首页> 美国卫生研究院文献>Journal of Digital Imaging >Development of a Computer-Aided Differential Diagnosis System to Distinguish Between Usual Interstitial Pneumonia and Non-specific Interstitial Pneumonia Using Texture- and Shape-Based Hierarchical Classifiers on HRCT Images
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Development of a Computer-Aided Differential Diagnosis System to Distinguish Between Usual Interstitial Pneumonia and Non-specific Interstitial Pneumonia Using Texture- and Shape-Based Hierarchical Classifiers on HRCT Images

机译:使用基于纹理和形状的分层分类器对HRCT图像进行计算机辅助鉴别诊断系统的开发以区分通常的间质性肺炎和非特异性间质性肺炎

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摘要

A computer-aided differential diagnosis (CADD) system that distinguishes between usual interstitial pneumonia (UIP) and non-specific interstitial pneumonia (NSIP) using high-resolution computed tomography (HRCT) images was developed, and its results compared against the decision of a radiologist. Six local interstitial lung disease patterns in the images were determined, and 900 typical regions of interest were marked by an experienced radiologist. A support vector machine classifier was used to train and label the regions of interest of the lung parenchyma based on the texture and shape characteristics. Based on the regional classifications of the entire lung using HRCT, the distributions and extents of the six regional patterns were characterized through their CADD features. The disease division index of every area fraction combination and the asymmetric index between the left and right lungs were also evaluated. A second SVM classifier was employed to classify the UIP and NSIP, and features were selected through sequential-forward floating feature selection. For the evaluation, 54 HRCT images of UIP (n = 26) and NSIP (n = 28) patients clinically diagnosed by a pulmonologist were included and evaluated. The classification accuracy was measured based on a fivefold cross-validation with 20 repetitions using random shuffling. For comparison, thoracic radiologists assessed each case using HRCT images without clinical information or diagnosis. The accuracies of the radiologists’ decisions were 75 and 87%. The accuracies of the CADD system using different features ranged from 70 to 81%. Finally, the accuracy of the proposed CADD system after sequential-forward feature selection was 91%.
机译:开发了一种计算机辅助鉴别诊断(CADD)系统,该系统使用高分辨率计算机断层扫描(HRCT)图像区分普通间质性肺炎(UIP)和非特异性间质性肺炎(NSIP),并将结果与​​诊断放射科医生。确定了图像中的六个局部间质性肺疾病模式,并且由经验丰富的放射科医生对900个典型的感兴趣区域进行了标记。支持向量机分类器用于基于纹理和形状特征来训练和标记肺实质的目标区域。根据使用HRCT对整个肺部进行的区域分类,通过其CADD特征来表征六个区域模式的分布和范围。还评估了每个区域分数组合的疾病划分指数以及左右肺之间的不对称指数。使用第二个SVM分类器对UIP和NSIP进行分类,并通过顺序向前浮动特征选择来选择特征。为了进行评估,纳入并评估了由肺科医生临床诊断的54例UIP(n = 26)和NSIP(n = 28)患者的HRCT图像。基于使用随机混洗进行20次重复的五重交叉验证,对分类准确性进行了测量。为了进行比较,胸部放射科医生使用HRCT图像评估了每个病例,而没有临床信息或诊断。放射科医生的决定准确率分别为75%和87%。使用不同功能的CADD系统的准确性范围为70%至81%。最终,提出的CADD系统在进行顺序前向特征选择后的准确性为91%。

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