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Utilizing Negative Markers for Identifying Mycobacteria Species based on Mass Spectrometry with Machine Learning Methods

机译:利用负标记物根据机器学习方法鉴定基于质谱法的鉴定分枝杆菌物种

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Matrix-assisted laser desorption/ionization time-of-flight (MALDI-TOF) mass spectrometry (MS) is a useful tool for rapid identification of microorganisms based on the protein mass profile represented in a mass spectrum of the microorganism. Typically, markers that are specific for particular microorganisms are extracted from the mass information obtained by MALDI-TOF MS, and a machine learning technique is applied to the markers. Identification of mycobacteria is of high clinical importance in that different pathogens must be treated with different antibiotics, but is still challenging because spectral patterns of different mycobacteria appear similar. In this paper, we propose a novel approach to use both positive and negative markers in order to enhance discrimination between the spectral patterns of different mycobacteria. We apply the proposed method to classify species in the Mycobacterium abscessus and Mycobacterium fortuitum groups. Experimental results demonstrate that, when combined with various classifier techniques, our method significantly improves the accuracy of mycobacteria identification.
机译:基质辅助激光解吸/电离时间飞行(MALDI-TOF)质谱(MS)是用于基于蛋白质质谱曲线微生物的快速鉴定的有用工具在所述微生物的质谱表示。典型地,标志物是特异于特定微生物从由MALDI-TOF MS得到的质量信息中提取,和机器学习技术被施加到标记。分枝杆菌的鉴定是在不同的病原体必须用不同的抗生素治疗临床高度重视,但仍然具有挑战性,因为不同的分枝杆菌的频谱图案出现类似。在本文中,我们提出了一种新的方法来利用正反两方面的指标,以提高不同分枝杆菌的光谱模式之间的歧视。我们采用该方法在脓肿分枝杆菌分类品种和偶发分枝杆菌组。实验结果表明,当与各种分级技术相结合,我们的方法显著提高了分枝杆菌识别的准确性。

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