Linder Ewert, Grote Anne, Varjo Sami, Linder Nina, Lebbad Marianne, Lundin Mikael, Diwan Vinod, Hannuksela Jari, Lundin Johan
Department of Microbiology, Tumor and Cell Biology (MTC), Karolinska Institutet, Stockholm, Sweden.
PLoS Negl Trop Dis. 2013 Dec 5;7(12):e2547. doi: 10.1371/journal.pntd.0002547. eCollection 2013.
Microscopy, being relatively easy to perform at low cost, is the universal diagnostic method for detection of most globally important parasitic infections. As quality control is hard to maintain, misdiagnosis is common, which affects both estimates of parasite burdens and patient care. Novel techniques for high-resolution imaging and image transfer over data networks may offer solutions to these problems through provision of education, quality assurance and diagnostics. Imaging can be done directly on image sensor chips, a technique possible to exploit commercially for the development of inexpensive "mini-microscopes". Images can be transferred for analysis both visually and by computer vision both at point-of-care and at remote locations.
METHODS/PRINCIPAL FINDINGS: Here we describe imaging of helminth eggs using mini-microscopes constructed from webcams and mobile phone cameras. The results show that an inexpensive webcam, stripped off its optics to allow direct application of the test sample on the exposed surface of the sensor, yields images of Schistosoma haematobium eggs, which can be identified visually. Using a highly specific image pattern recognition algorithm, 4 out of 5 eggs observed visually could be identified.
CONCLUSIONS/SIGNIFICANCE: As proof of concept we show that an inexpensive imaging device, such as a webcam, may be easily modified into a microscope, for the detection of helminth eggs based on on-chip imaging. Furthermore, algorithms for helminth egg detection by machine vision can be generated for automated diagnostics. The results can be exploited for constructing simple imaging devices for low-cost diagnostics of urogenital schistosomiasis and other neglected tropical infectious diseases.
显微镜检查操作相对简便且成本较低,是检测全球大多数重要寄生虫感染的通用诊断方法。由于难以维持质量控制,误诊很常见,这既影响寄生虫负荷的估计,也影响患者护理。通过提供教育、质量保证和诊断,用于高分辨率成像和通过数据网络进行图像传输的新技术可能为这些问题提供解决方案。成像可以直接在图像传感器芯片上进行,这是一种有可能用于商业开发廉价“微型显微镜”的技术。图像可以在护理点和远程位置通过视觉和计算机视觉进行传输以供分析。
方法/主要发现:在此,我们描述了使用由网络摄像头和手机摄像头构建的微型显微镜对蠕虫卵进行成像。结果表明,一个去掉光学元件以允许将测试样品直接应用于传感器暴露表面的廉价网络摄像头,能够产生埃及血吸虫卵的图像,这些图像可以通过视觉识别。使用一种高度特异性的图像模式识别算法,在视觉观察到的5个卵中,有4个能够被识别。
结论/意义:作为概念验证,我们表明,一个廉价的成像设备,如网络摄像头,可以很容易地改装成显微镜,用于基于芯片成像检测蠕虫卵。此外,可以生成用于通过机器视觉检测蠕虫卵的算法以实现自动化诊断。这些结果可用于构建简单的成像设备,用于低成本诊断泌尿生殖系统血吸虫病和其他被忽视的热带传染病。