Arimura Hidetaka, Katsuragawa Shigehiko, Suzuki Kenji, Li Feng, Shiraishi Junji, Sone Shusuke, Doi Kunio
Department of Radiology, The University of Chicago, 5841 S Maryland Ave, Chicago, IL 60637, USA.
Acad Radiol. 2004 Jun;11(6):617-29. doi: 10.1016/j.acra.2004.02.009.
A computerized scheme for automated detection of lung nodules in low-dose computed tomography images for lung cancer screening was developed.
Our scheme is based on a difference-image technique for enhancing the lung nodules and suppressing the majority of background normal structures. The difference image for each computed tomography image was obtained by subtracting the nodule-suppressed image processed with a ring average filter from the nodule-enhanced image with a matched filter. The initial nodule candidates were identified by applying a multiple-gray level thresholding technique to the difference image, where most nodules were well enhanced. A number of false-positives were removed first in entire lung regions and second in divided lung regions by use of the two rule-based schemes on the localized image features related to morphology and gray levels. Some of the remaining false-positives were eliminated by use of a multiple massive training artificial neural network trained for reduction of various types of false-positives. This computerized scheme was applied to a confirmed cancer database of 106 low-dose computed tomography scans with 109 cancer lesions for 73 patients obtained from a lung cancer screening program in Nagano, Japan.
This computed-aided diagnosis scheme provided a sensitivity of 83% (91/109) for all cancers with 5.8 false-positives per scan, which included 84% (32/38) for missed cancers with 5.9 false-positives per scan.
This computerized scheme may be useful for assisting radiologists in detecting lung cancers on low-dose computed tomography images for lung cancer screening.
开发了一种用于在低剂量计算机断层扫描图像中自动检测肺结节以进行肺癌筛查的计算机化方案。
我们的方案基于一种差异图像技术,用于增强肺结节并抑制大多数背景正常结构。通过从经匹配滤波器增强结节后的图像中减去经环形平均滤波器处理后的抑制结节图像,可获得每个计算机断层扫描图像的差异图像。通过对差异图像应用多灰度级阈值技术来识别初始结节候选者,其中大多数结节得到了很好的增强。首先在整个肺区域,然后在划分的肺区域,通过使用基于与形态和灰度级相关的局部图像特征的两种基于规则的方案,去除了许多假阳性。通过使用为减少各种类型假阳性而训练的多重大规模训练人工神经网络,消除了一些剩余的假阳性。该计算机化方案应用于来自日本长野肺癌筛查项目的106例低剂量计算机断层扫描的确诊癌症数据库,该数据库包含73例患者的109个癌症病灶。
这种计算机辅助诊断方案对所有癌症的敏感性为83%(91/109),每次扫描有5.8个假阳性,其中对漏诊癌症的敏感性为84%(32/38),每次扫描有5.9个假阳性。
这种计算机化方案可能有助于放射科医生在低剂量计算机断层扫描图像上检测肺癌以进行肺癌筛查。