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Exploit ~18F-FDG Enhanced Urinary Bladder in PET Data for Deep Learning Ground Truth Generation in CT Scans

机译:在PET数据中利用〜18F-FDG增强型膀胱膀胱在CT扫描中生成深度学习地面真相

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Accurate segmentation of medical images is a key step in medical image processing. As the amount of medical images obtained in diagnostics, clinical studies and treatment planning increases, automatic segmentation algorithms become increasingly more important. Therefore, we plan to develop an automatic segmentation approach for the urinary bladder in computed tomography (CT) images using deep learning. For training such a neural network, a large amount of labeled training data is needed. However, public data sets of medical images with segmented ground truth are scarce. We overcome this problem by generating binary masks of images of the ~18F-FDG enhanced urinary bladder obtained from a multi-modal scanner delivering registered CT and positron emission tomography (PET) image pairs. Since PET images offer good contrast, a simple thresholding algorithm suffices for segmentation. We apply data augmentation to these datasets to increase the amount of available training data. In this contribution, we present algorithms developed with the medical image processing and visualization platform MeVisLab to achieve our goals. With the proposed methods, accurate segmentation masks of the urinary bladder could be generated, and given datasets could be enlarged by a factor of up to 2500.
机译:医学图像的准确分割是医学图像处理中的关键步骤。随着在诊断,临床研究和治疗计划中获得的医学图像数量的增加,自动分割算法变得越来越重要。因此,我们计划使用深度学习为计算机断层扫描(CT)图像中的膀胱开发一种自动分割方法。为了训练这样的神经网络,需要大量的标记训练数据。然而,具有分割的地面真相的医学图像的公共数据集是稀缺的。我们通过生成多模态扫描仪获得的〜18F-FDG增强型膀胱图像的二值蒙版来克服此问题,该多模态扫描仪提供了已注册的CT和正电子发射断层扫描(PET)图像对。由于PET图像具有良好的对比度,因此简单的阈值算法就足以进行分割。我们将数据扩充应用于这些数据集以增加可用训练数据的数量。在此贡献中,我们提出了使用医学图像处理和可视化平台MeVisLab开发的算法,以实现我们的目标。使用所提出的方法,可以生成膀胱的精确分割蒙版,并且可以将给定的数据集扩大多达2500倍。

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