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引用次数: 1

摘要

. 象皮病通常通过血液的显微镜检查来发现。到目前为止,这一直很困难,因为微丝虫病只在夜间出现在血液中几个小时(夜间周期性)。缺乏训练有素的显微镜技术人员是个严重的问题。由于诊断的重复性和繁琐性,以及在成千上万的人群中很少有阳性病例。这是导致检测错误增加的一个因素。遇到的主要问题是进行实验室检查的难度和精度高,时间长。图像分析方法可作为血液中淋巴丝虫病蠕虫的一种鉴别方法。根据上面的描述,可以说淋巴丝虫病蠕虫的检测可以通过数字图像分析来完成。本研究将利用特征提取方法和卷积神经网络,在三目数码显微镜相机记录的数字图像中识别引起象皮病(淋巴丝虫病)的蠕虫形式的物体特征。本研究旨在利用复合三眼显微镜记录的数字图像,确定用于淋巴丝虫病蠕虫鉴定过程中的图像分析方法的性能。
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Lymphatic Filariasis Detection Using Image Analysis
. Elephantiasis is generally detected through microscopic examination of blood. Until now, this has been difficult because microfilariae only appear in the blood at night for a few hours (nocturnal periodicity). The lack of trained microscopy technicians is a serious problem. Due to the repetitive and tedious nature of diagnosis and the fact that there are few positive cases in a population of thousands. This is a contributing factor to increased detection errors. The main problem encountered is the high degree of difficulty and precision and the long time it takes to perform laboratory examinations. Image analysis method can be used as a way to identify Lymphatic Filariasis worms in the blood. Based on the description above, it can be said that the detection of Lymphatic Filariasis worms can be done with digital image analysis. This research will use the feature extraction method and Convolutional Neural Network to identify object features in the form of worms that cause elephantiasis (Lymphatic Filariasis) in digital images recorded by Trinocular digital microscope cameras. This study aims to determine the performance of image analysis methods used in the identification process of Lymphatic Filariasis worms using digital images recorded by a Compound Trinocular microscope.
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