4.6 Article

Mixture model normalization for non-targeted gas chromatography/mass spectrometry metabolomics data

期刊

BMC BIOINFORMATICS
卷 18, 期 -, 页码 -

出版社

BIOMED CENTRAL LTD
DOI: 10.1186/s12859-017-1501-7

关键词

Metabolomics; Non-targeted; Gas chromatography/mass spectrometry; GC/MS; Normalization; Batch effects

资金

  1. National Institute of Diabetes and Digestive and Kidney Diseases [R01DK095963]
  2. National Institute of Child Health and Human Development [R01-HD34242, R01-HD34243]

向作者/读者索取更多资源

Background: Metabolomics offers a unique integrative perspective for health research, reflecting genetic and environmental contributions to disease-related phenotypes. Identifying robust associations in population-based or large-scale clinical studies demands large numbers of subjects and therefore sample batching for gas-chromatography/ mass spectrometry (GC/MS) non-targeted assays. When run over weeks or months, technical noise due to batch and run-order threatens data interpretability. Application of existing normalization methods to metabolomics is challenged by unsatisfied modeling assumptions and, notably, failure to address batch-specific truncation of low abundance compounds. Results: To curtail technical noise and make GC/MS metabolomics data amenable to analyses describing biologically relevant variability, we propose mixture model normalization (mixnorm) that accommodates truncated data and estimates per-metabolite batch and run-order effects using quality control samples. Mixnorm outperforms other approaches across many metrics, including improved correlation of non-targeted and targeted measurements and superior performance when metabolite detectability varies according to batch. For some metrics, particularly when truncation is less frequent for a metabolite, mean centering and median scaling demonstrate comparable performance to mixnorm. Conclusions: When quality control samples are systematically included in batches, mixnorm is uniquely suited to normalizing non-targeted GC/MS metabolomics data due to explicit accommodation of batch effects, run order and varying thresholds of detectability. Especially in large-scale studies, normalization is crucial for drawing accurate conclusions from non-targeted GC/MS metabolomics data.

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