Accurate subtyping of lung cancers by modelling class dependencies
Identifying subtypes and histological patterns is crucial for lung cancer diagnosis and treatment. Nevertheless, datasets with complete subtyping annotations are scarce, and most existing work primarily focuses on categorising lung cancers into fundamental types, omitting the distinction of adenocar...
Main Authors: | Batchkala, G, Li, B, Fan, M, McCole, M, Brambilla, C, Gleeson, F, Rittscher, J |
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Format: | Conference item |
Language: | English |
Published: |
IEEE
2024
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