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Deep Learning for Detecting Diseases in Gastrointestinal Biopsy Images

机译:深度学习检测胃肠道活检图像的疾病

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Machine learning and computer vision have found applications in medical science and, recently, pathology. In particular, deep learning methods for medical diagnostic imaging can reduce delays in diagnosis and give improved accuracy rates over other analysis techniques. This paper focuses on methods with applicability to automated diagnosis of images obtained from gastrointestinal biopsies. These deep learning techniques for biopsy images may help detect distinguishing features in tissues affected by enteropathies. Learning from different areas of an image, or looking for similar patterns in new images, allow for the development of potential classification or clustering models Techniques like these provide a cutting-edge solution to detecting anomalies. In this paper we explore state of the art deep learning architectures used for the visual recognition of natural images and assess their applicability in medical image analysis of digitized human gastrointestinal biopsy slides.
机译:机器学习和计算机视觉在医学科学中发现了应用,最近,病理学。特别地,医学诊断成像的深度学习方法可以减少诊断延迟,并在其他分析技术上提高精度率。本文重点介绍了适用于自动诊断从胃肠生物检查获得的图像的方法。这些用于活组织检查图像的深层学习技术可能有助于检测受肠病影响的组织中的区别特征。从图像的不同区域学习,或者寻找新图像中的类似模式,允许开发潜在的分类或群集模型技术,如这些产品提供了检测异常的尖端解决方案。在本文中,我们探讨了用于视觉识别自然图像的艺术深度学习架构的状态,并评估其在数字化人胃肠型活检载玻片的医学图像分析中的适用性。

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