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基于胶囊网络的足底静态压力数据分析:基于深度学习的方法诊断 MS 患者的共济失调。

Analysis of static plantar pressure data with capsule networks: Diagnosing ataxia in MS patients with a deep learning-based approach.

机构信息

Fırat University, Institute of Science, Department of Software Engineering, Elazig, Turkey; Sivas Republic University, Faculty of Technology, Department of Software Engineering, Sivas, Turkey.

Fırat University, Vocational School of Technical Sciences, Department of Computer Programming, Elazig, Turkey.

出版信息

Mult Scler Relat Disord. 2024 Mar;83:105465. doi: 10.1016/j.msard.2024.105465. Epub 2024 Jan 21.

Abstract

In this study, it was aimed to detect ataxia in patients with Multiple Sclerosis (MS) by utilizing static plantar pressure data and capsule networks (CapsNet), one of the deep learning (DL) architectures. CapsNet is also equipped with a robust dynamic routing mechanism that determines the output of the next capsule. MS is a chronic nervous system disease that shows its effect in the central nervous system and manifests itself with attacks. One of the most common and challenging symptoms of MS is known as ataxia. Ataxia causes loss of control of limb muscle tone or gait disorders, leading to loss of balance and coordination. The diagnosis of ataxia in MS is applied employing the standard Expanded Disability Status Scale (EDSS) score. However, due to reasons such as physician misconception, diagnosis differences among physicians, and incorrect patient information, more unbiased solutions are required for the diagnosis. The results included Sensitivity at 96.34 % ± 1.71, Specificity at 98.11 % ± 2.04, Precision at 98.08 % ± 2.16, and Accuracy at 97.13 % ± 0.33. The main motivation of the study is to show that these deep learning methods can successfully detect ataxia in MS patients using static plantar pressure data. The high-performance measurements of sensitivity, specificity, precision and accuracy emphasize that the proposed system can be an effective tool in clinical practice. In addition, it was concluded that the proposed autonomous system would be a support mechanism to assist the physician in the detection of ataxia in patients with MS.

摘要

本研究旨在利用静态足底压力数据和胶囊网络(CapsNet)检测多发性硬化症(MS)患者的共济失调,CapsNet 是深度学习(DL)架构之一。CapsNet 还配备了强大的动态路由机制,用于确定下一个胶囊的输出。MS 是一种慢性神经系统疾病,在中枢神经系统中表现出来,并以发作的形式出现。MS 最常见和最具挑战性的症状之一是共济失调。共济失调会导致肢体肌肉张力失控或步态障碍,导致失去平衡和协调。MS 中的共济失调诊断采用标准的扩展残疾状况量表(EDSS)评分进行。然而,由于医生误解、医生之间的诊断差异以及患者信息不正确等原因,需要更公正的解决方案来进行诊断。研究结果包括敏感性为 96.34%±1.71%,特异性为 98.11%±2.04%,精确度为 98.08%±2.16%,准确性为 97.13%±0.33%。本研究的主要动机是表明这些深度学习方法可以成功地使用静态足底压力数据检测 MS 患者的共济失调。敏感性、特异性、精确性和准确性的高性能测量结果强调,所提出的系统可以成为临床实践中的有效工具。此外,研究还得出结论,所提出的自主系统将成为一种辅助医生检测 MS 患者共济失调的支持机制。

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