Artificial intelligence solution to classify pulmonary nodules on CT
Affiliation auteurs | !!!! Error affiliation !!!! |
Titre | Artificial intelligence solution to classify pulmonary nodules on CT |
Type de publication | Journal Article |
Year of Publication | 2020 |
Auteurs | Blanc D., Racine V., Khalil A., Deloche M., Broyelle J.-A, Hammouamri I., Sinitambirivoutin E., Fiammante M., Verdier E., Besson T., Sadate A., Lederlin M., Laurent F., Chassagnon G., Ferretti G., Diascorn Y., Brillet P.-Y, Cassagnes L, Caramella C., Loubet A., Abassebay N., Cuingnet P., Ohana M., Behr J., Ginzac A., Veyssieres H., Durando X., Bousaid I., Lassaux N., Brehant J. |
Journal | DIAGNOSTIC AND INTERVENTIONAL IMAGING |
Volume | 101 |
Pagination | 803-810 |
Date Published | DEC |
Type of Article | Article |
ISSN | 2211-5684 |
Mots-clés | Deep learning, Lung cancer, Machine learning, Pulmonary nodule, support vector machine |
Résumé | Purpose : The purpose of this study was to create an algorithm to detect and classify pulmonary nodules in two categories based on their volume greater than 100 mm(3) or not, using machine learning and deep learning techniques. Materials and method : The dataset used to train the model was provided by the organization team of the SFR (French Radiological Society) Data Challenge 2019. An asynchronous and parallel 3-stages pipeline was developed to process all the data (a data ``pre-processing'' stage; a ``nodule detection'' stage; a ``classifier'' stage). Lung segmentation was achieved using 3D U-NET algorithm; nodule detection was done using 3D Retina-UNET and classifier stage with a support vector machine algorithm on selected features. Performances were assessed using area under receiver operating characteristics curve (AUROC). Results : The pipeline showed good performance for pathological nodule detection and patient diagnosis. With the preparation dataset, an AUROC of 0.9058 (95% confidence interval [CI]: 0.8746-0.9362) was obtained, 87% yielding accuracy (95% CI: 84.83%-91.03%) for the ``nodule detection'' stage, corresponding to 86% specificity (95% CI: 82%-92%) and 89% sensitivity (95% CI: 84.83%-91.03%). Conclusion : A fully functional pipeline using 3D U-NET, 3D Retina-UNET and classifier stage with a support vector machine algorithm was developed, resulting in high capabilities for pulmonary nodule classification. (C) 2020 The Author(s). Published by Elsevier Masson SAS on behalf of Societe francaise de radiologie. |
DOI | 10.1016/j.diii.2020.10.004 |