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P004 Enhanced metastasis risk prediction in cutaneous squamous cell carcinoma using deep learning and computational histopathology: cSCCNet development and evaluation

Peleva, Emilia
Chen, Yue
Finke, Bernhard
Rizvi, Hasan
Healy, Eugene
Lai, Chester
Craig, Paul
Rickaby, William
Schoenherr, Christina
Nourse, Craig
... show 5 more
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Date
2025-06-27
Type
Conference Abstract
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Abstract
Cutaneous squamous cell carcinoma (cSCC) is the most common skin cancer with metastatic potential, and development of metastases carries a poor prognosis. To address the need for reliable risk stratification, a multidisciplinary team including dermatologists, pathologists and data scientists developed cSCCNet, a deep learning model using digital pathology of primary cSCC to predict metastatic risk. We present an update on the cSCCNet collaboration, including a more robust model development pipeline and incorporation of histopathological analysis including multiplex immunohistochemistry, to improve model explainability. A retrospective cohort of 228 cSCCs is used for model development. cSCCNet automatically selects the tumour area in standard histopathological slides and then stratifies primary cSCC into high- vs. low-risk categories, with heatmaps indicating the most predictive tiles contributing to explainability. On a 20% holdout testing cohort (n = 41), cSCCNet achieved area under the receiver operating characteristic curve 0.91 and 93% accuracy in predicting risk of metastasis, outperforming a gene expression-based tool and histopathological staging (Table). Multivariate analysis including common staging criteria confirmed cSCCNet as an independent predictor for metastasis. Histopathological analysis including multiplex immunohistochemistry suggests that tumour differentiation, acantholysis, desmoplasia and CD3 T-cell infiltration were important in predicting risk of developing metastasis. Although further validation including prospective evaluation is required, cSCCNet has potential as a reliable and accurate tool for metastatic risk prediction.
Citation
Peleva, E., Chen, Y., Finke, B., Rizvi, H., Healy, E., Lai, C., ... & Wang, J. (2025). P004 Enhanced metastasis risk prediction in cutaneous squamous cell carcinoma using deep learning and computational histopathology: cSCCNet development and evaluation. British Journal of Dermatology, 193(Supplement_1), ljaf085-032.
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