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Deep learning and handcrafted feature based approaches for automatic detection of angiectasia

机译:基于深度学习和手工特征的血管分离性自动检测方法

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Angiectasia, formerly called angiodysplasia, is one of the most frequent vascular lesions and often the cause of gastrointestinal bleedings. Medical specialists assessing videos or images of examinations reach a detection performance of 16% for the detection of bleeding to 69% for the detection of angiectasia [1]. This shows that automatic detection to support medical experts can be useful. In this paper, we present several machine learning-based approaches for angiectasia detection in wireless video capsule endoscopy frames. In summary, the most promising results for pixel-wise localization and frame-wise detection are obtained by the proposed deep learning method using generative adversarial networks (GANs). Using this approach, we achieve a sensitivity of 88% and specificity of 99.9% for pixel-wise localization, and a sensitivity of 98% and a specificity of 100% for frame-wise detection. Thus, the results demonstrate the capability of using deep learning for automatic angiectasia detection in real clinical settings.
机译:以前称为血管性血管病变是最常见的血管病变和胃肠出血的原因之一。医学专家评估视频或考试的图像或图像的检测性能为6 %的检测,检测到血管分辨率的检测到69 %[1]。这表明支持医学专家的自动检测可能是有用的。在本文中,我们在无线视频胶囊内窥镜检查框架中提出了几种基于机器学习的血管分离性检测方法。总之,通过使用生成的对抗网络(GANS)的建议的深度学习方法获得最有希望的像素明智的定位和帧展检测的结果。使用这种方法,我们实现了88 %的灵敏度和99.9%的特异性,以获得像素 - 明智的本地化,并且帧展检测的98 %的感觉率和100 %的特异性。因此,结果证明了在真实临床环境中使用深度学习进行自动血管表征检测的能力。

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