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Outlier Detection using Projection Quantile Regression for Mass Spectrometry Data with Low Replication

机译:使用投影分位数回归的低重复性质谱数据进行异常值检测

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摘要

BackgroundMass spectrometry (MS) data are often generated from various biological or chemical experiments and there may exist outlying observations, which are extreme due to technical reasons. The determination of outlying observations is important in the analysis of replicated MS data because elaborate pre-processing is essential for successful analysis with reliable results and manual outlier detection as one of pre-processing steps is time-consuming. The heterogeneity of variability and low replication are often obstacles to successful analysis, including outlier detection. Existing approaches, which assume constant variability, can generate many false positives (outliers) and/or false negatives (non-outliers). Thus, a more powerful and accurate approach is needed to account for the heterogeneity of variability and low replication.
机译:背景技术质谱(MS)数据通常来自各种生物学或化学实验,并且可能存在离群的观测值,由于技术原因,这些观测值是极端的。由于要完成可靠的结果并进行人工离群值检测,因此复杂的预处理对于成功进行分析至关重要,因为进行预处理的步骤之一很耗时,因此确定外围观测值对于分析重复的MS数据非常重要。变异性的异质性和低重复性通常是成功分析(包括异常检测)的障碍。假定可变性不变的现有方法会产生许多假阳性(异常值)和/或假阴性(非异常值)。因此,需要一种更强大且准确的方法来解决变异性和低复制的异质性。

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