2022
DOI: 10.48550/arxiv.2207.13830
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3D-Morphomics, Morphological Features on CT scans for lung nodule malignancy diagnosis

Abstract: Pathologies systematically induce morphological changes, thus providing a major but yet insufficiently quantified source of observables for diagnosis. The study develops a predictive model of the pathological states based on morphological features (3D-morphomics) on Computed Tomography (CT) volumes. A complete workflow for mesh extraction and simplification of an organ's surface is developed, and coupled with an automatic extraction of morphological features given by the distribution of mean curvature and mesh… Show more

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