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An Automated Method for Tendon Image Segmentation on Ultrasound Using Grey-Level Co-Occurrence Matrix Features and Hidden Gaussian Markov Random Fields

Computers in Biology and Medicine(2024)SCI 3区SCI 2区

Univ Oxford | Imaging Olymp Pk | Google Res

Cited 1|Views18
Abstract
BACKGROUND:Despite knowledge of qualitative changes that occur on ultrasound in tendinopathy, there is currently no objective and reliable means to quantify the severity or prognosis of tendinopathy on ultrasound. OBJECTIVE:The primary objective of this study is to produce a quantitative and automated means of inferring potential structural changes in tendinopathy by developing and implementing an algorithm which performs a texture based segmentation of tendon ultrasound (US) images. METHOD:A model-based segmentation approach is used which combines Gaussian mixture models, Markov random field theory and grey-level co-occurrence (GLCM) features. The algorithm is trained and tested on 49 longitudinal B-mode ultrasound images of the Achilles tendons which are labelled as tendinopathic (24) or healthy (25). Hyperparameters are tuned, using a training set of 25 images, to optimise a decision tree based classification of the images from texture class proportions. We segment and classify the remaining test images using the decision tree. RESULTS:Our approach successfully detects a difference in the texture profiles of tendinopathic and healthy tendons, with 22/24 of the test images accurately classified based on a simple texture proportion cut-off threshold. Results for the tendinopathic images are also collated to gain insight into the topology of structural changes that occur with tendinopathy. It is evident that distinct textures, which are predominantly present in tendinopathic tendons, appear most commonly near the transverse boundary of the tendon, though there was a large variability among diseased tendons. CONCLUSION:The GLCM based segmentation of tendons under ultrasound resulted in distinct segmentations between healthy and tendinopathic tendons and provides a potential tool to objectively quantify damage in tendinopathy.
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Key words
Tendon,Co-occurrence matrix,Markov random field,Gaussian mixture model,Image segmentation,Expectation–maximisation algorithms
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要点:本研究旨在开发和实施一种基于纹理的算法,通过对肌腱超声图像进行分割,定量评估肌腱病变的结构变化。使用了混合高斯模型、马尔可夫随机场理论和灰度共生矩阵特征的模型分割方法。实验结果表明,该方法成功地区分了健康肌腱和病变肌腱的纹理特征,并提供了一种客观评估肌腱病变损伤的工具。

方法:采用基于模型的分割方法,结合了混合高斯模型、马尔可夫随机场理论和灰度共生矩阵特征。

实验:使用了49张跟腱纵向B模式超声图像进行训练和测试,其中24张为病变肌腱,25张为健康肌腱。通过优化决策树分类的纹理类比例,使用训练集中的25张图像来调整超参数。然后使用决策树对其余的测试图像进行分割和分类。实验结果表明,通过简单的纹理比例阈值,成功地对22张测试图像进行了准确分类。同时,对病变图像的分析结果显示,病变肌腱的结构变化主要出现在肌腱的横向边界附近,但不同病变肌腱之间存在较大的变异性。

结论:基于灰度共生矩阵的超声肌腱分割方法在健康肌腱和病变肌腱之间实现了明显的分割,并为客观评估肌腱病变损伤提供了潜在的工具。