Semantic segmentation for individual thigh skeletal muscles of athletes on magnetic resonance images.

IF 1.7 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Jun Kasahara, Hiroki Ozaki, Takeo Matsubayashi, Hideyuki Takahashi, Ryohei Nakayama
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引用次数: 0

Abstract

The skeletal muscles that athletes should train vary depending on their discipline and position. Therefore, individual skeletal muscle cross-sectional area assessment is important in the development of training strategies. To measure the cross-sectional area of skeletal muscle, manual segmentation of each muscle is performed using magnetic resonance (MR) imaging. This task is time-consuming and requires significant effort. Additionally, interobserver variability can sometimes be problematic. The purpose of this study was to develop an automated computerized method for semantic segmentation of individual thigh skeletal muscles from MR images of athletes. Our database consisted of 697 images from the thighs of 697 elite athletes. The images were randomly divided into a training dataset (70%), a validation dataset (10%), and a test dataset (20%). A label image was generated for each image by manually annotating 15 object classes: 12 different skeletal muscles, fat, bones, and vessels and nerves. Using the validation dataset, DeepLab v3+ was chosen from three different semantic segmentation models as a base model for segmenting individual thigh skeletal muscles. The feature extractor in DeepLab v3+ was also optimized to ResNet50. The mean Jaccard index and Dice index for the proposed method were 0.853 and 0.916, respectively, which were significantly higher than those from conventional DeepLab v3+ (Jaccard index: 0.810, p < .001; Dice index: 0.887, p < .001). The proposed method achieved a mean area error for 15 objective classes of 3.12%, useful in the assessment of skeletal muscle cross-sectional area from MR images.

磁共振图像上运动员大腿骨骼肌的语义分割。
运动员应该训练的骨骼肌根据他们的训练和位置而变化。因此,个体骨骼肌横截面积评估在训练策略的制定中是重要的。为了测量骨骼肌的横截面积,使用磁共振(MR)成像对每块肌肉进行人工分割。这项任务很耗时,需要付出很大的努力。此外,观察者之间的差异有时也会带来问题。本研究的目的是开发一种自动化的计算机方法,用于从运动员的MR图像中对单个大腿骨骼肌进行语义分割。我们的数据库包含697张来自697名优秀运动员大腿的图像。图像被随机分为训练数据集(70%)、验证数据集(10%)和测试数据集(20%)。通过手动注释15个对象类别(12个不同的骨骼肌、脂肪、骨骼、血管和神经),为每个图像生成标签图像。使用验证数据集,从三种不同的语义分割模型中选择DeepLab v3+作为分割单个大腿骨骼肌的基础模型。DeepLab v3+中的特征提取器也优化到ResNet50。该方法的平均Jaccard指数和Dice指数分别为0.853和0.916,显著高于传统DeepLab v3+方法(Jaccard指数:0.810,p
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来源期刊
Radiological Physics and Technology
Radiological Physics and Technology RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
3.00
自引率
12.50%
发文量
40
期刊介绍: The purpose of the journal Radiological Physics and Technology is to provide a forum for sharing new knowledge related to research and development in radiological science and technology, including medical physics and radiological technology in diagnostic radiology, nuclear medicine, and radiation therapy among many other radiological disciplines, as well as to contribute to progress and improvement in medical practice and patient health care.
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