根据光学基准验证 IMU 并开发开源管道:在一名安装了经皮骨结合植入物的经股截肢患者身上进行的概念验证案例报告。

IF 5.2 2区 医学 Q1 ENGINEERING, BIOMEDICAL Journal of NeuroEngineering and Rehabilitation Pub Date : 2024-07-31 DOI:10.1186/s12984-024-01426-6
Kirstin Ahmed, Shayan Taheri, Ive Weygers, Max Ortiz-Catalan
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引用次数: 0

摘要

背景:在实验室条件下捕捉运动的系统限制了其在真实世界环境中的有效性。惯性测量单元(IMU)等移动运动捕捉解决方案可以加深我们对 "真实 "人体运动的理解。IMU 数据必须在每个应用中进行验证,以解释其临床适用性;对于不同人群尤其如此。我们的 IMU 分析方法以 OpenSim IMU 逆运动学工具包为基础,集成了基于多用途四元数的滤波器,并将现实的约束条件纳入底层生物力学模型。我们在一份案例报告中验证了我们的处理方法是否符合光学运动捕捉的参考标准,该报告的参与者患有经股骨截肢,安装了经皮骨结合植入物(POI),而没有截肢,在平地上行走。我们假设,通过使用这种新型管道,我们可以在临床上可接受的程度上验证 IMU 运动捕捉数据:单侧经股动脉截肢(TFA)患者截肢侧和完好侧两个系统之间的平均均方根误差(跨所有关节)分别为 2.35°(IQR = 1.45°)和 3.59°(IQR = 2.00°)。未截肢受试者的同等结果为 2.26°(IQR = 1.08°)。在未截肢的受试者中,TFA 的两个系统之间的关节水平平均均方根误差介于 1.66° 至 3.82° 之间,而非截肢的受试者则介于 1.21° 至 5.46° 之间。在未截肢的受试者中,TFA 的两个系统之间的平面内平均均方根误差范围为 2.17°(冠状面)至 3.91°(矢状面),1.96°(横向)至 2.32°(矢状面)。在 TFA 中,两个系统之间的多重相关系数(CMC)从 0.74 到大于 0.99 不等,在非截肢受试者中,从 0.72 到大于 0.99 不等,在每个数据集的平均值、每个平面和所有关节水平上都具有 "极佳 "的相似性。来自 TFA 的两个系统之间的归一化均方根误差从 3.40%(膝关节水平)到 54.54%(骨盆水平)不等,在未截肢的受试者中则从 2.18% 到 36.01%不等:我们提供了一个模块化处理管道,可以添加额外的层,便于更改底层生物力学模型,并可接受来自任何供应商的原始 IMU 数据。我们首次使用一名使用 POI 的 TFA 参与者的数据成功验证了该管道,并证明了我们的假设。
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Validation of IMU against optical reference and development of open-source pipeline: proof of concept case report in a participant with transfemoral amputation fitted with a Percutaneous Osseointegrated Implant.

Background: Systems that capture motion under laboratory conditions limit validity in real-world environments. Mobile motion capture solutions such as Inertial Measurement Units (IMUs) can progress our understanding of "real" human movement. IMU data must be validated in each application to interpret with clinical applicability; this is particularly true for diverse populations. Our IMU analysis method builds on the OpenSim IMU Inverse Kinematics toolkit integrating the Versatile Quaternion-based Filter and incorporates realistic constraints to the underlying biomechanical model. We validate our processing method against the reference standard optical motion capture in a case report with participants with transfemoral amputation fitted with a Percutaneous Osseointegrated Implant (POI) and without amputation walking over level ground. We hypothesis that by using this novel pipeline, we can validate IMU motion capture data, to a clinically acceptable degree.

Results: Average RMSE (across all joints) between the two systems from the participant with a unilateral transfemoral amputation (TFA) on the amputated and the intact sides were 2.35° (IQR = 1.45°) and 3.59° (IQR = 2.00°) respectively. Equivalent results in the non-amputated participant were 2.26° (IQR = 1.08°). Joint level average RMSE between the two systems from the TFA ranged from 1.66° to 3.82° and from 1.21° to 5.46° in the non-amputated participant. In plane average RMSE between the two systems from the TFA ranged from 2.17° (coronal) to 3.91° (sagittal) and from 1.96° (transverse) to 2.32° (sagittal) in the non-amputated participant. Coefficients of Multiple Correlation (CMC) results between the two systems in the TFA ranged from 0.74 to > 0.99 and from 0.72 to > 0.99 in the non-amputated participant and resulted in 'excellent' similarity in each data set average, in every plane and at all joint levels. Normalized RMSE between the two systems from the TFA ranged from 3.40% (knee level) to 54.54% (pelvis level) and from 2.18% to 36.01% in the non-amputated participant.

Conclusions: We offer a modular processing pipeline that enables the addition of extra layers, facilitates changes to the underlying biomechanical model, and can accept raw IMU data from any vendor. We successfully validate the pipeline using data, for the first time, from a TFA participant using a POI and have proved our hypothesis.

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来源期刊
Journal of NeuroEngineering and Rehabilitation
Journal of NeuroEngineering and Rehabilitation 工程技术-工程:生物医学
CiteScore
9.60
自引率
3.90%
发文量
122
审稿时长
24 months
期刊介绍: Journal of NeuroEngineering and Rehabilitation considers manuscripts on all aspects of research that result from cross-fertilization of the fields of neuroscience, biomedical engineering, and physical medicine & rehabilitation.
期刊最新文献
Comparison of synergy extrapolation and static optimization for estimating multiple unmeasured muscle activations during walking. Immersive virtual reality for learning exoskeleton-like virtual walking: a feasibility study. Instrumented assessment of lower and upper motor neuron signs in amyotrophic lateral sclerosis using robotic manipulation: an explorative study. Rest the brain to learn new gait patterns after stroke. Effects of virtual reality rehabilitation after spinal cord injury: a systematic review and meta-analysis.
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