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Use of high-content analysis and machine learning to characterize complex microbial samples via morphological analysis

机译:使用高含量分析和机器学习通过形态学分析表征复杂的微生物样品

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摘要

High Content Analysis (HCA) has become a cornerstone of cellular analysis within the drug discovery industry. To expand the capabilities of HCA, we have applied the same analysis methods, validated in numerous mammalian cell models, to microbiology methodology. Image acquisition and analysis of various microbial samples, ranging from pure cultures to culture mixtures containing up to three different bacterial species, were quantified and identified using various machine learning processes. These HCA techniques allow for faster cell enumeration than standard agar-plating methods, identification of “viable but not plate culturable” microbe phenotype, classification of antibiotic treatment effects, and identification of individual microbial strains in mixed cultures. These methods greatly expand the utility of HCA methods and automate tedious and low-throughput standard microbiological methods.
机译:高含量分析(HCA)已成为药物发现行业中细胞分析的基石。为了扩展HCA的功能,我们将已在众多哺乳动物细胞模型中验证过的相同分析方法应用于微生物学方法。使用各种机器学习过程对从纯培养物到包含多达三种不同细菌种类的培养混合物的各种微生物样品的图像采集和分析进行了量化和鉴定。这些HCA技术比标准琼脂接种方法允许更快的细胞计数,鉴定“可行但不可培养的平板”微生物表型,分类抗生素治疗效果以及鉴定混合培养物中的个别微生物菌株。这些方法极大地扩展了HCA方法的实用性,并实现了繁琐且低通量的标准微生物方法的自动化。

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