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Computer-Aided Diagnosis Scheme for Classification of Lacunar Infarcts and Enlarged Virchow-Robin Spaces in Brain MR Images

机译:计算机辅助诊断方案,用于脑MR图像中血液梗塞分类和扩大Virchow-Robin空间

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The detection of asymptomatic lacunar infarcts on magnetic resonance (MR) images is important because their presence indicates an increased risk of severe cerebral infarction. However, accurate identification of lacunar infarcts on MR images is often hard for radiologists because of the difficulty in distinguishing lacunar infarcts and enlarged Virchow-Robin spaces. Therefore, we developed a computer-aided diagnosis (CAB) scheme for the classification of lacunar infarcts and enlarged Virchow-Robin spaces. Our database consisted of T1- and T2-weighted images obtained from 109 patients. The locations of lacunar infarcts and enlarged Virchow-Robin spaces were determined by an experienced neuroradiologist. It included 89 lacunar infarcts and 20 enlarged Virchow-Robin spaces. We first enhanced the lesions in T2-weighted image by using the white top-hat transformation. A gray-level thresholding was then applied to the enhanced image for the segmentation of lesions. From the segmented lesions, we determined image features, such as size, shape, location, and signal intensities in T1- and T2-weighted images. A neural network was then employed for distinguishing between lacunar infarcts and enlarged Virchow-Robin spaces. Our computerized method was evaluated by using a leave-one-out method. The result indicated that the area under the ROC curve was 0.945. Therefore, our CAD scheme would be useful in assisting radiologists for diagnosis of silent cerebral infarctions in MR images.
机译:在磁共振(MR)图像上的无症状凝集性梗死的检测很重要,因为它们的存在表明严重脑梗死的风险增加。然而,由于难以区分LELUAR梗塞和扩大的Virchow-Robin空间,准确地识别MR图像上的LEGUNAR梗死的识别往往很难。因此,我们开发了一种计算机辅助诊断(CAB)方案,用于分类LEGUNAR梗塞和扩大的VIRCHOW-ROBAIN空间。我们的数据库由109名患者获得的T1和T2加权图像组成。图格拉勒梗死和扩大的Virchow-Robin空间的位置由经验丰富的神经皮层确定。它包括89个Levunar梗塞和20个扩大的Virchow-Robin空间。我们首先通过使用白色顶帽改变来增强T2加权图像中的病变。然后将灰度阈值阈值平移到增强图像以进行病变的分割。从分段的病变,我们确定的图像特征,例如T1和T2加权图像中的尺寸,形状,位置和信号强度。然后采用神经网络来区分Levunar梗塞和扩大的Virchow-Robin空间。我们的计算机化方法是通过使用休假方法进行评估的。结果表明,ROC曲线下的区域为0.945。因此,我们的CAD方案可用于辅助放射科医师进行MR图像中静音脑梗塞的诊断。

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