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Automatic image recognition to determine morphological development and secondary metabolite accumulation in hairy root networks

机译:自动图像识别,确定毛状根网络中的形态发育和次生代谢产物积累

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This study focuses on the morphological development and secondary metabolite production of the red pigments from the group of betacyanins in hairy roots of Beta vulgaris. We demonstrate a working, medium throughput, customized, automatic image recognition solution for hairy roots on agar plates including the evaluation of 12 experimental samples. Image acquisition is conducted under comparable parameters using a tripod with light emitting diode background lighting and a digital single lens reflex camera. The server-based image recognition system developed together with Wimasis GmbH, Munich, Germany helps to obtain not only quantitative values for morphological parameters, such as segment lengths and widths or metabolite concentrations, but also global parameters of root growth, such as total root length or the number of branching points. Using timed diagrams the development of the total root length, the total number of branching points, and the mean pigment concentration during the cultivation period were determined. The generated data present the basis for detailed mathematical modeling in order to achieve a structured growth model for hairy roots. A mathematical model for growth of hairy roots can be used to decrease experimental efforts as wellas to optimize cultivation conditions and the bioreactor design.
机译:这项研究的重点是甜菜根毛状根中的花青素组红色颜料的形态发育和次级代谢产物的产生。我们展示了一种适用于琼脂平板上毛状根的中等通量,定制化,自动图像识别解决方案,包括评估12个实验样品。使用具有发光二极管背景照明的三脚架和数字单镜头反光相机,在可比较的参数下进行图像采集。与德国慕尼黑的Wimasis GmbH共同开发的基于服务器的图像识别系统不仅有助于获得形态参数的定量值,例如片段的长度和宽度或代谢产物的浓度,还可以帮助获得根部生长的全局参数,例如总根部的长度或分支点的数量。使用定时图确定培养期间总根长,分支点总数和平均色素浓度的变化。生成的数据为详细的数学建模提供了基础,以便获得毛状根的结构化生长模型。毛状根生长的数学模型可用于减少实验工作以及优化培养条件和生物反应器设计。

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