Open-source tool for Airway Segmentation in Computed Tomography using 2.5D Modified EfficientDet: Contribution to the ATM22 Challenge
arXiv:2209.15094v2 [eess.IV] 3 Oct 2022
Airway segmentation in computed tomography images can be used to analyze pulmonary diseases, however, manual segmentation is labor intensive and relies on expert knowledge. This manuscript details our contribution to MICCAI’s 2022 Airway Tree Modelling challenge, a competition of fully automated methods for airway segmentation. We employed a previously developed deep learning architecture based on a modified EfficientDet (MEDSeg), training from scratch for binary airway segmentation using the provided annotations. Our method achieved 90.72 Dice in internal validation, 95.52 Dice on external validation, and 93.49 Dice in the final test phase, while not being specifically designed or tuned for airway segmentation.
Full paper here: https://doi.org/10.48550/arXiv.2209.15094
Publication Info
- Authors: Diedre Carmo, Leticia Rittner, Roberto Lotufo
- How to cite: CARMO, Diedre; RITTNER, Leticia; LOTUFO, Roberto. Open-source tool for Airway Segmentation in Computed Tomography using 2.5 D Modified EfficientDet: Contribution to the ATM22 Challenge. arXiv preprint arXiv:2209.15094, 2022.
- Published: 3 October 2022