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Prediction System for Rapid Identification of Salmonella Serotypes Based on Pulsed-Field Gel Electrophoresis Fingerprints

机译:基于脉冲场凝胶电泳指纹图谱快速鉴定沙门氏菌血清型的预测系统

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摘要

A classification model is presented for rapid identification of Salmonella serotypes based on pulsed-field gel electrophoresis (PFGE) fingerprints. The classification model was developed using random forest and support vector machine algorithms and was then applied to a database of 45,923 PFGE patterns, randomly selected from all submissions to CDC PulseNet from 2005 to 2010. The patterns selected included the top 20 most frequent serotypes and 12 less frequent serotypes from various sources. The prediction accuracies for the 32 serotypes ranged from 68.8% to 99.9%, with an overall accuracy of 96.0% for the random forest classification, and ranged from 67.8% to 100.0%, with an overall accuracy of 96.1% for the support vector machine classification. The prediction system improves reliability and accuracy and provides a new tool for early and fast screening and source tracking of outbreak isolates. It is especially useful to get serotype information before the conventional methods are done. Additionally, this system also works well for isolates that are serotyped as “unknown” by conventional methods, and it is useful for a laboratory where standard serotyping is not available.
机译:提出了一种分类模型,用于基于脉冲场凝胶电泳(PFGE)指纹图谱快速鉴定沙门氏菌血清型。使用随机森林和支持向量机算法开发了分类模型,然后将其应用于45,923个PFGE模式的数据库,该模式是从2005年至2010年向CDC PulseNet的所有提交中随机选择的。所选择的模式包括前20个最常见的血清型和12个来自各种来源的血清型较不常见。对于32种血清型的预测准确度范围为68.8%至99.9%,对于随机森林分类,总体精度为96.0%,范围为67.8%至100.0%,对于支持向量机分类,总体精度为96.1% 。该预测系统提高了可靠性和准确性,并为早期和快速筛查以及对暴发病菌的来源进行跟踪提供了新工具。在完成常规方法之前获取血清型信息特别有用。此外,该系统还适用于通过常规方法血清型定为“未知”的分离株,并且对于无法进行标准血清分型的实验室非常有用。

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