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Vessel lumen segmentation in internal carotid artery ultrasounds with deep convolutional neural networks

机译:深度卷积神经网络在颈内动脉超声中的血管腔分割

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Carotid ultrasound is a screening modality used by physicians to direct treatment in the prevention of ischemic stroke in high-risk patients. It is a time intensive process that requires highly trained technicians and physicians. Evaluation of a carotid ultrasound requires identification of the vessel wall, lumen, and plaque of the carotid artery. Automated machine learning methods for these tasks are highly limited. We propose and evaluate here single and multi-path convolutional U-neural network for lumen identification from ultrasound images. We obtained de-identified images under IRB approval from 98 patients. We isolated just the internal carotid artery ultrasound images for these patients giving us a total of 302 images. We manually segmented the vessel lumen, which we use as ground truth to develop and validate our model. With a basic simple convolutional U-Net we obtained a 10-fold cross-validation accuracy of 95%. We also evaluated a dual-path U-Net where we modified the original image and used it as a synthetic modality but we found no improvement in accuracy. We found that the sample size made a considerable difference and thus expect our accuracy to rise as we add more training samples to the model. Our work here represents a first successful step towards the automated identification of the vessel lumen in carotid artery ultrasound images and is an important first step in creating a system that can independently evaluate carotid ultrasounds.
机译:颈动脉超声检查是医师在高危患者中预防缺血性卒中的直接筛查手段。这是一个耗时的过程,需要训练有素的技术人员和医师。评估颈动脉超声需要识别颈动脉的血管壁,管腔和斑块。用于这些任务的自动机器学习方法受到极大限制。我们提出并在这里评估单路径和多路径卷积U神经网络,用于从超声图像识别管腔。在IRB的批准下,我们从98位患者中获得了去识别图像。我们仅分离了这些患者的颈内动脉超声图像,总共获得了302张图像。我们手动分割了血管腔,我们将其用作地面真相来开发和验证我们的模型。使用基本的简单卷积U-Net,我们获得了95%的10倍交叉验证准确性。我们还评估了双路径U-Net,在该网络中我们修改了原始图像并将其用作合成形式,但发现准确性没有提高。我们发现样本量产生了很大的差异,因此随着向模型中添加更多训练样本,我们的准确性将会提高。我们在这里的工作代表了自动识别颈动脉超声图像中血管腔的第一步,也是建立可独立评估颈动脉超声的系统的重要第一步。

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