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首页> 外文期刊>Biomedical Journal >Towards automated detection, semi-quantification and identification of microbial growth in clinical bacteriology: A proof of concept
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Towards automated detection, semi-quantification and identification of microbial growth in clinical bacteriology: A proof of concept

机译:致力于临床细菌学中微生物生长的自动检测,半定量和鉴定:概念验证

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Background Automation in microbiology laboratories impacts management, workflow, productivity and quality. Further improvements will be driven by the development of intelligent image analysis allowing automated detection of microbial growth, release of sterile samples, identification and quantification of bacterial colonies and reading of AST disk diffusion assays. We investigated the potential benefit of intelligent imaging analysis by developing algorithms allowing automated detection, semi-quantification and identification of bacterial colonies. Methods Defined monomicrobial and clinical urine samples were inoculated by the BD Kiestra? InoqulA? BT module. Image acquisition of plates was performed with the BD Kiestra? ImagA BT digital imaging module using the BD Kiestra? Optis? imaging software. The algorithms were developed and trained using defined data sets and their performance evaluated on both defined and clinical samples. Results The detection algorithms exhibited 97.1% sensitivity and 93.6% specificity for microbial growth detection. Moreover, quantification accuracy of 80.2% and of 98.6% when accepting a 1 log tolerance was obtained with both defined monomicrobial and clinical urine samples, despite the presence of multiple species in the clinical samples. Automated identification accuracy of microbial colonies growing on chromogenic agar from defined isolates or clinical urine samples ranged from 98.3% to 99.7%, depending on the bacterial species tested. Conclusion The development of intelligent algorithm represents a major innovation that has the potential to significantly increase laboratory quality and productivity while reducing turn-around-times. Further development and validation with larger numbers of defined and clinical samples should be performed before transferring intelligent imaging analysis into diagnostic laboratories.
机译:微生物实验室的背景自动化会影响管理,工作流程,生产率和质量。智能图像分析技术的发展将推动进一步的改进,该技术可以自动检测微生物的生长,无菌样品的释放,细菌菌落的鉴定和定量以及AST盘扩散测定法的读取。我们通过开发允许自动检测,半定量和鉴定细菌菌落的算法,研究了智能成像分析的潜在优势。方法BD Kiestra?接种确定的单微生物和临床尿液样本。 InoqulA? BT模块。用BD Kiestra?进行板的图像采集。使用BD Kiestra的ImagA BT数字成像模块吗?光学元件?成像软件。使用定义的数据集开发和训练算法,并在定义的样本和临床样本上评估其性能。结果检测算法对微生物生长检测具有97.1%的灵敏度和93.6%的特异性。此外,尽管临床样品中存在多种物质,但使用定义的微生物样品和临床尿液样品,其定量准确度分别为80.2%和98.6%(接受1 log耐受性时)。根据确定的细菌种类,从限定的分离物或临床尿液样本中生色琼脂上生长的微生物菌落的自动识别准确度范围为98.3%至99.7%。结论智能算法的发展代表了一项重大创新,它有可能显着提高实验室质量和生产率,同时减少周转时间。在将智能成像分析转移到诊断实验室之前,应使用大量已定义和临床样品进行进一步开发和验证。

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