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A Computer-aided Differential Diagnosis between UIP and NSIPUsing Automated Assessment of the Extent and Distribution ofRegional Disease Patterns at HRCT: Comparison with theRadiologists' Decision

机译:UIP和NSIPUSING在HRCT疾病模式范围和分布自动评估的计算机辅助差异诊断:与其决定的比较

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To evaluate the accuracy of computer aided differential diagnosis (CADD) between usual interstitial pneumonia (UIP) and nonspecific interstitial pneumonia (NSIP) at HRCT in comparison with that of a radiologist's decision. A computerized classification for six local disease patterns (normal, NL; ground-glass opacity, GGO; reticular opacity, RO; honeycombing, HC; emphysema, EM; and consolidation, CON) using texture/shape analyses and a SVM classifier at HRCT was used for pixel-by-pixel labeling on the whole lung area. The mode filter was applied on the results to reduce noise. Area fraction (AF) of each pattern, directional probabilistic density function (pdf) (dPDF: mean, SD, skewness of pdf /3 directions: superior-inferior, anterior-posterior, central-peripheral), regional cluster distribution pattern (RCDP: number, mean, SD of clusters, mean, SD of centroid of clusters) were automatically evaluated. Spatially normalized left and right lungs were evaluated separately. Disease division index (DDI) on every combination of AFs and asymmetric index (AI) between left and right lung ((left-right)/left) were also evaluated. To assess the accuracy of the system, fifty-four HRCT data sets in patients with pathologically diagnosed UIP (n=26) and NSIP (n=28) were used. For a classification procedure, a CADD-SVM classifier with internal parameter optimization, and sequential forward floating feature selection (SFFS) were employed. The accuracy was assessed by a 5-folding cross validation with 20-times repetition. For comparison, two thoracic radiologists reviewed the whole HRCT images without clinical information and diagnose each case either as UIP or NSIP. The accuracies of radiologists' decision were 0.75 and 0.87, respectively. The accuracies of the CADD system using the features of AF, dPDF, AI of dPDF, RDP, AI of RDP, DDI were 0.70, 0.79, 0.77, 0.80, 0.78, 0.81, respectively. The accuracy of optimized CADD using all features after SFFS was 0.91. We developed the CADD system to differentiate between UIP and NSIP using automated assessment of the extent and distribution of regional disease patterns at HRCT.
机译:与放射科学决策相比,评价常春性肺炎(UIP)和非特异性间质肺炎(NSIP)与非特异性肺炎(UNIP)和非特异性间质肺炎(NSIP)之间的计算机辅助差异诊断(CADD)的准确性。用于六种局部疾病模式的计算机化分类(正常,NL;磨玻璃不透射率,GGO;网状透明度,RO;蜂窝状,HC;肺气肿,EM;使用纹理/形状分析和HRCT的SVM分类器和CON)是用于整个肺区上的逐个像素标记。模式滤波器应用于结果以降低噪声。每个图案的面积分数(AF),定向概率密度函数(PDF)(DPDF:平均,SD,PDF / 3方向的歪斜:优越的,前后,中央周边),区域集群分布模式(RCDP:自动评估簇的数量,平均值,SD,平均值,簇的质心的SD。分别评估空间归一化左右肺部。还评估了左右肺部和右肺((左右)/左)之间的每种AFS和非对称指数(AI)的疾病分裂指数(DDI)。为了评估系统的准确性,使用病于病理诊断的UIP(n = 26)和NSIP(n = 28)的患者中的五十四个HRCT数据集。对于分类程序,采用具有内部参数优化和顺序前进浮动特征选择(SFF)的CADD-SVM分类器。通过5倍交叉验证评估的准确性,重复20倍。为了比较,两个胸部放射科医生在没有临床信息的情况下审查了整个HRCT图像,并诊断了每种情况,也可以作为UIP或NSIP进行诊断。放射科学家决定的准确性分别为0.75和0.87。使用AF,DPDF,AI的特征,RDP,RDP,DDI的AI的特征的CADD系统的准确性分别为0.70,0.79,0.77,0.80,0.78,0.81。使用SFF后的所有功能优化CADD的准确性为0.91。我们开发了CADD系统,以利用HRCT在地区疾病模式的程度和分布的自动评估来区分UIP和NSIP。

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