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首页> 外文期刊>Biotechnology Letters >Comparison of laser diffraction and image analysis for measurement of Streptomyces coelicolor cell clumps and pellets
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Comparison of laser diffraction and image analysis for measurement of Streptomyces coelicolor cell clumps and pellets

机译:激光衍射法和图像分析法比较天蓝色链霉菌细胞团块和团粒的测量

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摘要

Morphology is important in industrial processes involving filamentous organisms because it affects the mixing and mass transfer and can be linked to productivity. Image analysis provides detailed information about the morphology but, in practice, it is often laborious including both collection of high quality images and image processing. Laser diffraction is rapid and fully automatic and provides a volume-weighted distribution of the particle sizes. However, it is based on a number of assumptions that do not always apply to samples. We have evaluated laser diffraction to measure cell clumps and pellets of Streptomyces coelicolor compare to image analysis. Samples, taken five times during fed-batch cultivation, were analyzed by image analysis and laser diffraction. The volume-weighted size distribution was calculated for each sample. Laser diffraction and image analysis yielded similar size distributions, i.e. unimodal or bimodal distributions. Both techniques produced similar estimations of the population means, whereas the estimates of the standard deviations were generally higher using laser diffraction compared to image analysis. Therefore, laser diffraction measurements are high quality and the technique may be useful when rapid measurements of filamentous cell clumps and pellets are required.
机译:形态在涉及丝状生物的工业过程中很重要,因为形态会影响混合和传质,并可能与生产率相关。图像分析提供了有关形态的详细信息,但是在实践中,这通常很费力,包括高质量图像的收集和图像处理。激光衍射是快速且全自动的,并且提供了粒度的体积加权分布。但是,它基于许多不总是适用于样本的假设。我们已经评估了激光衍射来测量细胞团块和天蓝色链霉菌的沉淀,并进行了图像分析。在分批补料培养过程中采集五次样品,通过图像分析和激光衍射进行分析。计算每个样品的体积加权尺寸分布。激光衍射和图像分析产生相似的尺寸分布,即单峰或双峰分布。两种技术都对总体平均值产生了相似的估计,而与图像分析相比,使用激光衍射对标准偏差的估计通常更高。因此,激光衍射测量是高质量的,当需要快速测量丝状细胞团块和沉淀时,该技术可能有用。

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