Radiomics based likelihood functions for cancer diagnosis

Volume: 9, Issue: 1
Published: Jul 1, 2019
Abstract
Radiomic features based classifiers and neural networks have shown promising results in tumor classification. The classification performance can be further improved greatly by exploring and incorporating the discriminative features towards cancer into mathematical models. In this research work, we have developed two radiomics driven likelihood models in Computed Tomography(CT) images to classify lung, colon, head and neck cancer. Initially, two...
Paper Details
Title
Radiomics based likelihood functions for cancer diagnosis
Published Date
Jul 1, 2019
Volume
9
Issue
1
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