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Phase congruency parameter estimation and discrimination ability in detecting lung disease chest radiograph

机译:肺部胸部X线片检查中相合参数估计和判别能力

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The conventional chest radiograph remains a widely tool in the diagnosis of lung diseases even to the present day. Current methods or algorithms for disease detection focus on the discrimination between normal images and images with signs of disease involving chest radiograph. This paper proposed a novel algorithm to solve the difficult problem of discriminating two similar diseases, pulmonary tuberculosis (PTB) and lobar pneumonia (PNEU) using phase congruency. The phase congruency PC(x) parameter estimation was studied to obtain the best PC(x)-values that has the ability to differentiate between normals, PTB and PNEU. Eight texture measures of PC(x) values were then investigated as global measures for differentiation of diseases. All eight of these texture measures were found to have univariate normal distributions which allowed the statistical discriminant function, D(x), to select the best texture measures. The homogeneity texture measure gave the best discrimination for PTB and PNEU with Type 1 Error of 0.1 while the Type II Error of 0.15.
机译:迄今为止,常规的胸部X光片仍然是诊断肺部疾病的广泛工具。当前用于疾病检测的方法或算法集中在正常图像和具有涉及胸部X线照片的疾病迹象的图像之间的区分。本文提出了一种新的算法,通过相位一致性来解决区分两种相似疾病肺结核(PTB)和大叶性肺炎(PNEU)的难题。研究了相位一致性PC(x)参数估计,以获得能够区分法线,PTB和PNEU的最佳PC(x)值。然后研究了PC(x)值的八种纹理量度,作为区分疾病的整体量度。发现所有这八个纹理量度均具有单变量正态分布,这使统计判别函数D(x)可以选择最佳纹理量度。均匀性纹理测量对PTB和PNEU的判别是最好的,类型1的误差为0.1,而类型II的误差为0.15。

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