A multi‐stage 3D convolutional neural network algorithm for CT‐based lung segment parcellation
Trishul Siddharthan, Zhoubing Xu, Bruce Spottiswoode, Chris Schettino, Yoel Siegel, Michalis Georgiou, Thomas Eluvathingal, Bernhard Geiger, Sasa Grbic, Partha Gosh, Rachid Fahmi, Naresh Punjabi

TL;DR
This paper introduces a deep learning algorithm that segments lung regions in CT scans, showing promising results for clinical use in patients with airway diseases.
Contribution
A novel multi-stage 3D CNN algorithm for CT-based lung segment parcellation is proposed and validated clinically.
Findings
The algorithm achieved a mean Dice score of 86.81 and an inclusion rate of 0.75 for lung segment parcellation.
99.2% intra-reader agreement was observed in qualitative evaluations of the parcellation results.
Individuals with COPD showed greater mismatch in parcellation compared to healthy controls.
Abstract
Current approaches to lung parcellation utilize established fissures between lobes to provide estimates of lobar volume. However, deep learning segment parcellation provides the ability to better assess regional heterogeneity in ventilation and perfusion. We aimed to validate and demonstrate the clinical applicability of CT‐based lung segment parcellation using deep learning on a clinical cohort with mixed airways disease. Using a 3D convolutional neural network, airway centerlines were determined using an image‐to‐image network. Tertiary bronchi were identified on top of the airway centerline, and the pulmonary segments were parcellated based on the spatial relationship with tertiary and subsequent bronchi. The data obtained by following this workflow was used to train a neural network to enable end‐to‐end lung segment parcellation directly from 123 chest CT images. The performance…
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Taxonomy
TopicsLung Cancer Diagnosis and Treatment · Chronic Obstructive Pulmonary Disease (COPD) Research · Radiomics and Machine Learning in Medical Imaging
