首页> 外文期刊>Journal of Clinical Microbiology >Optimization of the Preanalytical Steps of Matrix-Assisted Laser Desorption Ionization–Time of Flight Mass Spectrometry Identification Provides a Flexible and Efficient Tool for Identification of Clinical Yeast Isolates in Medical Laboratories
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Optimization of the Preanalytical Steps of Matrix-Assisted Laser Desorption Ionization–Time of Flight Mass Spectrometry Identification Provides a Flexible and Efficient Tool for Identification of Clinical Yeast Isolates in Medical Laboratories

机译:基质辅助激光解吸电离的分析前步骤的优化-飞行时间质谱鉴定为医学实验室中临床酵母菌的分离鉴定提供了灵活而有效的工具

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We report here that modifications of the preanalytical steps of matrix-assisted laser desorption ionization–time of flight mass spectrometry (MALDI-TOF MS) identification of yeasts, with regard to the original protocol provided by the manufacturers, appear to be efficient for the reliable routine identification of clinical yeast isolates in medical laboratories. Indeed, when one colony was sampled instead of five and the protein extraction protocol was modified, the performance of MALDI-TOF MS was superior to that of the API ID 32C method (discrepancies were confirmed by using molecular identification), allowing the correct identification of 94% of the 335 clinical isolates prospectively tested. We then demonstrated that the time for which the primary cultures were preincubated on CHROMagar did not impact the identification of yeasts by MALDI-TOF MS, since 95.1 and 96.2% of the 183 clinical yeast isolates prospectively tested were correctly identified after 48 and 72 h of preincubation, respectively.
机译:我们在这里报告,相对于制造商提供的原始协议,对基质辅助激光解吸电离-飞行时间质谱(MALDI-TOF MS)鉴定酵母的分析前步骤进行的修改似乎对可靠有效医学实验室对临床酵母菌的常规鉴定。确实,当采样一个菌落而不是五个菌落并修改了蛋白质提取方案时,MALDI-TOF MS的性能优于API ID 32C方法(通过分子鉴定来确认差异),从而可以正确鉴定335个临床分离株中有94%进行了前瞻性测试。然后,我们证明了将原培养物在CHROMagar上进行预培养的时间不会影响MALDI-TOF MS对酵母的鉴定,因为前瞻性测试的183种临床酵母分离株中有95.1%和96.2%在经过48和72 h的鉴定后能正确鉴定预孵育。

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