首页> 外文会议>2011 8th IEEE International Symposium on Biomedical Imaging: From Nano to Macro >An automatic method for the identification and quantification of myocardial perfusion defects or infarction from cardiac CT images
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An automatic method for the identification and quantification of myocardial perfusion defects or infarction from cardiac CT images

机译:一种从心脏CT图像中识别和定量心肌灌注缺陷或梗死的自动方法

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The current study presents an automatic algorithm for detection of myocardial infarction and ischemia using cardiac CT image data. The classification is based on probabilistic tissue modeling, where a pixel is classified according to its maximum a-posteriori probability (MAP) as belonging to a normal or abnormal tissue segment. The pixels are represented in a two-dimensional space, where the first dimension is based on pixel intensity and the second relates to pixel position in the radial (transmural) direction. By means of this method, optimal thresholds for separating abnormal from normal pixels are calculated and clusters of abnormal pixels are identified. The method's performance was evaluated in comparison to an expert analysis of the cardiac CT images and showed good agreement.
机译:当前的研究提出了一种使用心脏CT图像数据检测心肌梗塞和局部缺血的自动算法。该分类基于概率组织建模,其中根据像素的最大后验概率(MAP)将像素分类为属于正常或异常组织段。像素以二维空间表示,其中第一维基于像素强度,第二维与径向(跨壁)方向上的像素位置有关。通过这种方法,计算出用于将异常像素与正常像素分离的最佳阈值,并识别异常像素的簇。与对心脏CT图像的专家分析相比,该方法的性能得到了评估,并显示出良好的一致性。

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