Statistical Analysis of nnU-Net Models for Lung Nodule Segmentation
Metadatos
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MDPI
Materia
Statistical analysis Computed tomography Lung nodule
Fecha
2024-09-24Referencia bibliográfica
Jerónimo, A.; Valenzuela, O.; Rojas, I. Statistical Analysis of nnU-Net Models for Lung Nodule Segmentation. J. Pers. Med. 2024, 14, 1016. https://doi.org/10.3390/jpm14101016
Patrocinador
Grant PID2021-128317OB-I00 and grant PCI2023-146016-2 funded by MICIU/AEI/ 10.13039/501100011033 and co-funded by the “European Union”Resumen
This paper aims to conduct a statistical analysis of different components of nnU-Net models
to build an optimal pipeline for lung nodule segmentation in computed tomography images (CT
scan). This study focuses on semantic segmentation of lung nodules, using the UniToChest dataset.
Our approach is based on the nnU-Net framework and is designed to configure a whole segmentation
pipeline, thereby avoiding many complex design choices, such as data properties and architecture
configuration. Although these framework results provide a good starting point, many configurations
in this problem can be optimized. In this study, we tested two U-Net-based architectures, using
different preprocessing techniques, and we modified the existing hyperparameters provided by
nnU-Net. To study the impact of different settings on model segmentation accuracy, we conducted an
analysis of variance (ANOVA) statistical analysis. The factors studied included the datasets according
to nodule diameter size, model, preprocessing, polynomial learning rate scheduler, and number of
epochs. The results of the ANOVA analysis revealed significant differences in the datasets, models,
and preprocessing.