Inicio  /  Cancers  /  Vol: 14 Par: 21 (2022)  /  Artículo
ARTÍCULO
TITULO

Generalization of Deep Learning in Digital Pathology: Experience in Breast Cancer Metastasis Detection

Sofia Jarkman    
Micael Karlberg    
Milda Poceviciute    
Anna Bodén    
Péter Bándi    
Geert Litjens    
Claes Lundström    
Darren Treanor and Jeroen van der Laak    

Resumen

Pathology is a cornerstone in cancer diagnostics, and digital pathology and artificial intelligence-driven image analysis could potentially save time and enhance diagnostic accuracy. For clinical implementation of artificial intelligence, a major question is whether the computer models maintain high performance when applied to new settings. We tested the generalizability of a highly accurate deep learning model for breast cancer metastasis detection in sentinel lymph nodes from, firstly, unseen sentinel node data and, secondly, data with a small change in surgical indication, in this case lymph nodes from axillary dissections. Model performance dropped in both settings, particularly on axillary dissection nodes. Retraining of the model was needed to mitigate the performance drop. The study highlights the generalization challenge of clinical implementation of AI models, and the possibility that retraining might be necessary.

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