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使用人工神经网络准确识别隐孢子虫卵囊和贾第虫包囊图像。

Use of artificial neural networks to accurately identify Cryptosporidium oocyst and Giardia cyst images.

作者信息

Widmer Kenneth W, Srikumar Deepak, Pillai Suresh D

机构信息

Food Safety and Environmental Microbiology Program, Poultry Science Department, Institute of Food Science and Engineering, Texas A&M University, College Station, TX 77843, USA.

出版信息

Appl Environ Microbiol. 2005 Jan;71(1):80-4. doi: 10.1128/AEM.71.1.80-84.2005.

Abstract

Cryptosporidium parvum and Giardia lamblia are protozoa capable of causing gastrointestinal diseases. Currently, these organisms are identified using immunofluorescent antibody (IFA)-based microscopy, and identification requires trained individuals for final confirmation. Since artificial neural networks (ANN) can provide an automated means of identification, thereby reducing human errors related to misidentification, ANN were developed to identify Cryptosporidium oocyst and Giardia cyst images. Digitized images of C. parvum oocysts and G. lamblia cysts stained with various commercial IFA reagents were used as positive controls. The images were captured using a color digital camera at 400 x (total magnification), processed, and converted into a binary numerical array. A variety of "negative" images were also captured and processed. The ANN were developed using these images and a rigorous training and testing protocol. The Cryptosporidium oocyst ANN were trained with 1,586 images, while Giardia cyst ANN were trained with 2,431 images. After training, the best-performing ANN were selected based on an initial testing performance against 100 images (50 positive and 50 negative images). The networks were validated against previously "unseen" images of 500 Cryptosporidium oocysts (250 positive, 250 negative) and 282 Giardia cysts (232 positive, 50 negative). The selected ANNs correctly identified 91.8 and 99.6% of the Cryptosporidium oocyst and Giardia cyst images, respectively. These results indicate that ANN technology can be an alternate to having trained personnel for detecting these pathogens and can be a boon to underdeveloped regions of the world where there is a chronic shortage of adequately skilled individuals to detect these pathogens.

摘要

微小隐孢子虫和蓝氏贾第鞭毛虫是能够引起胃肠道疾病的原生动物。目前,这些生物体通过基于免疫荧光抗体(IFA)的显微镜检查来识别,并且识别需要训练有素的人员进行最终确认。由于人工神经网络(ANN)可以提供一种自动识别方法,从而减少与错误识别相关的人为误差,因此开发了人工神经网络来识别隐孢子虫卵囊和贾第虫囊肿图像。用各种商业IFA试剂染色的微小隐孢子虫卵囊和蓝氏贾第虫囊肿的数字化图像用作阳性对照。使用彩色数码相机在400倍(总放大倍数)下拍摄图像,进行处理,并转换为二进制数字阵列。还拍摄并处理了各种“阴性”图像。使用这些图像以及严格的训练和测试协议开发了人工神经网络。隐孢子虫卵囊人工神经网络用1586张图像进行训练,而贾第虫囊肿人工神经网络用2431张图像进行训练。训练后,根据对100张图像(50张阳性和50张阴性图像)的初始测试性能选择性能最佳的人工神经网络。这些网络针对之前“未见过”的500个隐孢子虫卵囊(250个阳性,250个阴性)和282个贾第虫囊肿(232个阳性,50个阴性)图像进行了验证。所选的人工神经网络分别正确识别了91.8%的隐孢子虫卵囊图像和99.6%的贾第虫囊肿图像。这些结果表明,人工神经网络技术可以替代训练有素的人员来检测这些病原体,对于世界上长期缺乏足够技术熟练人员来检测这些病原体的欠发达地区来说,这可能是一件幸事。

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