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利用最小足部间隙数据的短期频谱特征预测生物反馈步态训练的改善情况。

Predicting improvement in biofeedback gait training using short-term spectral features from minimum foot clearance data.

作者信息

Sengupta Nandini, Begg Rezaul, Rao Aravinda S, Bajelan Soheil, Said Catherine M, Palaniswami Marimuthu

机构信息

Department of Electrical and Electronic Engineering, The University of Melbourne, Parkville, VIC, Australia.

Institute for Health and Sport, Victoria University, Melbourne, VIC, Australia.

出版信息

Front Bioeng Biotechnol. 2024 Aug 28;12:1417497. doi: 10.3389/fbioe.2024.1417497. eCollection 2024.

Abstract

Stroke rehabilitation interventions require multiple training sessions and repeated assessments to evaluate the improvements from training. Biofeedback-based treadmill training often involves 10 or more sessions to determine its effectiveness. The training and assessment process incurs time, labor, and cost to determine whether the training produces positive outcomes. Predicting the effectiveness of gait training based on baseline minimum foot clearance (MFC) data would be highly beneficial, potentially saving resources, costs, and patient time. This work proposes novel features using the Short-term Fourier Transform (STFT)-based magnitude spectrum of MFC data to predict the effectiveness of biofeedback training. This approach enables tracking non-stationary dynamics and capturing stride-to-stride MFC value fluctuations, providing a compact representation for efficient processing compared to time-domain analysis alone. The proposed STFT-based features outperform existing wavelet, histogram, and Poincaré-based features with a maximum accuracy of 95%, F1 score of 96%, sensitivity of 93.33% and specificity of 100%. The proposed features are also statistically significant ( 0.001) compared to the descriptive statistical features extracted from the MFC series and the tone and entropy features extracted from the MFC percentage index series. The study found that short-term spectral components and the windowed mean value (DC value) possess predictive capabilities regarding the success of biofeedback training. The higher spectral amplitude and lower variance in the lower frequency zone indicate lower chances of improvement, while the lower spectral amplitude and higher variance indicate higher chances of improvement.

摘要

中风康复干预需要多次训练课程和反复评估,以评估训练带来的改善。基于生物反馈的跑步机训练通常需要10次或更多次训练课程来确定其有效性。训练和评估过程会产生时间、人力和成本,以确定训练是否产生积极效果。基于基线最小足部间隙(MFC)数据预测步态训练的有效性将非常有益,有可能节省资源、成本和患者时间。这项工作提出了使用基于短时傅里叶变换(STFT)的MFC数据幅度谱的新特征,以预测生物反馈训练的有效性。与仅进行时域分析相比,这种方法能够跟踪非平稳动态并捕捉步幅间的MFC值波动,提供紧凑的表示以便于高效处理。所提出的基于STFT的特征优于现有的基于小波、直方图和庞加莱的特征,最大准确率为95%,F1分数为96%,灵敏度为93.33%,特异性为100%。与从MFC系列中提取的描述性统计特征以及从MFC百分比指数系列中提取的音调与熵特征相比,所提出的特征在统计学上也具有显著性( 0.001)。该研究发现,短期频谱成分和加窗均值(直流值)对生物反馈训练的成功具有预测能力。较低频率区域中较高的频谱幅度和较低的方差表明改善的机会较低,而较低的频谱幅度和较高的方差表明改善的机会较高。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a92e/11387987/0f3f2ac570b4/fbioe-12-1417497-g002.jpg

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