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胸部X光片中间质性浸润的计算机辅助诊断:纹理测量的光密度依赖性

Computer-aided diagnosis for interstitial infiltrates in chest radiographs: optical-density dependence of texture measures.

作者信息

Morishita J, Doi K, Katsuragawa S, Monnier-Cholley L, MacMahon H

机构信息

Kurt Rossman Laboratories for Radiologic Image Research, Department of Radiology, University of Chicago, Illinois 60637, USA.

出版信息

Med Phys. 1995 Sep;22(9):1515-22. doi: 10.1118/1.597419.

DOI:10.1118/1.597419
PMID:8531883
Abstract

We have been developing a computerized scheme for automated detection and characterization of interstitial infiltrates based on the Fourier transform of lung texture. To improve the performance of the scheme, which was developed using digitized screen-film radiographs, optical-density dependence of both the gradient of the film used and the system noise associated with the laser scanner were investigated. Two hundred chest radiographs, including 100 abnormal cases with interstitial infiltrates, were digitized using a laser scanner. The root-mean-square (RMS) variations and the first moments of the power spectra, which correspond to the magnitude and coarseness of lung texture, were determined by Fourier transform of lung textures in numerous regions of interest (ROIs). The RMS variation was dependent upon the average optical density in the ROI, though no obvious trend existed for the first moment of the power spectrum. Dependence of the RMS variations on optical density was corrected for using the gradient curve of the film. Also, system noise associated with the laser scanner was corrected. Results indicated that the specificity was improved from 81% (without correction) to 89% (with corrections), without any loss of sensitivity (90%). Thus, the correspondence between the computer output and consensus interpretation of radiologists was improved with the new scheme compared to the previous one. This improved computerized scheme may be useful to radiologists in detecting interstitial infiltrates in chest radiographs.

摘要

我们一直在研发一种基于肺纹理傅里叶变换的计算机化方案,用于自动检测和表征间质性浸润。为了提高该方案的性能(该方案是使用数字化屏-片X线照片开发的),我们研究了所用胶片的梯度以及与激光扫描仪相关的系统噪声的光密度依赖性。使用激光扫描仪对200张胸部X线照片进行数字化处理,其中包括100例伴有间质性浸润的异常病例。通过对多个感兴趣区域(ROI)的肺纹理进行傅里叶变换,确定了均方根(RMS)变化和功率谱的一阶矩,它们分别对应于肺纹理的大小和粗糙度。RMS变化取决于ROI中的平均光密度,而功率谱的一阶矩没有明显趋势。使用胶片的梯度曲线对RMS变化对光密度的依赖性进行了校正。此外,还对与激光扫描仪相关的系统噪声进行了校正。结果表明,特异性从81%(未校正)提高到了89%(校正后),而敏感性没有任何损失(90%)。因此,与之前的方案相比,新方案提高了计算机输出与放射科医生的一致性解读之间的对应性。这种改进的计算机化方案可能对放射科医生检测胸部X线照片中的间质性浸润有用。

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