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首页> 外文期刊>Journal of magnetic resonance imaging: JMRI >Variable angle gray level co‐occurrence matrix analysis of T 2 2 relaxation time maps reveals degenerative changes of cartilage in knee osteoarthritis: Oulu knee osteoarthritis study
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Variable angle gray level co‐occurrence matrix analysis of T 2 2 relaxation time maps reveals degenerative changes of cartilage in knee osteoarthritis: Oulu knee osteoarthritis study

机译:可变角度灰度级共发生矩阵T 2 2弛豫时间地图显示膝关节骨关节炎的软骨退行性变化:Oulu膝关节骨关节炎研究

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Background Texture analysis methods based on gray level co‐occurrence matrices (GLCM) can be optimized to probe the spatial correspondence information from knee MRI T 2 maps and the changes caused by osteoarthritis, and thus possibly leading to a more sensitive characterization of osteoarthritic cartilage. Curvature of the cartilage surfaces combined with the low image resolution in relation to cartilage thickness set special requirements for an effective texture analysis tool. Purpose/Hypothesis To introduce a novel implementation of GLCM algorithm optimized for cartilage texture analysis; to evaluate the performance of the designed algorithm against mean T 2 relaxation time analysis; and to identify the most suitable texture features for discerning osteoarthritic subjects and asymptomatic controls. Study Type Case control. Population/Subjects/Phantom/Specimen/animal Model Eighty symptomatic osteoarthritis patients and 64 asymptomatic controls. Field Strength/Sequence Multislice multiecho spin echo sequence on a 3T MRI system. Assessment The T 2 relaxation time maps were manually segmented by an operator trained for the task. Texture analysis was performed using an in‐house algorithm developed in MATLAB. Statistical Tests Symptomatic and asymptomatic subjects were compared using Mann–Whitney U ‐test. Repeatability of different features was addressed using the concordance correlation coefficient (CCC). Spearman's correlations between the features were determined. Results The algorithm displayed excellent performance in discerning symptomatic and asymptomatic subjects. Fifteen features provided a significant difference between the groups ( P ≤ 0.05) and 12 of those had P values smaller than the mean T 2 differences. Most of the studied texture features were highly repeatable with CCC over 90%. For the features with significant differences, correlation with mean T 2 was low or moderate (|r| ≤ 0.5). Data Conclusion With careful parameter and feature selection and algorithm optimization, texture analysis provides a powerful tool for assessing knee osteoarthritis with more sensitive detection of cartilage degeneration compared to the mean value of the T 2 relaxation times in an identical region of interest. Level of Evidence : 2 Technical Efficacy Stage 2 J. Magn. Reson. Imaging 2018;47:1316–1327.
机译:背景技术基于灰度共发生矩阵(GLCM)的纹理分析方法可以优化以探测来自膝关节MRI T 2地图的空间对应信息和由骨关节炎引起的变化,因此可能导致骨关节炎软骨的更敏感的表征。软骨表面的曲率与软骨厚度的低图像分辨率相结合,设定了有效纹理分析工具的特殊要求。目的/假设引进了对软骨纹理分析优化的GLCM算法进行了新颖的实施;为了评估设计算法对平均T 2松弛时间分析的性能;并鉴定辨别骨关节炎受试者和无症状对照的最合适的纹理特征。研究类型案例控制。人口/受试者/幻影/标本/动物模型八十症状骨关节炎患者和64例无症状对照。 3T MRI系统上的场强/序列MultiChice MultiCho旋转回波序列。评估T 2放松时间映射由用于任务培训的操作员手动分割。使用Matlab开发的内部算法进行纹理分析。使用Mann-Whitney U -Test比较统计测试症状和无症状受试者。使用一致性相关系数(CCC)解决了不同特征的可重复性。 Spearman确定了特征之间的相关性。结果算法在察觉症状和无症状受试者中表现出优异的性能。十五个特征在比平均t 2差异小的群体(p≤0.05)和12之间提供了显着差异。大多数研究的纹理特征高于CCC超过90%的高度可重复。对于具有显着差异的特征,与平均t 2的相关性低或中等(|≤0.5)。数据结论与仔细参数和特征选择和算法优化,纹理分析提供了一种强大的工具,用于评估膝关节骨关节炎,与在相同的感兴趣区域中T 2松弛时间的平均值相比,软骨变性更敏感。证据水平:2技术效果阶段2 J. MANG。恢复。 2018年成像; 47:1316-1327。

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