DETECTION ESCHERICHA COLI BACTERIA: A REVIEW OF IMAGE PROCESSING METHODS

Siti Farah Hussin, Johor Politeknik Mersing, Z. Saari
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引用次数: 1

Abstract

There have been numerous chemical studies to detect Eschericha Coli Bacteria or better known as E.coli bacteria. However, studies using image processing to detect E.coli bacteria have been restricted. There is an urgent need to incorporate image processing into systematic reviews for the identification of E.coli in water or food samples. The E.coli detection process takes between 24 hours to 48 hours as the bacteria needs to go through the growth phase as a result of a mixture of water samples and chemical reagents and then placed in an incubator at certain temperatures and humidity.  This article review several approaches for E.coli bacteria detection from standard technique, portable hybrid imaging system, hybrid smartphone and microfluidic biosensor, smartphone and paper microfluidics and goes to fibre optics. The colour change after several hours is an indicator for detecting the presence of E.coli bacteria in the water sample. Although standard techniques such as Gold Nanoparticles, Solid phase Cytometry, Viable Plate Count and Polymerase Chain Reaction (PCR) for detection the presence of E.coli, the use of this technique involving the transfer of water samples to the laboratory, trained staff, longer sample monitoring process, expensive costs and complex procedures. E.coli detection techniques are also going through a revolutionary phase as technology advances by using a hybrid technique that combines standard technique and image processing. E.coli growth monitoring and detection process is now easier as it can be viewed using a portable device, smartphone or via a website in real-time.
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大肠杆菌检测:图像处理方法综述
已经有大量的化学研究来检测大肠杆菌或更广为人知的大肠杆菌。然而,利用图像处理技术检测大肠杆菌的研究一直受到限制。迫切需要将图像处理纳入系统评价中,以鉴定水或食品样品中的大肠杆菌。大肠杆菌的检测过程需要24小时到48小时,因为细菌需要经过水样和化学试剂的混合物的生长阶段,然后放在一定温度和湿度的培养箱中。本文从标准技术、便携式混合成像系统、智能手机和微流控生物传感器、智能手机和纸微流控技术以及光纤等方面综述了大肠杆菌检测的几种方法。几个小时后的颜色变化是检测水样中是否存在大肠杆菌的指标。尽管诸如金纳米颗粒、固相细胞术、活菌平板计数和聚合酶链反应(PCR)等标准技术可用于检测大肠杆菌的存在,但使用这种技术涉及将水样转移到实验室、训练有素的工作人员、较长的样品监测过程、昂贵的成本和复杂的程序。随着标准技术和图像处理技术的结合,大肠杆菌检测技术也进入了革命性的阶段。大肠杆菌生长监测和检测过程现在更容易,因为它可以使用便携式设备,智能手机或通过网站实时查看。
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