利用计算机视觉进行疟疾寄生虫的无监督识别

N. A. Khan, Hassan Pervaz, A. Latif, Ayesha Musharraf, Sāniyā
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引用次数: 44

摘要

人类疟疾是一种严重而致命的热带疾病。这种疾病是由被疟原虫感染的按蚊引起的。基于病史、症状和临床表现的疟疾临床诊断必须始终得到实验室诊断的证实。疟疾的实验室诊断包括鉴定患者血液中的疟疾寄生虫或其抗原/产物。由病理学家手工诊断疟疾寄生虫已被证明是很麻烦的。因此,需要对疟原虫进行自动、高效、准确的鉴定。在本文中,我们提出了一种基于计算机视觉的方法来从光学显微镜图像中识别疟疾寄生虫。本研究涉及疟疾寄生虫组织自动检测所面临的挑战。我们提出的方法是基于基于像素的方法。我们使用K-means聚类(无监督方法)进行分割,以识别疟疾寄生虫组织。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised identification of malaria parasites using computer vision
Malaria in human is a serious and fatal tropical disease. This disease results from Anopheles mosquitoes that are infected by Plasmodium species. The clinical diagnosis of malaria based on the history, symptoms and clinical findings must always be confirmed by laboratory diagnosis. Laboratory diagnosis of malaria involves identification of malaria parasite or its antigen/products in the blood of the patient. Manual diagnosis of malaria parasite by the pathologists has proven to become cumbersome. Therefore, there is a need of automatic, efficient and accurate identification of malaria parasite. In this paper, we proposed a computer vision based approach to identify the malaria parasite from light microscopy images. This research deals with the challenges involved in the automatic detection of malaria parasite tissues. Our proposed method is based on the pixel based approach. We used K-means clustering (unsupervised approach) for the segmentation to identify malaria parasite tissues.
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