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Automatic Cerebrospinal Fluid Segmentation in Non-Contrast CT Images Using a 3D Convolutional Network

机译:使用3D卷积网络的非对比度CT图像中的自动脑脊髓液分割

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Segmentation of anatomical structures is fundamental in the development of computer aided diagnosis systems for cerebral pathologies. Manual annotations are laborious, time consuming and subject to human error and observer variability. Accurate quantification of cerebrospinal fluid (CSF) can be employed as a morphometric measure for diagnosis and patient outcome prediction. However, segmenting CSF in non-contrast CT images is complicated by low soft tissue contrast and image noise. In this paper we propose a state-of-the-art method using a multi-scale three-dimensional (3D) fully convolutional neural network (CNN) to automatically segment all CSF within the cranial cavity. The method is trained on a small dataset comprised of four manually annotated cerebral CT images. Quantitative evaluation of a separate test dataset of four images shows a mean Dice similarity coefficient of 0.87 ± 0.01 and mean absolute volume difference of 4.77 ± 2.70 %. The average prediction time was 68 seconds. Our method allows for fast and fully automated 3D segmentation of cerebral CSF in non-contrast CT, and shows promising results despite a limited amount of training data.
机译:解剖结构的分割是计算机辅助诊断系统的发展基础,用于脑病变。手动注释是费力的,耗时的耗时,受到人为错误和观察者的变化。精确定量脑脊髓液(CSF)可用作诊断和患者结果预测的形态测量措施。然而,在非对比度CT图像中的分段CSF通过低软组织对比度和图像噪声复杂。在本文中,我们提出了一种使用多尺度三维(3D)完全卷积神经网络(CNN)的最先进的方法,以自动将所有CSF分段为颅腔内。该方法在由四个手动注释的大脑CT图像组成的小型数据集上培训。四个图像的单独测试数据集的定量评估显示了0.87±0.01的平均骰子相似系数,并且平均体积差为4.77±2.70%。平均预测时间为68秒。我们的方法允许在非对比度CT中快速且全自动地进行脑CSF的三维分割,并且仍显示有希望的训练数据。

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