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Investigating Time Series Classification Techniques for Rapid Pathogen Identification with Single-Cell MALDI-TOF Mass Spectrum Data

机译:使用单细胞MALDI-TOF质谱数据研究可快速识别病原体的时间序列分类技术

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Matrix-assisted laser desorption/ionization-time-of-flight mass spectrometry (MALDI-TOF-MS) is a well-known technology, widely used in species identification. Specifically, MALDI-TOF-MS is applied on samples that usually include bacterial cells, generating representative signals for the various bacterial species. However, for a reliable identification result, a significant amount of biomass is required. For most samples used for diagnostics of infectious diseases, the sample volume is extremely low to obtain the required amount of biomass. Therefore, amplification of the bacterial load is performed by a culturing phase. If the MALDI process could be applied to individual bacteria, it would be . possible to circumvent the need for culturing and isolation, accelerating the whole process. In this paper, we briefly describe an implementation of a MALDI-TOF MS procedure in a setting of individual cells and we demonstrate the use of the produced data for the application of pathogen identification. The identification of pathogens (bacterial species) is performed by using machine learning algorithms on the generated single-cell signals. The high predictive performance of the machine learning models indicates that the produced bacterial signatures constitute an informative representation, helpful in distinguishing the different bacterial species. In addition, we reformulate the bacterial species identification problem as a time series classification task by considering the intensity sequences of a given spectrum as time series values. Experimental results show that algorithms originally introduced for time series analysis are beneficial in modelling observations of single-cell MALDI-TOF MS.
机译:基质辅助激光解吸/电离飞行时间质谱(MALDI-TOF-MS)是一项众所周知的技术,已广泛用于物种鉴定。具体而言,MALDI-TOF-MS应用于通常包括细菌细胞的样品,从而产生各种细菌物种的代表性信号。但是,为了获得可靠的识别结果,需要大量的生物质。对于大多数用于诊断传染病的样品,样品量极少,无法获得所需的生物量。因此,在培养阶段进行细菌负荷的扩增。如果MALDI方法可以应用于单个细菌,那就可以了。可能避免培养和分离的需要,从而加快了整个过程。在本文中,我们简要介绍了在单个细胞环境中实施MALDI-TOF MS程序的过程,并演示了将产生的数据用于病原体鉴定的应用。通过使用机器学习算法对生成的单细胞信号进行病原体(细菌种类)的鉴定。机器学习模型的高预测性能表明,所产生的细菌特征构成了有益的表征,有助于区分不同的细菌种类。此外,我们通过将给定光谱的强度序列视为时间序列值,将细菌种类识别问题重新制定为时间序列分类任务。实验结果表明,最初为时间序列分析引入的算法有利于对单细胞MALDI-TOF MS进行建模观察。

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