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Radiologist-Level Stroke Classification on Non-contrast CT Scans with Deep U-Net

机译:带有深U-Net的非对比CT扫描的放射线水平卒中分类

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Segmentation of ischemic stroke and intracranial hemorrhage on computed tomography is essential for investigation and treatment of stroke. In this paper, we modified the U-Net CNN architecture for the stroke identification problem using non-contrast CT. We applied the proposed DL model to historical patient data and also conducted clinical experiments involving ten experienced radiologists. Our model achieved strong results on historical data, and significantly outperformed seven radiologist out of ten, while being on par with the remaining three.
机译:在计算机断层扫描上对缺血性中风和颅内出血进行分割对于中风的研究和治疗至关重要。在本文中,我们使用非对比CT修改了用于笔画识别问题的U-Net CNN体系结构。我们将提出的DL模型应用于历史患者数据,还进行了涉及十名经验丰富的放射科医生的临床实验。我们的模型在历史数据上取得了很好的结果,并且在十个中的七名放射科医生的表现明显优于其他三名。

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