Segger logo

Segger logo

Message passing intuition behind the segger’s link-prediction model and the network architecture

Message passing intuition behind the segger’s link-prediction model and the network architecture

1/ New preprint! 🍳

@elihei.bsky.social and our team at @embl.org , @dkfz.bsky.social, and @mskcancercenter.bsky.social built #segger - a fast, accurate cell segmentation tool for spatial transcriptomics that assigns transcripts to their cell origins!

doi.org/10.1101/2025...

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