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Computational Methods for Metabolomic Data Analysis of Ion Mobility Spectrometry Data—Reviewing the State of the Art

机译:离子迁移谱数据的代谢组学数据分析的计算方法—综述最新技术

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Ion mobility spectrometry combined with multi-capillary columns (MCC/IMS) is a well known technology for detecting volatile organic compounds (VOCs). We may utilize MCC/IMS for scanning human exhaled air, bacterial colonies or cell lines, for example. Thereby we gain information about the human health status or infection threats. We may further study the metabolic response of living cells to external perturbations. The instrument is comparably cheap, robust and easy to use in every day practice. However, the potential of the MCC/IMS methodology depends on the successful application of computational approaches for analyzing the huge amount of emerging data sets. Here, we will review the state of the art and highlight existing challenges. First, we address methods for raw data handling, data storage and visualization. Afterwards we will introduce de-noising, peak picking and other pre-processing approaches. We will discuss statistical methods for analyzing correlations between peaks and diseases or medical treatment. Finally, we study up-to-date machine learning techniques for identifying robust biomarker molecules that allow classifying patients into healthy and diseased groups. We conclude that MCC/IMS coupled with sophisticated computational methods has the potential to successfully address a broad range of biomedical questions. While we can solve most of the data pre-processing steps satisfactorily, some computational challenges with statistical learning and model validation remain.
机译:结合多毛细管色谱柱(MCC / IMS)的离子迁移谱仪是检测挥发性有机化合物(VOC)的众所周知的技术。例如,我们可以利用MCC / IMS扫描人类呼出的空气,细菌菌落或细胞系。因此,我们可以获得有关人类健康状况或感染威胁的信息。我们可能会进一步研究活细胞对外部扰动的代谢反应。该仪器相对便宜,坚固并且易于在日常实践中使用。但是,MCC / IMS方法的潜力取决于计算方法的成功应用,以用于分析大量新兴数据集。在这里,我们将回顾最先进的技术并突出现有的挑战。首先,我们介绍原始数据处理,数据存储和可视化的方法。之后,我们将介绍降噪,峰拾取和其他预处理方法。我们将讨论用于分析高峰与疾病或药物治疗之间的相关性的统计方法。最后,我们研究了最新的机器学习技术,用于识别可将患者分为健康人群和患病人群的强大生物标志物分子。我们得出的结论是,MCC / IMS结合复杂的计算方法,具有成功解决广泛的生物医学问题的潜力。尽管我们可以令人满意地解决大多数数据预处理步骤,但仍然存在统计学习和模型验证所面临的一些计算难题。

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