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Multi-Resolution CNN for Brain Vessel Segmentation from Cerebrovascular Images of lntracranial Aneurysm: A Comparison of U-Net and DeepMedic

机译:多分辨率CNN用于脑血管瘤脑血管图像的脑血管分割:U-Net和DeepMedic的比较

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Background: Vascular segmentation of cerebral vascular imaging is tedious and manual, hindering translation of image-based computational tools for neurovascular disease (such as intracranial aneurysm) management. Current cerebrovascular segmentation techniques use classic model-based algorithms, but such algorithms are incapable of distinguishing vasculature from artifacts. Deep Learning, specifically the widely accepted U-Net architecture, could be an effective alternative to conventional approaches for cerebrovascular segmentation, but has been shown to perform poorly in segmentation of smaller yet critical vessels. Methods: In this study, we present a methodology using a specialized convolutional neural network (CNN) architecture-DeepMedic-which uses multi-resolution inputs to enhance the field of view of the architecture, thereby enhancing the accuracy of segmentation of smaller vessels. To show the capability of this architecture, we collected and segmented a total of 100 digital subtraction angiography (DSA) images of cerebral vessels for training, internal validation, and testing (n=80, n=10, and n=10, respectively). Results: The DeepMedic architecture yielded high performance with a Connectivity-Area-Length (CAL) of 0.84±0.07 and a dice similarity coefficient (DSC) of 0.94±0.02 in the independent testing cohort. This was better than U-Net optimized for the patch-size and %-overlap in predictions, which performed with a CAL of 0.79±0.06 and a DSC of 0.92±0.02. Notably, our work demonstrated that DeepMedic (CAL: 0.45±0.12) outperformed U-Net (CAL: 0.59±0.11) for segmentation of smaller vessels. Conclusions: Our work showed DeepMedic performs better than the current state-of-the-art method for cerebrovascular segmentation. We hope this study begins to bring a high fidelity deep-learning based approach closer to clinical translation.
机译:背景:脑血管成像的血管分割是繁琐且手动的,阻碍了基于图像的计算工具对神经血管疾病(例如颅内动脉瘤)管理的翻译。当前的脑血管分割技术使用基于经典模型的算法,但是这种算法不能区分人工血管和脉管系统。深度学习,特别是广为接受的U-Net架构,可以替代传统的脑血管分割方法,但已证明在较小但关键的血管分割中表现不佳。方法:在这项研究中,我们提出了一种使用专用卷积神经网络(CNN)架构-DeepMedic的方法,该方法使用多分辨率输入来增强架构的视野,从而提高较小血管分割的准确性。为了展示这种架构的功能,我们收集并分割了总计100幅用于训练,内部验证和测试的脑血管数字减影血管造影(DSA)图像(分别为n = 80,n = 10和n = 10) 。结果:在独立测试队列中,DeepMedic架构产生了高性能,连接区域长度(CAL)为0.84±0.07,骰子相似系数(DSC)为0.94±0.02。这比针对预测的补丁大小和重叠百分比优化的U-Net更好,后者的CAL为0.79±0.06,DSC为0.92±0.02。值得注意的是,我们的研究表明,对于较小血管的分割,DeepMedic(CAL:0.45±0.12)优于U-Net(CAL:0.59±0.11)。结论:我们的工作表明,DeepMedic在脑血管分割方面的性能优于当前的最新方法。我们希望这项研究能使基于高保真深度学习的方法更接近于临床翻译。

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