基于基质辅助激光解吸/电离飞行时间质谱的相似菌种阴性标记SVM分类模型

Jongseo Lee, Yoonsu Shin, Songkuk Kim, Kyoohyoung Rho, Kyu H. Park
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引用次数: 5

摘要

MALDI-TOF质谱法在基于微生物质谱中所代表的蛋白质质量谱的微生物快速鉴定中具有很高的社会和经济价值。使用MALDI-TOF质谱进行了大量的微生物鉴定研究,标记物是可以用来唯一区分微生物的特征。根据提取的质量信息选择标记物进行微生物鉴定。先前的研究表明,将MALDI-TOF MS提取的大量信息与机器学习技术相结合,可以提高微生物的分类能力。对分枝杆菌来说,微生物的分类尤其困难和关键,因为不同的病原体应该用不同的处方治疗,尽管它们的成分相似。由于它们的MALDI-TOF质谱模式彼此相似,因此使用传统方法准确鉴定分枝杆菌是相当具有挑战性的。在本研究中,我们提出了一种支持向量机模型,通过学习每组中分别提取的阳性和阴性标记来提高相似物种的区分。分类为脓肿分枝杆菌群和偶发分枝杆菌群。我们的新方法采用阴性标记对相似物种进行分类,并利用阳性和阴性标记的结合提高了对相似物种的识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SVM Classification Model of Similar Bacteria Species using Negative Marker: Based on Matrix-Assisted Laser Desorption/Ionization Time-of-Flight Mass Spectrometry
MALDI-TOF mass spectrometry has high social and economic value in rapid identification of microorganisms based on the protein mass profile represented in a mass spectrum of the microorganism. Numerous studies have been conducted to identify microorganisms using MALDI-TOF MS. Markers are characteristics that can be used to uniquely distinguish microorganisms. Microorganisms can be identified by applying markers selected based on the extracted mass information. Previous studies demonstrated that combining mass information extracted by MALDI-TOF MS with machine-learning techniques can improve microorganism classification. Classification of microorganisms is particularly difficult and critical for mycobacteria because various pathogens should be treated with different prescriptions, although they exhibit similar compositions. It is quite challenging to accurately identify mycobacteria using conventional methods because their MALDI-TOF MS patterns are similar to each other. In this study, we propose a support vector machine model for improving the distinction of similar species by learning positive and negative markers separately extracted in each group. We classified species in the Mycobacterium abscessus group and Mycobacterium fortuitum group. Our novel approach applies negative markers to classify similar species and improves the identification of similar species using a combination of positive and negative markers.
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