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Rapid, portable and cost-effective yeast cell viability and concentration analysis using lensfree on-chip microscopy and machine learning

机译:使用无透镜芯片显微镜和机器学习技术进行快速,便携式且经济高效的酵母细胞活力和浓度分析

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摘要

Monitoring yeast cell viability and concentration is important in brewing, baking and biofuel production. However, existing methods of measuring viability and concentration are relatively bulky, tedious and expensive. Here we demonstrate a compact and cost-effective automatic yeast analysis platform (AYAP), which can rapidly measure cell concentration and viability. AYAP is based on digital in-line holography and on-chip microscopy and rapidly images a large field-of-view of 22.5 mm2. This lens-free microscope weighs 70 g and utilizes a partially-coherent illumination source and an opto-electronic image sensor chip. A touch-screen user interface based on a tablet-PC is developed to reconstruct the holographic shadows captured by the image sensor chip and use a support vector machine (SVM) model to automatically classify live and dead cells in a yeast sample stained with methylene blue. In order to quantify its accuracy, we varied the viability and concentration of the cells and compared AYAP's performance with a fluorescence exclusion staining based gold-standard using regression analysis. The results agree very well with this gold-standard method and no significant difference was observed between the two methods within a concentration range of 1.4 × 105 to 1.4 × 106 cells per mL, providing a dynamic range suitable for various applications. This lensfree computational imaging technology that is coupled with machine learning algorithms would be useful for cost-effective and rapid quantification of cell viability and density even in field and resource-poor settings.
机译:监测酵母细胞的活力和浓度在酿造,烘焙和生物燃料生产中很重要。然而,测量生存力和浓度的现有方法相对笨重,乏味且昂贵。在这里,我们展示了一个紧凑且经济高效的自动酵母分析平台(AYAP),该平台可快速测量细胞浓度和生存力。 AYAP基于数字在线全息技术和芯片显微镜,可对22.5 mm2的大视场快速成像。这款无透镜显微镜重70克,并采用了部分相干的照明源和光电图像传感器芯片。开发了一种基于Tablet PC的触摸屏用户界面,以重建由图像传感器芯片捕获的全息阴影,并使用支持向量机(SVM)模型对亚甲蓝染色的酵母样品中的活细胞和死细胞进行自动分类。为了量化其准确性,我们改变了细胞的活力和浓度,并使用回归分析将AYAP的性能与基于荧光排斥染色的金标准进行了比较。结果与该金标准方法非常吻合,并且在每毫升1.4×105至1.4×106个细胞的浓度范围内,两种方法之间没有观察到显着差异,从而提供了适合各种应用的动态范围。这种无镜头的计算成像技术与机器学习算法相结合,即使在田野和资源匮乏的环境中,也可用于经济高效地快速量化细胞活力和密度。

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