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Detecting and discriminating between different types of bacteria with a low-cost smartphone based optical device and neural network models

机译:基于低成本智能手机的光学装置和神经网络模型检测和区分不同类型的细菌

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The food industry such as meat producers and plant product processors have tremendous interest in detecting pathogenicorganisms such as E.coli, Listeria, and Salmonella in very low concentrations down to a single cell. These pathogenicorganisms when they are in the right environment can start multiplying exponentially. For example, E.coli cells candouble every 20 minutes posing a tremendous danger for their growth in over many hours. We have designed an opticaldevice that attaches to a smartphone providing an imaging and processing device that achieves an optical resolution of 1micron. The optics is engineered to reduce aberrations in the system. We also developed a smartphone application thatcan track microbeads and bacteria in the video frames in real time using computer vision algorithms. We extractindividual bacterial image segments in these videos to train neural network models to detect and differentiate differenttypes of bacteria such as E.coli and B.subtilis. These trained models can detect and discriminate E.coli from B.subtiliswith high accuracy of more than 80%. This approach has the potential to train different types of bacteria with amulticlass neural network classifier by training them with images from different genera and species of bacteria. Such aclassifier can detect them in a wild sample containing many types of bacteria with low-cost smartphone optical device.
机译:肉类生产商和植物产品处理器等食品行业对检测致病性具有巨大兴趣诸如大肠杆菌,李斯特菌和沙门氏菌等生物体,浓度非常低的浓度下降到单个细胞。这些致病当他们处于正确的环境时,有机体可以开始呈指数级倍增。例如,大肠杆菌细胞可以每20分钟每20分钟都会在很多时候造成巨大危险。我们设计了一种光学附加到智能手机的设备提供成像和处理设备,该设备实现了1的光学分辨率微米。光学器件被设计为减少系统中的像差。我们还开发了智能手机应用程序可以使用计算机视觉算法实时跟踪视频帧中的微生物和细菌。我们提取这些视频中的个体细菌图像段,用于训练神经网络模型来检测和区分不同细菌的类型,如E.coli和B.subtilis。这些训练有素的模型可以从B.subtilis中检测和鉴别大肠杆菌高精度超过80%。这种方法有可能培训不同类型的细菌多级神经网络分类器通过从不同的属和细菌种类的图像训练它们。这样一个分类器可以在含有许多具有低成本智能手机光学装置的野生样品中检测它们。

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