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首页> 外文期刊>Magnetic resonance in medical sciences: MRMS : an official journal of Japan Society of Magnetic Resonance in Medicine >Combined image enhancement, feature extraction, and classification protocol to improve detection and diagnosis of rotator-cuff tears on MR imaging
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Combined image enhancement, feature extraction, and classification protocol to improve detection and diagnosis of rotator-cuff tears on MR imaging

机译:结合图像增强,特征提取和分类协议,以改善对MR成像中肩袖撕裂的检测和诊断

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摘要

Purpose: The diagnosis of most rotator cuff tears (RCTs) relies upon magnetic resonance (MR) imaging, but direct capture of MR images without enhanced image processing leads to poor image contrast and potential misdiagnosis. Therefore, we developed a 2-stage model for the detection and diagnosis of injury of the supraspinatus tendon.Methods: The first stage used coupled weighted histogram separation (WHS) to improve image enhancement, and the second stage extracted suspicious texture, features of both spatial and spectral domains, and sequential floating forward selection (SFFS) selected features conducive to classification of RCTs. We then tested injuries of the supraspinatus tendon using the classifier.Results: The extraction of features by SFFS can increase detection of supraspinatus injury by reducing the input vector by 57.78% from the enhanced input images. The receiver operating characteristic (ROC) curve indicated an azimuth (Az) value of 84.38% when SFFS selected 76 features to construct a support vector machine (SVM) classifier from the enhanced images, compared with 56.94% when all 180 features from the raw input images were used for the construction.Conclusions: The performance of the classifier constructed by SFFS-selected features is superior to that using all features. These findings can serve as references to improve diagnosis and treatment of supraspinatus injuries.
机译:目的:大多数肩袖撕裂(RCT)的诊断均依赖于磁共振(MR)成像,但是直接捕获MR图像而不增强图像处理会导致较差的图像对比度和潜在的误诊。因此,我们建立了一个用于诊断和诊断棘上肌腱损伤的2个阶段的模型。方法:第一个阶段使用耦合加权直方图分离(WHS)改善图像增强效果,第二个阶段提取可疑纹理,两者均具有特征空间和频谱域,以及顺序浮动前向选择(SFFS)选定的特征有利于RCT的分类。然后,我们使用分类器测试了棘上肌腱损伤。结果:通过SFFS提取特征可以通过将增强后的输入图像中的输入向量减少57.78%来增加对棘上肌损伤的检测。当SFFS从增强图像中选择76个特征以构建支持向量机(SVM)分类器时,接收器工作特性(ROC)曲线显示的方位角(Az)值为84.38%,而从原始输入中获​​得的全部180个特征则为56.94%结论:由SFFS选择的特征构造的分类器的性能优于使用所有特征的分类器。这些发现可以作为改善脊柱上肌损伤的诊断和治疗的参考。

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