Deep Learning-based Thigh Muscle Investigation Using MRI For Prosthetic Development for Patients Undergoing Total Knee Replacement (TKR).

IF 1.1 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Current Medical Imaging Reviews Pub Date : 2024-01-01 DOI:10.2174/0115734056284002240318055326
Vinod Arunachalam, Kumareshan N
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引用次数: 0

Abstract

Background: A prosthetic device is designed based on the quantitative analysis of muscle MRI which will improve the muscle control achieved with functional electrical stimulation/ guided robotic exoskeletons. Electromyography (EMG) provides muscle functionality information while MRI provides the physiological and functionality of muscles. The sensor feedbacks were used for the bionic prosthesis, but the length of muscle using image processing was not correlated.

Objective: To investigate and perform qualitative and quantitative assessment of thigh muscle using MRI. The objective of the work is to improve the existing VAG signal classification method to diagnose abnormality using MRI for patients undergoing Total knee replacement (TKR).

Methods: A deep learning method for qualitative and quantitative assessment of thigh muscle is done using MRI. In existing prosthetic devices, electrical measurements of a person's muscles are obtained using surface or implantable electrodes. Several methods were used for the classification and diagnostic processes. The existing methods have drawbacks in feature extraction and require experts to design the system. This work combines medical image processing and orthopaedic prosthetics to develop a therapeutic method.

Results & discussion: This design provides much more precise control of prosthetic limbs using the image processing technique. The hybrid CNN swarm-based method measures the muscle structure and functions. Along with the sensor readings, these details are combined for prosthetic control. The implementation was carried out in MATLAB, Sketchuppro, and Arduino IDE.

Conclusion: A combined swarm intelligence and deep learning method were proposed for qualitative and quantitative assessment of thigh muscle. The prosthetic device choice was done from the scanned MRI image like Humerus-T prosthetics, segmental prosthesis and arthrodesis prosthesis. The investigation was done for the Total knee replacement (TKR) approach.

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利用磁共振成像进行基于深度学习的大腿肌肉研究,为接受全膝关节置换术 (TKR) 的患者开发假肢。
背景:根据肌肉磁共振成像的定量分析设计了一种假肢装置,它将改善功能性电刺激/引导机器人外骨骼实现的肌肉控制。肌电图(EMG)提供肌肉功能信息,而核磁共振成像则提供肌肉的生理和功能信息。仿生假肢使用了传感器反馈,但使用图像处理的肌肉长度并不相关:研究并利用核磁共振成像对大腿肌肉进行定性和定量评估。这项工作的目的是改进现有的 VAG 信号分类方法,以便使用 MRI 为接受全膝关节置换术(TKR)的患者诊断异常:方法:采用深度学习方法,利用核磁共振成像对大腿肌肉进行定性和定量评估。在现有的假肢装置中,使用表面或植入式电极对人的肌肉进行电测量。在分类和诊断过程中使用了多种方法。现有方法在特征提取方面存在缺陷,并且需要专家来设计系统。这项工作将医学图像处理和矫形假肢学结合起来,开发出一种治疗方法:该设计利用图像处理技术对假肢进行更精确的控制。基于混合 CNN 蜂群的方法可测量肌肉结构和功能。这些细节与传感器读数相结合,用于假肢控制。实施工作在 MATLAB、Sketchuppro 和 Arduino IDE 中进行:结论:提出了一种群集智能和深度学习相结合的方法,用于对大腿肌肉进行定性和定量评估。根据扫描的核磁共振图像选择假体装置,如肱骨-T 假体、节段假体和关节置换假体。该研究针对全膝关节置换术(TKR)方法进行。
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来源期刊
CiteScore
2.60
自引率
0.00%
发文量
246
审稿时长
1 months
期刊介绍: Current Medical Imaging Reviews publishes frontier review articles, original research articles, drug clinical trial studies and guest edited thematic issues on all the latest advances on medical imaging dedicated to clinical research. All relevant areas are covered by the journal, including advances in the diagnosis, instrumentation and therapeutic applications related to all modern medical imaging techniques. The journal is essential reading for all clinicians and researchers involved in medical imaging and diagnosis.
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