Automated vision-based assistance tools in bronchoscopy: stenosis severity estimation.

IF 2.3 3区 医学 Q3 ENGINEERING, BIOMEDICAL
Clara Tomasini, Javier Rodriguez-Puigvert, Dinora Polanco, Manuel Viñuales, Luis Riazuelo, Ana C Murillo
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引用次数: 0

Abstract

Purpose: Subglottic stenosis refers to the narrowing of the subglottis, the airway between the vocal cords and the trachea. Its severity is typically evaluated by estimating the percentage of obstructed airway. This estimation can be obtained from CT data or through visual inspection by experts exploring the region. However, visual inspections are inherently subjective, leading to less consistent and robust diagnoses. No public methods or datasets are currently available for automated evaluation of this condition from bronchoscopy video.

Methods: We propose a pipeline for automated subglottic stenosis severity estimation during the bronchoscopy exploration, without requiring the physician to traverse the stenosed region. Our approach exploits the physical effect of illumination decline in endoscopy to segment and track the lumen and obtain a 3D model of the airway. This 3D model is obtained from a single frame and is used to measure the airway narrowing.

Results: Our pipeline is the first to enable automated and robust subglottic stenosis severity measurement using bronchoscopy images. The results show consistency with ground-truth estimations from CT scans and expert estimations and reliable repeatability across multiple estimations on the same patient. Our evaluation is performed on our new Subglottic Stenosis Dataset of real bronchoscopy procedures data.

Conclusion: We demonstrate how to automate evaluation of subglottic stenosis severity using only bronchoscopy. Our approach can assist with and shorten diagnosis and monitoring procedures, with automated and repeatable estimations and less exploration time, and save radiation exposure to patients as no CT is required. Additionally, we release the first public benchmark for subglottic stenosis severity assessment.

支气管镜检查中基于自动视觉的辅助工具:狭窄严重程度估计。
目的:声门下狭窄是指声带与气管之间的声门下气道变窄。其严重程度通常通过估计气道阻塞的百分比来评估。这种估计可以从CT数据中获得,也可以通过探索该区域的专家的目视检查获得。然而,视觉检查本质上是主观的,导致不一致和可靠的诊断。目前没有公开的方法或数据集可用于从支气管镜检查视频中自动评估这种情况。方法:我们提出了一种在支气管镜检查期间自动评估声门下狭窄严重程度的管道,而不需要医生穿过狭窄区域。我们的方法利用内窥镜下照明下降的物理效应来分割和跟踪管腔,并获得气道的3D模型。该三维模型是由单一帧获得的,用于测量气道狭窄。结果:我们的管道是第一个使用支气管镜图像实现自动化和稳健的声门下狭窄严重程度测量的管道。结果显示与CT扫描和专家估计的真值估计一致,并且在同一患者的多个估计中具有可靠的可重复性。我们的评估是在我们新的真实支气管镜检查程序数据的声门下狭窄数据集上进行的。结论:我们展示了如何仅使用支气管镜自动评估声门下狭窄的严重程度。我们的方法可以辅助和缩短诊断和监测程序,自动化和可重复的估计和更少的探查时间,并节省患者的辐射暴露,因为不需要CT。此外,我们发布了声门下狭窄严重程度评估的第一个公开基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Computer Assisted Radiology and Surgery
International Journal of Computer Assisted Radiology and Surgery ENGINEERING, BIOMEDICAL-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
CiteScore
5.90
自引率
6.70%
发文量
243
审稿时长
6-12 weeks
期刊介绍: The International Journal for Computer Assisted Radiology and Surgery (IJCARS) is a peer-reviewed journal that provides a platform for closing the gap between medical and technical disciplines, and encourages interdisciplinary research and development activities in an international environment.
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