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Classification of young healthy individuals with different exercise levels based on multiple musculoskeletal ultrasound images

机译:基于多个肌肉骨骼超声图像的不同运动水平的年轻健康个体分类

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Whether in sports or exercise rehabilitation, muscles are usually strengthened through exercise. In this process, the biological structure of the muscle is also changed subtly. However, it has not reported whether these changes can be reflected in ultrasonic images. Furthermore, it is a challenging and novel task to capture this nuance, and existing methods that use only one image are difficult to resolve it. Therefore, this study proposes a multiple images feature selection (MIFS) framework that combines information from multiple images, aiming to find an optimal feature set that can effectively distinguish between different exercise levels. In this study, the optimal feature set was obtained from seven differently operated musculoskeletal ultrasound images (MUI) of 107 healthy subjects (55 males, 52 females, age 21.0 +/- 1.9 years) included 54 regular exercisers and 53 irregular exercisers by the MIFS framework. All ultrasound images are acquired in B-mode with an 8.5 MHz linear array ultrasound transducer. Finally, we obtain an optimal feature set consisting of 20 features, and the optimal classification accuracy exceeds the existing single-image-based method, up to 78.9 %. This preliminary study suggests nuance in muscle structure caused by different exercise levels can be captured by ultrasound images. What's more, MIFS can more accurately deal with complicated task of classifying between regular and irregular exercisers as well. (C) 2020 Elsevier Ltd. All rights reserved.
机译:无论是在运动还是运动康复中,肌肉通常会通过运动加强。在该过程中,肌肉的生物结构也在巧妙地改变。但是,尚未报告这些变化是否可以反映在超声图像中。此外,捕获这种细微差异是一种具有挑战性和新颖的任务,并且难以解决一个图像的现有方法很难解决它。因此,该研究提出了多个图像特征选择(MIFS)框架,其将来自多个图像的信息组合,旨在找到可以有效地区分不同运动级别的最佳特征集。在这项研究中,最佳特征集是从107个健康受试者的七种不同操作的肌肉骨骼超声图像(MUI)获得(55名男性,52名女性,年龄21.0 +/- 1.9岁)包括54个常规举行者和53个不规则的锻炼者由MIFS框架。使用8.5MHz线性阵列超声换能器以B模式获取所有超声图像。最后,我们获得由20个功能组成的最佳特征集,最佳分类精度超过了现有的基于单图像的方法,高达78.9%。该初步研究表明,通过超声图像捕获不同运动水平引起的肌肉结构中的细微差异。更重要的是,MIF可以更准确地处理常规和不规则锻炼者之间分类的复杂任务。 (c)2020 elestvier有限公司保留所有权利。

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