3D-Morphomics, Morphological Features on CT scans for lung nodule
malignancy diagnosis
- URL: http://arxiv.org/abs/2207.13830v1
- Date: Wed, 27 Jul 2022 23:50:47 GMT
- Title: 3D-Morphomics, Morphological Features on CT scans for lung nodule
malignancy diagnosis
- Authors: Elias Munoz, Pierre Baudot, Van-Khoa Le, Charles Voyton, Benjamin
Renoust, Danny Francis, Vladimir Groza, Jean-Christophe Brisset, Ezequiel
Geremia, Antoine Iannessi, Yan Liu, Benoit Huet
- Abstract summary: The study develops a predictive model of the pathological states based on morphological features (3D-morphomics) on Computed Tomography (CT) volumes.
An XGBoost supervised classifier is then trained and tested on the 3D-morphomics to predict the pathological states.
Using 3D-morphomics only, the classification model of lung nodules into malignant vs. benign achieves 0.964 of AUC.
- Score: 8.728543774561405
- License: http://creativecommons.org/licenses/by/4.0/
- 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 energy. An
XGBoost supervised classifier is then trained and tested on the 3D-morphomics
to predict the pathological states. This framework is applied to the prediction
of the malignancy of lung's nodules. On a subset of NLST database with
malignancy confirmed biopsy, using 3D-morphomics only, the classification model
of lung nodules into malignant vs. benign achieves 0.964 of AUC. Three other
sets of classical features are trained and tested, (1) clinical relevant
features gives an AUC of 0.58, (2) 111 radiomics gives an AUC of 0.976, (3)
radiologist ground truth (GT) containing the nodule size, attenuation and
spiculation qualitative annotations gives an AUC of 0.979. We also test the
Brock model and obtain an AUC of 0.826. Combining 3D-morphomics and radiomics
features achieves state-of-the-art results with an AUC of 0.978 where the
3D-morphomics have some of the highest predictive powers. As a validation on a
public independent cohort, models are applied to the LIDC dataset, the
3D-morphomics achieves an AUC of 0.906 and the 3D-morphomics+radiomics achieves
an AUC of 0.958, which ranks second in the challenge among deep models. It
establishes the curvature distributions as efficient features for predicting
lung nodule malignancy and a new method that can be applied directly to
arbitrary computer aided diagnosis task.
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