Airway Tree Modeling Using Dual-channel 3D UNet 3+ with Vesselness Prior
Hsiang-Chin Chien, Ching-Ping Wang, Jung-Chih Chen, Chia-Yen Lee

TL;DR
This paper introduces a dual-channel 3D UNet 3+ model enhanced with vesselness prior for improved lung airway tree segmentation in CT images, aiding pulmonary disease diagnosis.
Contribution
It combines the Frangi vesselness filter with UNet 3+ to improve airway segmentation accuracy in medical imaging.
Findings
Enhanced segmentation accuracy demonstrated
Effective integration of vesselness prior
Potential for better pulmonary disease diagnosis
Abstract
The lung airway tree modeling is essential to work for the diagnosis of pulmonary diseases, especially for X-Ray computed tomography (CT). The airway tree modeling on CT images can provide the experts with 3-dimension measurements like wall thickness, etc. This information can tremendously aid the diagnosis of pulmonary diseases like chronic obstructive pulmonary disease [1-4]. Many scholars have attempted various ways to model the lung airway tree, which can be split into two major categories based on its nature. Namely, the model-based approach and the deep learning approach. The performance of a typical model-based approach usually depends on the manual tuning of the model parameter, which can be its advantages and disadvantages. The advantage is its don't require a large amount of training data which can be beneficial for a small dataset like medical imaging. On the other hand, the…
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Taxonomy
TopicsHydrological Forecasting Using AI
