2024
DOI: 10.3389/fonc.2024.1389396
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Neighborhood attention transformer multiple instance learning for whole slide image classification

Rukhma Aftab,
Qiang Yan,
Juanjuan Zhao
et al.

Abstract: IntroductionPathologists rely on whole slide images (WSIs) to diagnose cancer by identifying tumor cells and subtypes. Deep learning models, particularly weakly supervised ones, classify WSIs using image tiles but may overlook false positives and negatives due to the heterogeneous nature of tumors. Both cancerous and healthy cells can proliferate in patterns that extend beyond individual tiles, leading to errors at the tile level that result in inaccurate tumor-level classifications.MethodsTo address this limi… Show more

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