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Application of nnU-Net for Automatic Segmentation of Lung Lesions on CT Images and Its Implication for Radiomic Models

Authors :
Ferrante, Matteo
Rinaldi, Lisa
Botta, Francesca
Hu, Xiaobin
Dolp, Andreas
Minotti, Marta
De Piano, Francesca
Funicelli, Gianluigi
Volpe, Stefania
Bellerba, Federica
De Marco, Paolo
Raimondi, Sara
Rizzo, Stefania
Shi, Kuangyu
Cremonesi, Marta
Jereczek-Fossa, Barbara A
Spaggiari, Lorenzo
De Marinis, Filippo
Orecchia, Roberto
Origgi, Daniela
Source :
Journal of Clinical Medicine; Volume 11; Issue 24; Pages: 7334, Ferrante, Matteo; Rinaldi, Lisa; Botta, Francesca; Hu, Xiaobin; Dolp, Andreas; Minotti, Marta; De Piano, Francesca; Funicelli, Gianluigi; Volpe, Stefania; Bellerba, Federica; De Marco, Paolo; Raimondi, Sara; Rizzo, Stefania; Shi, Kuangyu; Cremonesi, Marta; Jereczek-Fossa, Barbara A; Spaggiari, Lorenzo; De Marinis, Filippo; Orecchia, Roberto and Origgi, Daniela (2022). Application of nnU-Net for Automatic Segmentation of Lung Lesions on CT Images and Its Implication for Radiomic Models. Journal of clinical medicine, 11(24) MDPI 10.3390/jcm11247334
Publication Year :
2022

Abstract

Radiomics investigates the predictive role of quantitative parameters calculated from radiological images. In oncology, tumour segmentation constitutes a crucial step of the radiomic workflow. Manual segmentation is time-consuming and prone to inter-observer variability. In this study, a state-of-the-art deep-learning network for automatic segmentation (nnU-Net) was applied to computed tomography images of lung tumour patients, and its impact on the performance of survival radiomic models was assessed. In total, 899 patients were included, from two proprietary and one public datasets. Different network architectures (2D, 3D) were trained and tested on different combinations of the datasets. Automatic segmentations were compared to reference manual segmentations performed by physicians using the DICE similarity coefficient. Subsequently, the accuracy of radiomic models for survival classification based on either manual or automatic segmentations were compared, considering both hand-crafted and deep-learning features. The best agreement between automatic and manual contours (DICE = 0.78 ± 0.12) was achieved averaging 2D and 3D predictions and applying customised post-processing. The accuracy of the survival classifier (ranging between 0.65 and 0.78) was not statistically different when using manual versus automatic contours, both with hand-crafted and deep features. These results support the promising role nnU-Net can play in automatic segmentation, accelerating the radiomic workflow without impairing the models’ accuracy. Further investigations on different clinical endpoints and populations are encouraged to confirm and generalise these findings.

Details

ISSN :
20770383
Volume :
11
Issue :
24
Database :
OpenAIRE
Journal :
Journal of clinical medicine
Accession number :
edsair.doi.dedup.....c6668a5d035f54e01349a66838ba8fc2