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Reagent-free automatic cell viability determination using neural networks based machine vision and dark-field microscopy in Saccharomyces cerevisiae

机译:无试剂的自动细胞活力测定使用基于神经网络的机器视觉和酿酒酵母酿酒酵母视野和暗场显微镜

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Fermentation industries require in-situ real-time monitoring of cell viability during fermentation processes. For this purpose, reagent-free approaches are desired because they can be used for in situ analysis and reduce the system's complexity. We have developed an automatic way of determining cell viability via analysis of time-lapse image sequences taken by dark field microscopy without the aid of any additional reagents. The image processing is based on neural networks based machine vision, involving Principal Component Analysis (PCA) to investigate the dynamic information of intracellular movements. In consequence, the essential features as the vital sign of the target cells are discovered. Viability predictions using the Support Vector Machine (SVM) classifier have been done successfully on the datasets with different qualities. Accuracy up to above 90% has been obtained on the basis of image enhancement. Robustness of the system is proved by the results of the tests. The model organism we have used is Saccharomyces cerevisiae, however, this technique can promisingly be applied for the identification of cell viability of other organisms as well.
机译:在发酵过程中,发酵行业需要原位实时监测细胞活力。为此目的,需要无试剂方法,因为它们可以用于原位分析并降低系统的复杂性。我们开发了一种通过分析通过暗场显微镜的时间流逝图像序列来确定细胞活力的自动方法,而不借助于任何其他试剂。图像处理基于基于神经网络的机器视觉,涉及主成分分析(PCA)来研究细胞内运动的动态信息。结果,发现了作为目标细胞的重要符号的基本特征。使用支持向量机(SVM)分类器的活力预测已成功在具有不同质量的数据集上成功完成。在图像增强的基础上获得了高达90%的准确性。通过测试结果证明了系统的稳健性。我们使用的模型生物是酿酒酵母,然而,该技术可以承诺申请鉴定其他生物的细胞活力。

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