Department of Health Sciences, University of Leicester, Leicester, UK.
Department of Cardiovascular Sciences, University of Leicester, Leicester, UK.
Ultrason Imaging. 2021 May;43(3):139-148. doi: 10.1177/01617346211009788. Epub 2021 Apr 15.
Chronic kidney disease (CKD) is characterized by progressive reductions in skeletal muscle function and size. The concept of muscle quality is increasingly being used to assess muscle health, although the best means of assessment remains unidentified. The use of muscle echogenicity is limited by an inability to be compared across devices. Gray level of co-occurrence matrix (GLCM), a form of image texture analysis, may provide a measure of muscle quality, robust to scanner settings. This study aimed to identify GLCM values from skeletal muscle images in CKD and investigate their association with physical performance and strength (a surrogate of muscle function). Transverse images of the rectus femoris muscle were obtained using B-mode 2D ultrasound imaging. Texture analysis (GLCM) was performed using ImageJ. Five different GLCM features were quantified: energy or angular second moment (ASM), entropy, homogeneity, or inverse difference moment (IDM), correlation, and contrast. Physical function and strength were assessed using tests of handgrip strength, sit to stand-60, gait speed, incremental shuttle walk test, and timed up-and-go. Correlation coefficients between GLCM indices were compared to each objective functional measure. A total of 90 CKD patients (age 64.6 (10.9) years, 44% male, eGFR 33.8 (15.7) mL/minutes/1.73 m) were included. Better muscle function was largely associated with those values suggestive of greater image texture homogeneity (i.e., greater ASM, correlation, and IDM, lower entropy and contrast). Entropy showed the greatest association across all the functional assessments ( = -.177). All GLCM parameters, a form of higher-order texture analysis, were associated with muscle function, although the largest association as seen with image entropy. Image homogeneity likely indicates lower muscle infiltration of fat and fibrosis. Texture analysis may provide a novel indicator of muscle quality that is robust to changes in scanner settings. Further research is needed to substantiate our findings.
慢性肾脏病(CKD)的特征是骨骼肌功能和大小逐渐降低。虽然评估肌肉健康的最佳方法仍未确定,但肌肉质量的概念越来越多地被用于评估肌肉健康。由于无法在不同设备之间进行比较,因此肌肉回声性的使用受到限制。灰度共生矩阵(GLCM)是一种图像纹理分析形式,它可能提供一种评估肌肉质量的方法,对扫描仪设置具有稳健性。本研究旨在确定 CKD 骨骼肌图像中的 GLCM 值,并研究其与身体机能和力量(肌肉功能的替代指标)的关系。使用 B 型二维超声成像获取股直肌的横截面图像。使用 ImageJ 进行纹理分析(GLCM)。量化了 5 种不同的 GLCM 特征:能量或角二阶矩(ASM)、熵、同质性或倒数差异矩(IDM)、相关性和对比度。使用握力、坐立-60 测试、步态速度、递增穿梭步行测试和计时起立行走测试来评估身体机能和力量。将 GLCM 指数与每个客观功能测量之间的相关系数进行比较。共纳入 90 名 CKD 患者(年龄 64.6(10.9)岁,44%为男性,eGFR 33.8(15.7)mL/minutes/1.73 m)。更好的肌肉功能主要与那些提示更大图像纹理同质性的数值相关(即更大的 ASM、相关性和 IDM,更低的熵和对比度)。在所有功能评估中,熵的相关性最大( = -.177)。所有 GLCM 参数(一种更高阶的纹理分析形式)都与肌肉功能相关,尽管与图像熵的相关性最大。图像同质性可能表明肌肉脂肪和纤维化浸润程度较低。纹理分析可能提供一种稳健的肌肉质量的新指标,对扫描仪设置的变化具有稳健性。需要进一步的研究来证实我们的发现。