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Automated method to compute Evans index for diagnosis of idiopathic normal pressure hydrocephalus on brain CT images

机译:计算evans指标的自动化方法,用于诊断脑CT图像上特发性正常压力脑积水

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The early diagnosis of idiopathic normal pressure hydrocephalus (iNPH) considered as a treatable dementia is important. The iNPH causes enlargement of lateral ventricles (LVs). The degree of the enlargement of the LVs on CT or MR images is evaluated by using a diagnostic imaging criterion, Evans index. Evans index is defined as the ratio of the maximal width of frontal horns (FH) of the LVs to the maximal width of the inner skull (IS). Evans index is the most commonly used parameter for the evaluation of ventricular enlargement. However, manual measurement of Evans index is a time-consuming process. In this study, we present an automated method to compute Evans index on brain CT images. The algorithm of the method consisted of five major steps: standardization of CT data to an atlas, extraction of FH and IS regions, the search for the outmost points of bilateral FH regions, determination of the maximal widths of both the FH and the IS, and calculation of Evans index. The standardization to the atlas was performed by using linear affine transformation and non-linear wrapping techniques. The FH regions were segmented by using a three dimensional region growing technique. This scheme was applied to CT scans from 44 subjects, including 13 iNPH patients. The average difference in Evans index between the proposed method and manual measurement was 0.01 (1.6%), and the correlation coefficient of these data for the Evans index was 0.98. Therefore, this computerized method may have the potential to accurately compute Evans index for the diagnosis of iNPH on CT images.
机译:认为是可治疗的特发性痴呆正常压力脑积水(INPH)的早期诊断是重要的。所述INPH导致侧脑室(LVS)的放大图。 CT或MR图像中的LV的放大程度是通过使用诊断成像标准,埃文斯指数评价。埃文斯指数被定义为的LV的正面角(FH)的最大宽度与所述内颅骨(IS)的最大宽度的比。埃文斯指数是心室扩大的评价最常用的参数。然而,埃文斯索引的手工测量是一个耗时的过程。在这项研究中,我们提出了一种自动方法来计算对脑CT图像埃文斯索引。该方法的算法由五个主要步骤:CT数据地图集,萃取FH的标准化和IS区域,寻找双边FH的区域的最外点,判定两者的FH和IS的最大宽度,和Evans指数的计算。通过使用线性仿射变换和非线性包装技术进行标准化,所述图谱。在FH区通过使用三维区域生长技术分割。这种方案应用到CT从44对,其中包括13名INPH患者扫描。在所提出的方法和手动测量之间埃文斯指数的平均差异为0.01(1.6%),并且将这些数据用于埃文斯指数的相关系数为0.98。因此,该计算机化方法可能需要准确地计算埃文斯指数为INPH的CT图像诊断的潜力。

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