Joint Learning for Pulmonary Nodule Segmentation, Attributes and Malignancy Prediction

10 Feb 2018 Botong Wu Zhen Zhou Jianwei Wang Yizhou Wang

Refer to the literature of lung nodule classification, many studies adopt Convolutional Neural Networks (CNN) to directly predict the malignancy of lung nodules with original thoracic Computed Tomography (CT) and nodule location. However, these studies cannot tell how the CNN works in terms of predicting the malignancy of the given nodule, e.g., it's hard to conclude that whether the region within the nodule or the contextual information matters according to the output of the CNN... (read more)

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