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Automatic Segmentation of the Cerebral Ventricle in Neonates Using Deep Learning with 3D Reconstructed Freehand Ultrasound Imaging

机译:使用深度学习和3D重构手绘超声成像技术对新生儿的脑室进行自动分割

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Preterm neonates can be subject to ventricu-lomegaly, which is an enlargement of the cerebral ventricle system (CVS) that can lead to brain damage. In clinical practice, 2D coronal hand-held ultrasonographic scans are performed to assess CVS dilation. Estimating CVS volumes from 2D images is, however, imprecise and time consuming since 3D information is lacking. To address this issue, we propose a 3D reconstruction method and an automatic deep learning segmentation algorithm. The accuracy of the 3D reconstruction was assessed by calculating Mean Absolute Distance (MAD) between manual segmentation of the corpus callosum (CC) on a ground reference and the 3D reconstructed volume, a mean value of 1.55 mm was obtained. The accuracy of the segmentation was evaluated using Dice, Hausdorff distance (dH) and MAD, respective average values of 0.816, 13.6 mm and 0.62 mm were obtained. The computation time of a segmentation for one 256 × 256 × 256 volume was 5 s.
机译:早产新生儿可以受到肺肺炎的约束,这是脑心室系统(CVS)的放大,这可能导致脑损伤。在临床实践中,进行2D冠状手持式超声扫描以评估CVS扩张。然而,估计来自2D图像的CVS卷是因为缺乏3D信息以来的不精确和耗时。为了解决这个问题,我们提出了一种3D重建方法和自动深度学习分割算法。通过计算地面参考和3D重建体积的手动分段(Cc)的手动分段之间的平均绝对距离(MAD)来评估3D重建的准确性,并且获得平均值为1.55mm。使用骰子,Hausdorff距离(DH)和MAD评估分割的准确性,得到0.816,13.6mm和0.62mm的相应平均值。分割的计算时间为一个256×256×256体积为5秒。

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