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Automatic Detection and Characterization of Parasite Eggs using Deep Learning Methods

机译:使用深度学习方法自动检测和表征寄生虫卵

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Parasitic infection can be detected by analyzing the microscopic image of fecal slide. The number of parasite eggs found in the slide will be used to determine the degree of infection. Opisthorchis Vivertini (OV) and Minute Intestinal Flukes (MIF) are among the most common parasites found in southeast Asia. OV affects liver whereas MIF affect small intestine. The egg of both parasites have almost the same size and shape which make it difficult to discriminate between them, even for experts. The detection and classification of parasite eggs in the micro-scopic image of the fecal slides can be seen as object detection problem. This work investigates the application of state-of-the-art object detectors to this task. The experimental results show that these deep learning models are capable of correctly detecting and classifying the parasite eggs.
机译:寄生虫感染可以通过分析粪便载玻片的显微图像来检测。在载玻片中发现的寄生虫卵的数量将用于确定感染程度。 Viisthorchis Vivertini(OV)和Minutes Intestinal Fluke(MIF)是东南亚最常见的寄生虫。 OV影响肝脏,而MIF影响小肠。两种寄生虫的卵几乎都具有相同的大小和形状,因此即使是专家也很难区分它们。粪便载玻片的显微图像中寄生虫卵的检测和分类可以看作是对象检测问题。这项工作研究了最新的物体检测器在此任务中的应用。实验结果表明,这些深度学习模型能够正确地检测和分类寄生虫卵。

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