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首页> 外文期刊>Journal of Clinical Microbiology >Identifying Mycobacterium tuberculosis cultures by gas-liquid chromatography and a computer-aided pattern recognition model.
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Identifying Mycobacterium tuberculosis cultures by gas-liquid chromatography and a computer-aided pattern recognition model.

机译:通过气液色谱法和计算机辅助模式识别模型鉴定结核分枝杆菌培养物。

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A procedure that uses gas-liquid chromatography and a pattern recognition computer model was developed for distinguishing cultures of Mycobacterium tuberculosis from cultures of other mycobacteria, common bacteria, and fungi. In this procedure, a sample of a culture preparation is methanolyzed and trimethylsilylated sequentially and injected into a gas chromatograph equipped with a flame ionization detector. A pattern recognition procedure computes an error score by comparing the gas-liquid chromatography peak responses of a culture to those of a standard M. tuberculosis culture. Ten M. tuberculosis cultures were used in the development of the pattern recognition model. Computed error scores of 5 or less were established for identifying an M. tuberculosis culture. The method was evaluated with two sets of test samples, non-M. tuberculosis and M. tuberculosis cultures. Sample identification was correct for all 14 M. tuberculosis cultures (M. tuberculosis or non-M. tuberculosis), 45 fungal cultures, 94 bacterial cultures, and all but 1 of 18 cultures of mycobacteria other than tuberculosis (MOTT). The false prediction represented an isolate of M. fortuitum. For M. tuberculosis, fungal, bacterial, and MOTT cultures, the ranges of error scores were 1 to 5, 16 to 33, 13 to 34, and 4 to 26, respectively. Therefore, we have demonstrated that this diagnostic model can distinguish M. tuberculosis from non-M. tuberculosis cultures with a high degree of accuracy.
机译:开发了一种使用气液色谱和模式识别计算机模型的程序,用于区分结核分枝杆菌的培养物与其他分枝杆菌,常见细菌和真菌的培养物。在该程序中,将培养物样品依次进行甲醇水解和三甲基甲硅烷基化,然后注入配备有火焰离子化检测器的气相色谱仪中。模式识别程序通过将培养物的气-液相色谱峰响应与标准结核分枝杆菌培养物的峰响应进行比较来计算错误评分。在模式识别模型的开发中使用了十种结核分枝杆菌培养物。确定的错误评分为5或更低,以鉴定结核分枝杆菌培养物。用两组非M的测试样品评估了该方法。结核和结核分枝杆菌培养物。样品鉴定对所有14种结核分枝杆菌培养物(结核分枝杆菌或非结核分枝杆菌),45种真菌培养物,94种细菌培养物以及除结核分枝杆菌(MOTT)以外的18种分枝杆菌培养物中的除1种均正确。错误的预测代表了福特分枝杆菌的分离。对于结核分枝杆菌,真菌,细菌和MOTT培养物,错误评分的范围分别为1到5、16到33、13到34和4到26。因此,我们证明了该诊断模型可以区分结核分枝杆菌和非结核分枝杆菌。结核病培养具有很高的准确性。

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