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A computerized scheme for lung nodule detection in multiprojection chest radiography

机译:多投影胸部X线摄影中肺结节检测的计算机化方案

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摘要

>Purpose: Our previous study indicated that multiprojection chest radiography could significantly improve radiologists’ performance for lung nodule detection in clinical practice. In this study, the authors further verify that multiprojection chest radiography can greatly improve the performance of a computer-aided diagnostic (CAD) scheme.>Methods: Our database consisted of 59 subjects, including 43 subjects with 45 nodules and 16 subjects without nodules. The 45 nodules included 7 real and 38 simulated ones. The authors developed a conventional CAD scheme and a new fusion CAD scheme to detect lung nodules. The conventional CAD scheme consisted of four steps for (1) identification of initial nodule candidates inside lungs, (2) nodule candidate segmentation based on dynamic programming, (3) extraction of 33 features from nodule candidates, and (4) false positive reduction using a piecewise linear classifier. The conventional CAD scheme processed each of the three projection images of a subject independently and discarded the correlation information between the three images. The fusion CAD scheme included the four steps in the conventional CAD scheme and two additional steps for (5) registration of all candidates in the three images of a subject, and (6) integration of correlation information between the registered candidates in the three images. The integration step retained all candidates detected at least twice in the three images of a subject and removed those detected only once in the three images as false positives. A leave-one-subject-out testing method was used for evaluation of the performance levels of the two CAD schemes.>Results: At the sensitivities of 70%, 65%, and 60%, our conventional CAD scheme reported 14.7, 11.3, and 8.6 false positives per image, respectively, whereas our fusion CAD scheme reported 3.9, 1.9, and 1.2 false positives per image, and 5.5, 2.8, and 1.7 false positives per patient, respectively. The low performance of the conventional CAD scheme may be attributed to the high noise level in chest radiography, and the small size and low contrast of most nodules.>Conclusions: This study indicated that the fusion of correlation information in multiprojection chest radiography can markedly improve the performance of CAD scheme for lung nodule detection.
机译:>目的:我们先前的研究表明,多投影胸部X线照相可以在临床实践中显着提高放射科医生在检测肺结节方面的表现。在这项研究中,作者进一步验证了多投影胸部X线照相可以极大地改善计算机辅助诊断(CAD)方案的性能。>方法:我们的数据库由59位受试者组成,其中43位受试者有45个结节和16个无结节的受试者。 45个结节包括7个真实结节和38个模拟结节。作者开发了常规的CAD方案和新的融合CAD方案来检测肺结节。传统的CAD方案包括四个步骤:(1)识别肺内部的初始结节候选者;(2)基于动态编程的结节候选者分割;(3)从结节候选者中提取33个特征;(4)使用分段线性分类器。常规的CAD方案独立地处理对象的三个投影图像中的每个,并且丢弃三个图像之间的相关性信息。融合CAD方案包括常规CAD方案中的四个步骤和两个附加步骤,其用于(5)在对象的三个图像中注册所有候选者,以及(6)在三个图像中的注册候选者之间的相关性信息的整合。积分步骤保留在对象的三个图像中至少检测到两次的所有候选,并移除在三个图像中仅检测到一次的那些作为假阳性。使用留一法测试方法来评估两种CAD方案的性能水平。>结果:在常规灵敏度为70%,65%和60%的情况下,我们的常规CAD方案每张图像分别报告14.7、11.3和8.6误报,而我们的融合CAD方案每张图像报告3.9、1.9和1.2误报,每位患者分别为5.5、2.8和1.7。传统CAD方案的低性能可能归因于胸部X线摄影的高噪声水平,以及大多数结节的小尺寸和低对比度。>结论:这项研究表明,相关信息的融合多投影胸部放射照相可以显着提高CAD方案在肺结节检测中的性能。

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