腺癌
肺
医学
医学影像学
医学物理学
放射科
内科学
癌症
作者
Fawen Du,Huiyu Zhou,Yi Niu,Zeyu Han,Xiaodan Sui
摘要
The process of classifying LAD into five subtypes assists pathologists in selecting appropriate treatments and enables them to predict tumor mutation burden (TMB) and analyze the spatial distribution of immune checkpoint proteins based on this and other clinical data. In addition, the proposed HybridNet fuses CNN and Transformer information several times and is able to improve the accuracy of subtype classification, and also shows satisfactory performance on public datasets with some generalization ability.
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