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CenSegNet: a generalist high-throughput deep learning framework for centrosome phenotyping at spatial and single-cell resolution in heterogeneous tissues

CenSegNet: a generalist high-throughput deep learning framework for centrosome phenotyping at spatial and single-cell resolution in heterogeneous tissues
CenSegNet: a generalist high-throughput deep learning framework for centrosome phenotyping at spatial and single-cell resolution in heterogeneous tissues
Centrosome amplification (CA) is a hallmark of epithelial cancers, yet its spatial complexity and phenotypic heterogeneity remain poorly resolved due to limitations in conventional image analysis. We present CenSegNet (Centrosome Segmentation Network), a modular deep learning framework for high-resolution, context-aware segmentation of centrosomes and epithelial architecture across diverse tissue types. Integrating a dual-branch architecture with uncertainty-guided refinement, CenSegNet achieves state-of-the-art performance and generalisability across both immunofluorescence and immunohistochemistry modalities, outperforming existing models in accuracy and morphological fidelity. Applied to tissue microarrays (TMAs) containing 911 breast cancer sample cores from 127 patients, CenSegNet enables the first large-scale, spatially resolved quantification of numerical and structural CA at single-cell resolution. These CA subtypes are mechanistically uncoupled, exhibiting distinct spatial distributions, age-dependent dynamics, and associations with histological tumour grade, hormone receptor status, genomic alterations, and nodal involvement. Discordant CA profiles at tumour margins are linked to local aggressiveness and stromal remodelling, underscoring their clinical relevance. To support broad adoption and reproducibility, CenSegNet is released as an open-source Python library. Together, our findings establish CenSegNet as a scalable, generalisable platform for spatially resolved centrosome phenotyping in intact tissues, enabling systematic dissection of the biology of this organelle and its dysregulation in cancer and other epithelial diseases.
bioRxiv
Cheng, Jiaoqi
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Fan, Keqiang
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Bailey, Miles
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Du, Xin
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Jena, Rajesh
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Savva, Costantinos
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Gou, Mengyang
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Cutress, Ramsey
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Beers, Stephen
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Cai, Xiaohao
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Elias, Salah
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Cheng, Jiaoqi
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Fan, Keqiang
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Bailey, Miles
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Du, Xin
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Jena, Rajesh
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Savva, Costantinos
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Gou, Mengyang
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Cutress, Ramsey
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Beers, Stephen
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Cai, Xiaohao
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Elias, Salah
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[Unknown type: UNSPECIFIED]

Record type: UNSPECIFIED

Abstract

Centrosome amplification (CA) is a hallmark of epithelial cancers, yet its spatial complexity and phenotypic heterogeneity remain poorly resolved due to limitations in conventional image analysis. We present CenSegNet (Centrosome Segmentation Network), a modular deep learning framework for high-resolution, context-aware segmentation of centrosomes and epithelial architecture across diverse tissue types. Integrating a dual-branch architecture with uncertainty-guided refinement, CenSegNet achieves state-of-the-art performance and generalisability across both immunofluorescence and immunohistochemistry modalities, outperforming existing models in accuracy and morphological fidelity. Applied to tissue microarrays (TMAs) containing 911 breast cancer sample cores from 127 patients, CenSegNet enables the first large-scale, spatially resolved quantification of numerical and structural CA at single-cell resolution. These CA subtypes are mechanistically uncoupled, exhibiting distinct spatial distributions, age-dependent dynamics, and associations with histological tumour grade, hormone receptor status, genomic alterations, and nodal involvement. Discordant CA profiles at tumour margins are linked to local aggressiveness and stromal remodelling, underscoring their clinical relevance. To support broad adoption and reproducibility, CenSegNet is released as an open-source Python library. Together, our findings establish CenSegNet as a scalable, generalisable platform for spatially resolved centrosome phenotyping in intact tissues, enabling systematic dissection of the biology of this organelle and its dysregulation in cancer and other epithelial diseases.

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2025.09.15.676250v2.full - Author's Original
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Published date: 15 September 2025

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Local EPrints ID: 506360
URI: http://eprints.soton.ac.uk/id/eprint/506360
PURE UUID: 43272fc1-aa94-4152-9fa9-b3877ca1dbf3
ORCID for Keqiang Fan: ORCID iD orcid.org/0000-0002-9411-2892
ORCID for Stephen Beers: ORCID iD orcid.org/0000-0002-3765-3342
ORCID for Xiaohao Cai: ORCID iD orcid.org/0000-0003-0924-2834
ORCID for Salah Elias: ORCID iD orcid.org/0000-0003-1005-438X

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Date deposited: 05 Nov 2025 17:33
Last modified: 06 Nov 2025 02:59

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Contributors

Author: Jiaoqi Cheng
Author: Keqiang Fan ORCID iD
Author: Miles Bailey
Author: Xin Du
Author: Rajesh Jena
Author: Costantinos Savva
Author: Mengyang Gou
Author: Ramsey Cutress
Author: Stephen Beers ORCID iD
Author: Xiaohao Cai ORCID iD
Author: Salah Elias ORCID iD

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