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Identification of Bacillus anthracis by Using Matrix-Assisted Laser Desorption Ionization-Time of Flight Mass Spectrometry and Artificial Neural Networks ▿

机译:基质辅助激光解吸电离-飞行时间质谱和人工神经网络鉴定炭疽芽孢杆菌

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摘要

This report demonstrates the applicability of a combination of matrix-assisted laser desorption ionization-time of flight (MALDI-TOF) mass spectrometry (MS) and chemometrics for rapid and reliable identification of vegetative cells of the causative agent of anthrax, Bacillus anthracis. Bacillus cultures were prepared under standardized conditions and inactivated according to a recently developed MS-compatible inactivation protocol for highly pathogenic microorganisms. MALDI-TOF MS was then employed to collect spectra from the microbial samples and to build up a database of bacterial reference spectra. This database comprised mass peak profiles of 374 strains from Bacillus and related genera, among them 102 strains of B. anthracis and 121 strains of B. cereus. The information contained in the database was investigated by means of visual inspection of gel view representations, univariate t tests for biomarker identification, unsupervised hierarchical clustering, and artificial neural networks (ANNs). Analysis of gel views and independent t tests suggested B. anthracis- and B. cereus group-specific signals. For example, mass spectra of B. anthracis exhibited discriminating biomarkers at 4,606, 5,413, and 6,679 Da. A systematic search in proteomic databases allowed tentative assignment of some of the biomarkers to ribosomal protein or small acid-soluble proteins. Multivariate pattern analysis by unsupervised hierarchical cluster analysis further revealed a subproteome-based taxonomy of the genus Bacillus. Superior classification accuracy was achieved when supervised ANNs were employed. For the identification of B. anthracis, independent validation of optimized ANN models yielded a diagnostic sensitivity of 100% and a specificity of 100%.
机译:该报告证明了基质辅助激光解吸电离飞行时间(MALDI-TOF)质谱(MS)和化学计量学相结合的方法可快速,可靠地鉴定炭疽病杆菌炭疽杆菌的营养细胞。芽孢杆菌培养物在标准化条件下制备,并根据最近开发的针对高致病性微生物的MS兼容灭活方案进行灭活。然后,使用MALDI-TOF MS从微生物样品中收集光谱,并建立细菌参考光谱数据库。该数据库包括来自芽孢杆菌和相关属的374个菌株的质峰图谱,其中102个炭疽芽孢杆菌菌株和121个蜡状芽孢杆菌菌株。数据库中包含的信息通过凝胶视图表示的视觉检查,生物标记识别的单变量t检验,无监督分层聚类和人工神经网络(ANN)进行了研究。凝胶视图和独立t检验的分析提示了炭疽芽孢杆菌和蜡状芽孢杆菌的组特异性信号。例如,炭疽芽孢杆菌的质谱在4,606、5,413和6,679 Da处显示出可区分的生物标记。蛋白质组学数据库中的系统搜索允许将某些生物标记物暂时分配给核糖体蛋白或小的酸溶性蛋白。通过无监督的层次聚类分析进行的多变量模式分析进一步揭示了芽孢杆菌属的基于蛋白质组的分类学。当使用监督的人工神经网络时,可以实现出色的分类精度。为了鉴定炭疽芽胞杆菌,对优化的ANN模型进行独立验证可产生100%的诊断敏感性和100%的特异性。

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