Arimura Hidetaka, Li Qiang, Korogi Yukunori, Hirai Toshinori, Abe Hiroyuki, Yamashita Yasuyuki, Katsuragawa Shigehiko, Ikeda Ryuji, Doi Kunio
Department of Radiology, The University of Chicago, 5841 S Maryland Ave, Chicago, IL 60637, USA.
Acad Radiol. 2004 Oct;11(10):1093-104. doi: 10.1016/j.acra.2004.07.011.
A computerized scheme for automated detection of unruptured intracranial aneurysms in magnetic resonance angiography was developed based on the use of a three-dimensional selective enhancement filter for dots (aneurysms).
Twenty-nine cases with 36 unruptured aneurysms (diameter, 3 to 26 mm; mean, 6.6 mm) and 31 non-aneurysm cases were used in this study. The isotropic 3-dimensional magnetic resonance angiography images with 400 x 400 x 128 voxels (voxel size, 0.5 mm) were processed by use of the selective enhancement filter. The initial candidates were identified by use of a multiple gray-level thresholding technique on the dot-enhanced images and a region-growing technique with monitoring some image features. All candidates were classified into four types of candidates according to the size and local structures based on the effective diameter and skeleton image of each candidate (ie, large candidates and three types of small candidates including short-branch type, single-vessel type, and bifurcation type). In each group, a number of false-positives were removed by use of different rules on localized image features related to gray levels and morphology. Linear discriminant analysis was used for further removal of false-positives.
With this computer-aided diagnostic scheme, all of 36 aneurysms were correctly detected with 2.4 false-positives per patient based on a leave-one-out-by-patient test method.
This computer-aided diagnostic system would be useful in assisting radiologists for the detection of intracranial aneurysms in magnetic resonance angiography.
基于使用针对点状物体(动脉瘤)的三维选择性增强滤波器,开发了一种用于在磁共振血管造影中自动检测未破裂颅内动脉瘤的计算机化方案。
本研究使用了29例包含36个未破裂动脉瘤(直径3至26毫米,平均6.6毫米)的病例以及31例非动脉瘤病例。对具有400×400×128体素(体素大小为0.5毫米)的各向同性三维磁共振血管造影图像使用选择性增强滤波器进行处理。通过在点状增强图像上使用多灰度阈值技术以及结合监测一些图像特征的区域生长技术来识别初始候选对象。根据每个候选对象的有效直径和骨架图像,基于大小和局部结构将所有候选对象分为四类候选对象(即大型候选对象和包括短分支型、单血管型和分叉型在内的三种小型候选对象)。在每组中,通过对与灰度和形态相关的局部图像特征使用不同规则来去除大量假阳性。使用线性判别分析进一步去除假阳性。
采用这种计算机辅助诊断方案,基于逐患者留一法检验方法,36个动脉瘤全部被正确检测出,每位患者的假阳性为2.4个。
这种计算机辅助诊断系统在协助放射科医生在磁共振血管造影中检测颅内动脉瘤方面将是有用的。