开放存取的超声波隔膜数据集和使用深度学习网络的自动隔膜测量。

IF 5.8 2区 医学 Q1 Medicine
Zhifei Li, Lin Mao, Fan Jia, Shaohui Zhang, Cuiping Han, Shuiqiao Fu, Yueying Zheng, Yonghua Chu, Zuobing Chen, Daming Wang, Huilong Duan, Yinfei Zheng
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引用次数: 0

摘要

背景:评估膈肌功能对有效的临床管理和预防膈肌功能障碍相关并发症至关重要。然而,目前的测量方法依赖于人工技术,容易受到人为错误的影响:与现有的方法相比,基于分割神经网络的自动隔膜测量系统的性能如何?方法:利用新建立的超声隔膜数据集,该系统集成了分割和参数测量。该数据集包括用于隔膜厚度评估的b型超声图像和视频,以及用于运动测量的m型图像和视频。我们引入了一种新的基于深度学习的分割网络,多比率扩张U-Net (MDRU-Net),以实现准确的隔膜测量。该系统还包含一个全面的自动化测量实施计划。结果:将自动测量结果与临床医生进行的人工评估进行比较,发现隔膜增厚分数测量的平均误差为8.12%,而隔膜偏移测量的平均相对误差仅为4.3%。结果表明总体上较小的差异和增强了临床检测膈肌状况的潜力。此外,我们设计了一个用户友好的自动测量系统,用于评估隔膜参数和伴随的方法来测量超声衍生的隔膜参数。结论:本文构建了一个膜片厚度和偏移的超声数据集。基于U-Net架构,开发了一种自动隔膜分割算法,并设计了一种自动参数测量方案。对人工测量进行了误差比较分析。总体而言,本文提出的隔膜超声分割算法具有较高的分割性能和分割效率。基于该算法的自动测量方案精度高,消除了主观影响,提高了隔膜超声参数评估的自动化程度,为隔膜评估提供了新的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Open-access ultrasonic diaphragm dataset and an automatic diaphragm measurement using deep learning network.

Background: The assessment of diaphragm function is crucial for effective clinical management and the prevention of complications associated with diaphragmatic dysfunction. However, current measurement methodologies rely on manual techniques that are susceptible to human error: How does the performance of an automatic diaphragm measurement system based on a segmentation neural network focusing on diaphragm thickness and excursion compare with existing methodologies?

Methods: The proposed system integrates segmentation and parameter measurement, leveraging a newly established ultrasound diaphragm dataset. This dataset comprises B-mode ultrasound images and videos for diaphragm thickness assessment, as well as M-mode images and videos for movement measurement. We introduce a novel deep learning-based segmentation network, the Multi-ratio Dilated U-Net (MDRU-Net), to enable accurate diaphragm measurements. The system additionally incorporates a comprehensive implementation plan for automated measurement.

Results: Automatic measurement results are compared against manual assessments conducted by clinicians, revealing an average error of 8.12% in diaphragm thickening fraction measurements and a mere 4.3% average relative error in diaphragm excursion measurements. The results indicate overall minor discrepancies and enhanced potential for clinical detection of diaphragmatic conditions. Additionally, we design a user-friendly automatic measurement system for assessing diaphragm parameters and an accompanying method for measuring ultrasound-derived diaphragm parameters.

Conclusions: In this paper, we constructed a diaphragm ultrasound dataset of thickness and excursion. Based on the U-Net architecture, we developed an automatic diaphragm segmentation algorithm and designed an automatic parameter measurement scheme. A comparative error analysis was conducted against manual measurements. Overall, the proposed diaphragm ultrasound segmentation algorithm demonstrated high segmentation performance and efficiency. The automatic measurement scheme based on this algorithm exhibited high accuracy, eliminating subjective influence and enhancing the automation of diaphragm ultrasound parameter assessment, thereby providing new possibilities for diaphragm evaluation.

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来源期刊
Respiratory Research
Respiratory Research RESPIRATORY SYSTEM-
CiteScore
9.70
自引率
1.70%
发文量
314
审稿时长
4-8 weeks
期刊介绍: Respiratory Research publishes high-quality clinical and basic research, review and commentary articles on all aspects of respiratory medicine and related diseases. As the leading fully open access journal in the field, Respiratory Research provides an essential resource for pulmonologists, allergists, immunologists and other physicians, researchers, healthcare workers and medical students with worldwide dissemination of articles resulting in high visibility and generating international discussion. Topics of specific interest include asthma, chronic obstructive pulmonary disease, cystic fibrosis, genetics, infectious diseases, interstitial lung diseases, lung development, lung tumors, occupational and environmental factors, pulmonary circulation, pulmonary pharmacology and therapeutics, respiratory immunology, respiratory physiology, and sleep-related respiratory problems.
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