首页> 外文会议>Conference on Medical Imaging: Physics of Medical Imaging >QUANTIFYING THE IMPORTANCE OF SPATIAL ANATOMICAL CONTEXT IN CADAVERIC, NON-CONTRAST ENHANCED ORGAN SEGMENTATION
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QUANTIFYING THE IMPORTANCE OF SPATIAL ANATOMICAL CONTEXT IN CADAVERIC, NON-CONTRAST ENHANCED ORGAN SEGMENTATION

机译:量化空间解剖背景在尸体,非对比度增强器官分割中的重要性

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Volumetric segmentation using deep learning is a computationally expensive task, but one with great utility for medical image analysis in radiology. Deep learning uses the process of convolution to calculate voxel level relationships and predict class membership of each voxel (e.g. segmentation). We hypothesize that (1) kidney segmentation in cadaveric, non-contrast enhanced CT images is possible; (2) a volumetric UNet (VNet) architecture will out-perform a 2D UNet architecture in kidney segmentation; and (3) as increasing anatomically relevant information present within the volumes will increase the ability of the system to understand the relationship of anatomical structures, thus enabling more accurate segmentation. In this project we utilized a difficult dataset (cadaveric, non-contrast enhanced CT data) to determine how much anatomical information is necessary to obtain a quantifiable segmentation with the lowest Hausdorff Distance and highest Dice Coefficient values between the output and the ground truth mesh. We used a 70/20/10% training testing and validation split with a total N of 30 specimens. In order to test the anatomical context required to properly segment structures we evaluated and compared the performance of four separate segmentation models: (1) a 2D UNet model that pulled random cross sections from the volumes for training; (2) a 2D UNet model that had the training samples augmented with 3D perturbations for more anatomical context; (3) a 3D VNet with volumetric patching and a padded border to protect against edge artifacts; and (4) a 3D VNet with volumetric patching and image compression by 1/2 the volume with the padded border. Our results show that as anatomical context in the image or volume increases, segmentation performance also improves.
机译:使用深度学习的体积分割是一种计算昂贵的任务,而是一种具有很大的效用,用于放射学中的医学图像分析。深度学习使用卷积过程来计算体素级关系并预测每个体素的类成员资格(例如分段)。我们假设(1)尸体中的肾脏分段,非对比度增强CT图像是可能的; (2)体积unet(VNet)架构将在肾细分中进行2D UNET架构; (3)随着增加卷内存在的解剖相关信息,将增加系统理解解剖结构关系的能力,从而实现更准确的分割。在该项目中,我们利用困难的数据集(Cadaveric,非对比度增强CT数据)来确定有必要的解剖信息来获得具有最低Hausdorff距离和输出和地面真实网格之间的最高骰子系数值的量化分割。我们使用了70 / 20/10%的训练测试和验证分裂,总共包括30个标本。为了测试所需的解剖背景,我们评估了我们评估的适当段结构,并比较了四个单独的分割模型的性能:(1)2D une une模型,从训练中拉动随机横截面; (2)一个2D UNET模型,培训样本与3D扰动增加了更多解剖背景; (3)具有体积修补的3D VNet和填充边框,以防止边缘伪影; (4)3D VNET,具有体积修补和图像压缩1/2带有填充边框的卷。我们的研究结果表明,作为图像或体积的解剖背景,分割性能也有所提高。

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