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Aortic Valve Segmentation using Deep Learning

机译:使用深度学习主动脉瓣分割

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Aortic stenosis is the most common type of valvular heart disease (VHD), requiring echocardiography examination for diagnosing and monitoring of the patient. Segmentation of the aortic valve is one of the crucial medical tasks as it helps in different cardiac treatments, e.g. in aortic valve replacement. Manual segmentation is tedious and depends upon the expertise of clinicians so automated segmentation of aortic valve is primarily significant. Deep learning is a viable solution for the automatic segmentation of the aortic valve. Unfortunately, there is lacking knowledge in the application of deep learning in echocardiography. This study proposes a deep learning technique to segment the aortic valve. Echocardiography data of 58 patients for training and neural networks evaluation were obtained from National Heart Institute (IJN). Bi-Directional ConvLSTM U-NET (BDCU-Net), and UNet were trained to segment planimetry aortic valve area. BDCU-Net had the F1-score 91.092%, followed by UNet90.618%. The results show that BDCU-Net performance is better than U-Net.
机译:主动脉狭窄是最常见的瓣膜心脏病(VHD),需要超声心动图检查,用于诊断和监测患者。主动脉瓣的分割是关键的医疗任务之一,因为它有助于不同的心脏处理,例如,它有助于不同的心脏处理。在主动脉瓣置换中。手动分割是繁琐的,取决于临床医生的专业知识,因此主动脉瓣的自动分割主要是显着的。深度学习是一个可行的主动脉瓣自动分割的可行解决方案。不幸的是,在超声心动图中,缺乏知识缺乏知识。本研究提出了一种深入的学习技术来分割主动脉瓣。从国家心脏研究所(IJN)获得了58例培训患者和神经网络评估的超声心动图数据。双向Convlstm U-Net(BDCU-Net)和UNET培训到分部Planimetry主动脉瓣面积。 BDCU-NET的F1分数91.092%,其次是UNET90.618%。结果表明,BDCU - 净性能优于U-Net。

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