Human-recognizable CT image features of subsolid lung nodules associated with diagnosis and classification by convolutional neural networks.
Beibei JiangYaping ZhangLu ZhangGeertruida H de BockRozemarijn VliegenthartXueqian XiePublished in: European radiology (2021)
• CNN achieved high accuracy (93%) in classifying subsolid nodules on CT images into three categories: benign and preinvasive lesions, MIA, and IA. • The gradient-weighted class activation map (Grad-CAM) located the entire region of image features that determined the final classification, and the visualization of the separated activated areas was consistent with radiologists' expertise for diagnosing subsolid nodules. • DeepDream showed the image features that CNN learned from a training dataset in a human-recognizable pattern.