TL;DR
This paper introduces a lightweight, real-time glottis segmentation network designed for nasal intubation, demonstrating high accuracy and speed while being robust to scale variations and complex environments.
Contribution
The authors propose a novel scale-robust, lightweight network with advanced label assignment for improved glottis segmentation in NTI procedures.
Findings
Achieved 92.9% mDice on three datasets.
Model size is only 19 MB.
Inference speed exceeds 170 fps.
Abstract
Nasotracheal intubation (NTI) is a critical clinical procedure for establishing and maintaining patient airway patency. Machine-assisted NTI has emerged as a pivotal approach for optimizing procedural efficiency and minimizing manual intervention. However, visual detection algorithms employed for NTI navigation encounter significant challenges, including complex anatomical environments and suboptimal illumination conditions surrounding the glottis. Additionally, the glottis presents considerable scale variability throughout the procedure, initially appearing as a small, difficult-to-capture structure before expanding to occupy nearly the entire field of view. Moreover, traditional visual detection methods often have high computational costs, making real-time, high-precision detection on portable devices challenging. To enhance NTI efficacy and address these challenges, this paper…
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