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Intracranial Aneurysm Detection from 3D Vascular Mesh Models with Ensemble Deep Learning

机译:颅内动脉瘤检测3D血管网模型与集合深度学习

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Intracranial aneurysm rupture can cause a serious stroke, which is related to the decline of daily life ability of the elderly. Although deep learning is now the most successful solution for organ detection, it requires myriads of training data, consistent of the image format, and a balanced sample distribution. This work presents an innovative representation of intracranial aneurysm detection as a shape analysis problem rather than a computer vision problem. We detected intracranial aneurysms in 3D cerebrovascular mesh models after segmentation of the brain vessels from the medical images, which can overcome the barriers of data format and data distribution, serving both clinical and screening purposes. Additionally, we propose a transferable multi-model ensemble (MMEN) architecture to detect intracranial aneurysms from cerebrovascular mesh models with limited data. To obtain a well-defined convolution operator, we use a global seamless parameterization converting a 3D cerebrovascular mesh model to a planar flat-torus. In the architecture, we transfer the planar flat-torus presentation abilities of three GoogleNet Inception V3 models, which were pre-trained on the ImageNet database, to characterize the intracranial aneurysms with local and global geometric features such as Gaussian curvature (GC), shape diameter function (SDF) and wave kernel signature (WKS), respectively. We jointly utilize all three models to detect aneurysms with adaptive weights learning based on back propagation. The experimental results on the 121 models show that our proposed method can achieve detection accuracy of 95.1% with 94.7% Fl-score and 94.8% sensitivity, which is as good as the state-of-art work but is applicable to inhomogeneous image modalities and smaller datasets.
机译:颅内动脉瘤破裂会引起严重的卒中,这与老年人日常生活能力的下降有关。虽然深度学习现在是器官检测的最成功的解决方案,但它需要多数训练数据,一致的图像格式,以及平衡的样本分布。这项工作提出了颅内动脉瘤检测的创新表示,作为形状分析问题而不是计算机视觉问题。在从医学图像分割脑血管分割后,我们检测到3D脑血管网模型中的颅内动脉瘤,这可以克服数据格式和数据分布的障碍,提供临床和筛选目的。此外,我们提出可转移的多模型集合(MMEN)架构,用于检测具有有限数据的脑血管网模型的颅内动脉瘤。为了获得明确定义的卷积运营商,我们使用全球无缝参数化将3D脑血管网模型转换为平面平坦的圆环。在架构中,我们转移了三个Googlenet Inception V3型号的平面扁平圆环呈现能力,这些型号在想象数据库上预先培训,以表征具有本地和全球几何特征的颅内动脉瘤,如高斯曲率(GC),形状分别直径函数(SDF)和波内核签名(WKS)。我们共同利用所有三种模型来检测基于反向传播的自适应权重学习动脉瘤。 121种模型的实验结果表明,我们所提出的方法可以获得95.1%的检测精度,94.7%的飞行比率和94.8%的灵敏度,这与最先进的工作一样好,但适用于不均匀的图像方式和较小的数据集。

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