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3D Left Ventricular Segmentation from 2D Cardiac MR Images Using Spatial Context

机译:使用空间上下文从2D心脏MR图像进行3D左心室分割

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Accurate left ventricular (LV) segmentation in cardiac MRI facilitates quantification of clinical parameters such as LV volume and ejection fraction (EF). We present a CNN-based method to obtain a 3D representation of LV by integrating information from 2D short-axis and horizontal and vertical long-axis images. Our CNN is flexible to the number of input slices and uses an additional input of image coordinates as spatial context. This concept is validated on variations of two well-known CNN architectures for medical image segmentation: U-Net and DeepMedic. Five-fold cross validation on a dataset of 20 patients achieved a correlation of 95.0/93.1% for quantification of end-diastolic volume, 91.6/90.8% for end-systolic volume and 80.5/84.5% for EF for the two architectures respectively. We show that (1) incorporating long-axis data improves segmentation performance and (2) providing spatial context by adding image coordinates as input to the CNN yields similar performance with a smaller receptive field.
机译:心脏MRI中正确的左心室(LV)分割有助于量化临床参数,例如LV体积和射血分数(EF)。我们提出一种基于CNN的方法,通过整合来自2D短轴以及水平和垂直长轴图像的信息来获得LV的3D表示。我们的CNN可以灵活地处理输入切片的数量,并使用图像坐标的附加输入作为空间上下文。该概念已在两种用于医学图像分割的著名CNN架构的变体上得到验证:U-Net和DeepMedic。两种结构的20位患者的数据集上的五重交叉验证的舒张末期容积量化相关性分别为95.0 / 93.1%,收缩末期容积相关系数为91.6 / 90.8%和EF的相关系数分别为80.5 / 84.5%。我们显示(1)合并长轴数据可提高分割性能,(2)通过将图像坐标作为输入添加到CNN中来提供空间上下文,可产生相似的性能,但接收场较小。

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