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Rapid Antibiotic Susceptibility Analysis Using Microscopy and Machine Learning

机译:使用显微镜和机器学习的快速抗生素敏感性分析

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Here we present machine learning-based approach to automatic classify live and dead bacteria that can be used for rapid search for optimal antibiotics in case of bacterial infections. The patients must be promptly administered a most efficient medication because all delays significantly increase morbidity and mortality. We engineered a new technology allowing us to efficiently and rapidly capture bacterial cells from different biological samples and proceed with a rapid antibiotic susceptibility testing thereby bypassing the need to culture the bacterium. We developed a new machine learning and microscopy-based approach for rapid assessment of bacterial viability following tests with antibiotics. Also, we created a labeled dataset with ~100 images of live and dead bacteria stained with DAPI (DNA; blue) and FM4-64 (membrane; red) either treated with an antibiotic or untreated. We analyzed wild type (WT) and ampicillin-resistant (ampR) E. coli, WT and ampR S. aureus, and B. subtilis. For antibiotic susceptibility testing we used ampicillin, chloramphenicol and erythromycin. We extracted information about red and blue channels from the images and tried two machine learning classifiers for rapid assessment of viability of the bacteria. The classifiers Random Forest and J48 Decision Tree demonstrated precision 90.7% and 96%, recall 94.4% and 100%, and F-measure 92.5% and 95.2%, correspondingly, on 10-fold cross-validation.
机译:在这里,我们呈现基于机器学习的自动分类和死亡细菌的方法,可用于在细菌感染的情况下快速搜索最佳抗生素。患者必须迅速施用最有效的药物,因为所有延迟都显着增加了发病率和死亡率。我们设计了一种新技术,使我们能够有效和快速地捕获来自不同生物样品的细菌细胞,并采用快速的抗生素敏感性测试,从而绕过需要培养细菌的需要。我们开发了一种新的机器学习和基于显微镜的方法,可快速评估抗生素测试后的细菌活力。此外,我们创建了一个带有〜100个与DAPI(DNA;蓝色)和FM4-64(膜;红色)染色的Live和Dead细菌图像的标记数据集,用抗生素或未治疗。我们分析了野生型(WT)和氨苄青霉素(AMPR)大肠杆菌,WT和AMPR S.UUREUS和B.枯草芽孢杆菌。对于抗生素易感性测试,我们使用氨苄青霉素,氯霉素和红霉素。我们从图像中提取有关红色和蓝色频道的信息,并尝试了两种机器学习分类器,以便快速评估细菌的活力。分类器随机森林和J48决策树的精确度为90.7%和96%,召回94.4%和100%,相应地,在10倍交叉验证时,F-Mabote 92.5%和95.2%。

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