Abstract:Aim:
This study aimed to automatically implement liver disease quantification (DQ) in lymphoma using CT images without lesion segmentation.
Background:
Computed Tomography (CT) imaging manifestations of liver lymphoma include diffuse infiltration, blurred boundaries, vascular drift signs, and multiple lesions, making liver lymphoma segmentation extremely challenging.
Methods:
The method includes two steps: liver recognition and liver disease quantification. We use the transfer learning technique to recogni… Show more
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