代谢组学数据分析的加权标度方法

IF 1.1 Q3 STATISTICS & PROBABILITY Japanese Journal of Statistics and Data Science Pub Date : 2023-05-10 DOI:10.1007/s42081-023-00205-2
Biplab Biswas, Nishith Kumar, Md. Aminul Hoque, Md. Ashad Alam
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引用次数: 0

摘要

系统变异是代谢组学数据分析中的一个常见问题。因此,不同的缩放和归一化技术被用于代谢组学数据分析的数据预处理。虽然文献中有几种标度方法,但标度、变换和/或归一化技术的选择影响了进一步的统计分析。如何选择合适的标度技术进行下游分析以获得准确的结果或做出正确的决策是一个挑战。此外,现有的标度技术对异常值或极值比较敏感。为了填补这一空白,我们的目标是引入一种不受异常值影响的鲁棒缩放方法,并为下游分析提供更准确的结果。在这里,我们引入了一种新的加权缩放方法,该方法对异常值具有鲁棒性;然而,在数据预处理中不需要额外的异常值检测/处理步骤,并通过人工和真实代谢组学数据集将其与传统的缩放和归一化技术进行了比较。我们评估了所提出的方法的性能,与其他现有的传统缩放技术相比,使用代谢组学数据分析,在没有和存在不同百分比的异常值的情况下。结果表明,在大多数情况下,无论异常值是否存在,本文提出的缩放技术都比传统的缩放方法具有更好的性能。该方法改进了进一步的下游代谢组学分析。所提出的鲁棒缩放方法的R函数可在https://github.com/nishithkumarpaul/robustScaling/blob/main/wscaling.R上获得
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Weighted scaling approach for metabolomics data analysis
Systematic variation is a common issue in metabolomics data analysis. Therefore, different scaling and normalization techniques are used to preprocess the data for metabolomics data analysis. Although several scaling methods are available in the literature, however, choice of scaling, transformation and/or normalization technique influences the further statistical analysis. It is challenged to choose the appropriate scaling technique for downstream analysis to get accurate results or to make proper decision. Moreover, the existing scaling techniques are sensitive to outliers or extreme values. To fill the gap, our objective is to introduce a robust scaling approach that is not influenced by outliers as well as provides more accurate results for downstream analysis. Here, we introduced a new weighted scaling approach that is robust against outliers; however, no additional outlier detection/treatment step is needed in data preprocessing and also compared it with the conventional scaling and normalization techniques through artificial and real metabolomics datasets. We evaluated the performance of the proposed method in comparison to the other existing conventional scaling techniques using metabolomics data analysis in both the absence and presence of different percentages of outliers. Results show that in most cases, the proposed scaling technique is a better performer than the traditional scaling methods in both the absence and presence of outliers. The proposed method improves the further downstream metabolomics analysis. The R function of the proposed robust scaling method is available at https://github.com/nishithkumarpaul/robustScaling/blob/main/wscaling.R
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来源期刊
CiteScore
2.00
自引率
15.40%
发文量
42
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