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Peak Detection Method Evaluation for Ion Mobility Spectrometry by using Machine Learning Approaches

机译:利用机器学习方法评估离子迁移谱的峰值检测方法

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摘要

Ion mobility spectrometry with pre-separation by multi-capillary columns (MCC/IMS) has become an established inexpensive, non-invasive bioanalytics technology for detecting volatile organic compounds (VOCs) with various metabolomics applications in medical research. To pave the way for this technology towards daily usage in medical practice, different steps still have to be taken. With respect to modern biomarker research, one of the most important tasks is the automatic classification of patient-specific data sets into different groups, healthy or not, for instance. Although sophisticated machine learning methods exist, an inevitable preprocessing step is reliable and robust peak detection without manual intervention. In this work we evaluate four state-of-the-art approaches for automated IMS-based peak detection: local maxima search, watershed transformation with IPHEx, region-merging with VisualNow, and peak model estimation (PME).We manually generated Metabolites 2013, 3 278 a gold standard with the aid of a domain expert (manual) and compare the performance of the four peak calling methods with respect to two distinct criteria. We first utilize established machine learning methods and systematically study their classification performance based on the four peak detectors� results. Second, we investigate the classification variance and robustness regarding perturbation and overfitting. Our main finding is that the power of the classification accuracy is almost equally good for all methods, the manually created gold standard as well as the four automatic peak finding methods. In addition, we note that all tools, manual and automatic, are similarly robust against perturbations. However, the classification performance is more robust against overfitting when using the PME as peak calling preprocessor. In summary, we conclude that all methods, though small differences exist, are largely reliable and enable a wide spectrum of real-world biomedical applications.
机译:借助多毛细管色谱柱(MCC / IMS)进行预分离的离子迁移谱仪已成为一种成熟的廉价,无创生物分析技术,可用于医学研究中各种代谢组学应用中的挥发性有机化合物(VOC)的检测。为了为该技术在医学实践中的日常使用铺平道路,仍然必须采取不同的步骤。对于现代生物标志物研究,最重要的任务之一是将患者特定数据集自动分类为不同类别的样本,例如,无论是否健康。尽管存在复杂的机器学习方法,但不可避免的预处理步骤是可靠且可靠的峰值检测,而无需人工干预。在这项工作中,我们评估了四种基于IMS的自动化峰检测的先进方法:局部最大值搜索,使用IPHEx进行分水岭转换,使用VisualNow进行区域合并以及峰模型估计(PME)。我们手动生成了Metabolites 2013 ,在领域专家(手册)的帮助下,制定了3278黄金标准,并针对两种不同的标准比较了四种峰值调用方法的性能。我们首先利用已建立的机器学习方法,并基于四个峰值检测器的结果系统地研究其分类性能。其次,我们研究关于扰动和过度拟合的分类方差和鲁棒性。我们的主要发现是,对于所有方法,手动创建的金标准以及四种自动峰发现方法,分类准确性的功效几乎都差不多。此外,我们注意到,所有手动和自动工具都具有同样强大的抗干扰能力。但是,当使用PME作为峰值调用预处理器时,分类性能在防止过度拟合方面更为强大。总而言之,我们得出的结论是,尽管存在微小差异,但所有方法在很大程度上都是可靠的,并且可以实现各种实际的生物医学应用。

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