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Real-Time Detection of Glomeruli in Renal Pathology

机译:肾病中肾小球的实时检测

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The field of digital pathology emerged with the introduction of whole slide imaging scanners and lead to the development of new tools for analyzing histopathological slides. The availability of digital representation of the slides has motivated the development of artificial intelligence methods to automatically identify microscopic structures in order to support pathologists in their diagnosis. Unlike many existing approaches targeting the detection of microscopic structures on static images at a given and fixed magnification level, our work focuses on the real-time detection of the structures at different scales. Indeed, real-time detection at different scales brings additional challenges but also better mimics the way pathologists work as they continuously move the slides and change the magnification level during their analysis. In this paper, we focus on renal pathology and more specifically on the real-time detection of glomeruli at different scales. Our method is based on the deep learning object detection model YOLOv3 pre-trained on the COCO dataset and fine tuned to detect glomeruli. We investigate the benefits of using multi-scale images to improve the network ability to detect glomeruli at variable magnification levels in real time.
机译:随着整个玻片成像扫描仪的引入,数字病理学领域出现了,并导致了用于分析组织病理学玻片的新工具的发展。幻灯片的数字表示形式的出现已推动了人工智能方法的发展,该方法可以自动识别微观结构,以支持病理学家的诊断。与许多现有的针对在给定和固定的放大倍数下检测静态图像上的微观结构的方法不同,我们的工作重点是对不同比例的结构进行实时检测。确实,不同规模的实时检测带来了额外的挑战,同时也更好地模仿了病理学家在分析过程中不断移动载玻片并更改放大倍数时的工作方式。在本文中,我们专注于肾脏病理,更具体地说是实时检测不同规模的肾小球。我们的方法基于在COCO数据集上预先训练并经过微调以检测肾小球的深度学习对象检测模型YOLOv3。我们研究了使用多尺度图像来提高网络实时检测可变放大倍数肾小球的能力。

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