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Adenoid segmentation in X-ray images using U-Net

机译:使用U-Net的X射线图像中的腺样分割

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Use of machine learning and specifically deep learning-based techniques for medical diagnosis has created a significant impact on early and easier diagnosis in the domain of radiology. Deep learning techniques have demonstrated unprecedented superiority in all facets of medical image analysis ranging from classification to identification to segmentation. The efficacy of deep learning algorithms to process X-ray data and extract meaningful information from it has helped diagnose and provide timely health care to patients. The focus of proposed work is to use DICOM x-ray images for detection and segmentation of adenoid gland using deep learning-based techniques. The distance between the Adenoid gland and soft palate may be used by doctors to identify the severity and type of diseases and hence an automated method for identification of adenoid gland will help in automatic diagnostics. The main challenge is that the size and shape of adenoid gland varies with age and disease and hence because of its deformative property it is difficult to segment it. In this work, we propose to use U-net based technique for segmentation of adenoid gland. To the best of our knowledge this is the first attempt to solve the problem of adenoid detection and segmentation using U-net based deep learning architecture.
机译:使用机器学习和专门的医学诊断技术对放射结构领域的早期和更容易诊断产生了重大影响。深度学习技术在医学图像分析的所有方面都展示了前所未有的优越性,范围从分类到识别到分割。深度学习算法处理X射线数据的功效和从其中提取有意义的信息,帮助诊断并为患者提供了及时的医疗保健。建议工作的焦点是使用DICOM X射线图像使用深基于学习的技术来使用DICOM X射线图像进行腺样腺体的检测和分割。医生可以使用腺样体和软腭之间的距离来鉴定疾病的严重程度和类型,因此可以有助于鉴定腺样体的自动化方法有助于自动诊断。主要挑战是,腺样腺体的大小和形状随着年龄和疾病而变化,因此由于其变形性质,因此难以将其分割。在这项工作中,我们建议使用基于U-Net的技术进行腺样腺体的分割。据我们所知,这是第一次尝试使用基于U-Net的深度学习架构来解决腺样检测和分割问题的尝试。

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