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基于轮廓正弦图信号和辅助知识学习的步态损伤分析

Gait Impairment Analysis Using Silhouette Sinogram Signals and Assisted Knowledge Learning.

作者信息

Al-Masni Mohammed A, Marzban Eman N, Al-Shamiri Abobakr Khalil, Al-Antari Mugahed A, Alabdulhafith Maali Ibrahim, Mahmoud Noha F, Abdel Samee Nagwan, Kadah Yasser M

机构信息

Department of Artificial Intelligence and Data Science, College of Software & Convergence Technology, Sejong University, Seoul 05006, Republic of Korea.

Biomedical Engineering Department, Cairo University, Giza 12613, Egypt.

出版信息

Bioengineering (Basel). 2024 May 10;11(5):477. doi: 10.3390/bioengineering11050477.

Abstract

The analysis of body motion is a valuable tool in the assessment and diagnosis of gait impairments, particularly those related to neurological disorders. In this study, we propose a novel automated system leveraging artificial intelligence for efficiently analyzing gait impairment from video-recorded images. The proposed methodology encompasses three key aspects. First, we generate a novel one-dimensional representation of each silhouette image, termed a silhouette sinogram, by computing the distance and angle between the centroid and each detected boundary points. This process enables us to effectively utilize relative variations in motion at different angles to detect gait patterns. Second, a one-dimensional convolutional neural network (1D CNN) model is developed and trained by incorporating the consecutive silhouette sinogram signals of silhouette frames to capture spatiotemporal information via assisted knowledge learning. This process allows the network to capture a broader context and temporal dependencies within the gait cycle, enabling a more accurate diagnosis of gait abnormalities. This study conducts training and an evaluation utilizing the publicly accessible INIT GAIT database. Finally, two evaluation schemes are employed: one leveraging individual silhouette frames and the other operating at the subject level, utilizing a majority voting technique. The outcomes of the proposed method showed superior enhancements in gait impairment recognition, with overall F1-scores of 100%, 90.62%, and 77.32% when evaluated based on sinogram signals, and 100%, 100%, and 83.33% when evaluated based on the subject level, for cases involving two, four, and six gait abnormalities, respectively. In conclusion, by comparing the observed locomotor function to a conventional gait pattern often seen in healthy individuals, the recommended approach allows for a quantitative and non-invasive evaluation of locomotion.

摘要

身体运动分析是评估和诊断步态障碍的一项重要工具,尤其是与神经系统疾病相关的步态障碍。在本研究中,我们提出了一种新颖的自动化系统,利用人工智能从视频记录图像中高效分析步态障碍。所提出的方法包括三个关键方面。首先,我们通过计算质心与每个检测到的边界点之间的距离和角度,生成每个轮廓图像的一种新颖的一维表示,称为轮廓正弦图。这一过程使我们能够有效利用不同角度运动的相对变化来检测步态模式。其次,通过合并轮廓帧的连续轮廓正弦图信号来开发和训练一维卷积神经网络(1D CNN)模型,以通过辅助知识学习捕获时空信息。这一过程使网络能够在步态周期内捕获更广泛的上下文和时间依赖性,从而更准确地诊断步态异常。本研究利用公开可用的INIT GAIT数据库进行训练和评估。最后,采用了两种评估方案:一种利用单个轮廓帧,另一种在受试者层面进行操作,采用多数投票技术。所提方法的结果在步态障碍识别方面显示出显著的提升,对于涉及两种、四种和六种步态异常的情况,基于正弦图信号评估时的总体F1分数分别为100%、90.62%和77.32%,基于受试者层面评估时分别为100%、100%和83.33%。总之,通过将观察到的运动功能与健康个体中常见的传统步态模式进行比较,推荐的方法能够对运动进行定量和非侵入性评估。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d4b5/11118059/7e6161fa25d1/bioengineering-11-00477-g001.jpg

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