Recognition of parasite eggs in microscopic medical images based on YOLOv5

Yibo Huo, Jing Zhang, Xiaohui Du, Xiangzhou Wang, Juanxiu Liu, Lin Liu
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引用次数: 4

Abstract

Parasitosis is a disease caused by parasites invading the human body. Because of the different species and parasitic sites, it causes different pathological changes and clinical manifestations, and also causes other complications, which is harmful to human health. In clinical medicine, the diagnosis of parasitic diseases is mostly through etiological diagnosis, that is, through the detection of whether there are parasitic eggs in human feces. The diagnosis and treatment of parasitic diseases is a very important part of clinical medicine. At present, the recognition and classification of parasite eggs in human fecal microscopic images are mainly based on manual processing and machine learning, which are inefficient and easily affected by subjective factors, while machine learning can not deal with complex and changeable fecal environment. Here, an automatic recognition algorithm based on YOLOv5 for parasite eggs in fecal microscopic medical images is proposed. Experimental results show that the average accuracy of the model is 0.994 in our test set. In addition, the calculation time of each human fecal microscopic image under GPU is less than 25 ms, and the algorithm has higher accuracy and faster speed than the traditional machine learning algorithm. As such, it will help advance the etiological diagnosis of parasitic diseases and the development of therapeutic drugs.
基于YOLOv5的显微医学图像中寄生虫卵的识别
寄生虫病是由寄生虫侵入人体而引起的疾病。由于种类和寄生部位不同,引起不同的病理变化和临床表现,还会引起其他并发症,对人体健康有害。在临床医学中,寄生虫病的诊断多是通过病原学诊断,即通过检测人的粪便中是否存在寄生虫卵。寄生虫病的诊断和治疗是临床医学的重要组成部分。目前,人类粪便显微图像中寄生虫卵的识别和分类主要基于人工处理和机器学习,效率低下且容易受到主观因素的影响,而机器学习无法处理复杂多变的粪便环境。本文提出了一种基于YOLOv5的粪便显微医学图像中寄生虫卵的自动识别算法。实验结果表明,该模型的平均准确率为0.994。此外,在GPU下,每张人体粪便显微图像的计算时间小于25 ms,该算法比传统的机器学习算法具有更高的精度和更快的速度。因此,它将有助于促进寄生虫病的病原学诊断和治疗药物的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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