Application of the nnU-Net for automatic segmentation of lung lesion on CT images, and implication on radiomic models
Matteo Ferrante, Lisa Rinaldi, Francesca Botta, Xiaobin Hu, Andreas, Dolp, Marta Minotti, Francesca De Piano, Gianluigi Funicelli, Stefania Volpe,, Federica Bellerba, Paolo De Marco, Sara Raimondi, Stefania Rizzo, Kuangyu, Shi, Marta Cremonesi, Barbara A. Jereczek-Fossa

TL;DR
This study demonstrates that nnU-Net can automatically segment lung lesions on CT images with high accuracy, significantly reducing manual effort without compromising the performance of radiomic survival models.
Contribution
The paper introduces the application of nnU-Net for lung lesion segmentation and evaluates its impact on radiomic model performance, showing comparable results to manual segmentation.
Findings
Automatic segmentation achieved DICE=0.78 with ensemble methods.
No significant difference in survival model accuracy between manual and automatic contours.
Automatic segmentation reduces workload while maintaining predictive accuracy.
Abstract
Lesion segmentation is a crucial step of the radiomic workflow. Manual segmentation requires long execution time and is prone to variability, impairing the realisation of radiomic studies and their robustness. In this study, a deep-learning automatic segmentation method was applied on computed tomography images of non-small-cell lung cancer patients. The use of manual vs automatic segmentation in the performance of survival radiomic models was assessed, as well. METHODS A total of 899 NSCLC patients were included (2 proprietary: A and B, 1 public datasets: C). Automatic segmentation of lung lesions was performed by training a previously developed architecture, the nnU-Net, including 2D, 3D and cascade approaches. The quality of automatic segmentation was evaluated with DICE coefficient, considering manual contours as reference. The impact of automatic segmentation on the performance of…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Lung Cancer Diagnosis and Treatment · Gastric Cancer Management and Outcomes
