Towards multimodal visualization of esophageal motility: fusion of manometry, impedance, and videofluoroscopic image sequences.

IF 2.3 3区 医学 Q3 ENGINEERING, BIOMEDICAL International Journal of Computer Assisted Radiology and Surgery Pub Date : 2024-10-08 DOI:10.1007/s11548-024-03265-1
Alexander Geiger, Lukas Bernhard, Florian Gassert, Hubertus Feußner, Dirk Wilhelm, Helmut Friess, Alissa Jell
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Abstract

Purpose: Dysphagia is the inability or difficulty to swallow normally. Standard procedures for diagnosing the exact disease are, among others, X-ray videofluoroscopy, manometry and impedance examinations, usually performed consecutively. In order to gain more insights, ongoing research is aiming to collect these different modalities at the same time, with the goal to present them in a joint visualization. One idea to create a combined view is the projection of the manometry and impedance values onto the right location in the X-ray images. This requires to identify the exact sensor locations in the images.

Methods: This work gives an overview of the challenges associated with the sensor detection task and proposes a robust approach to detect the sensors in X-ray image sequences, ultimately allowing to project the manometry and impedance values onto the right location in the images.

Results: The developed sensor detection approach is evaluated on a total of 14 sequences from different patients, achieving a F1-score of 86.36%. To demonstrate the robustness of the approach, another study is performed by adding different levels of noise to the images, with the performance of our sensor detection method only slightly decreasing in these scenarios. This robust sensor detection provides the basis to accurately project manometry and impedance values onto the images, allowing to create a multimodal visualization of the swallow process. The resulting visualizations are evaluated qualitatively by domain experts, indicating a great benefit of this proposed fused visualization approach.

Conclusion: Using our preprocessing and sensor detection method, we show that the sensor detection task can be successfully approached with high accuracy. This allows to create a novel, multimodal visualization of esophageal motility, helping to provide more insights into swallow disorders of patients.

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食管运动的多模式可视化:测压、阻抗和视频透视图像序列的融合。
目的:吞咽困难是指无法或难以正常吞咽。诊断这种疾病的标准程序包括 X 射线视频荧光镜检查、压力测量和阻抗检查,通常是连续进行的。为了获得更多的洞察力,正在进行的研究旨在同时收集这些不同的模式,目的是将它们以联合可视化的方式呈现出来。创建联合视图的一个想法是将测压和阻抗值投影到 X 光图像的正确位置上。这就需要确定图像中传感器的准确位置:方法:这项工作概述了与传感器检测任务相关的挑战,并提出了一种在 X 射线图像序列中检测传感器的稳健方法,最终可将测压和阻抗值投射到图像中的正确位置:结果:开发的传感器检测方法在来自不同患者的总共 14 个序列上进行了评估,F1 分数达到 86.36%。为了证明该方法的鲁棒性,还进行了另一项研究,即在图像中添加不同程度的噪音,在这些情况下,我们的传感器检测方法的性能仅略有下降。这种稳健的传感器检测方法为将压力测量和阻抗值准确投射到图像上提供了基础,从而可以创建吞咽过程的多模态可视化。领域专家对由此产生的可视化效果进行了定性评估,表明这种融合可视化方法具有极大的优势:通过使用我们的预处理和传感器检测方法,我们证明了传感器检测任务可以高精度地成功完成。这使得我们可以创建一种新颖的、多模式的食管运动可视化方法,帮助人们更深入地了解患者的吞咽障碍。
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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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