Genome Biology (Jan 2024)

Quartet metabolite reference materials for inter-laboratory proficiency test and data integration of metabolomics profiling

  • Naixin Zhang,
  • Qiaochu Chen,
  • Peipei Zhang,
  • Kejun Zhou,
  • Yaqing Liu,
  • Haiyan Wang,
  • Shumeng Duan,
  • Yongming Xie,
  • Wenxiang Yu,
  • Ziqing Kong,
  • Luyao Ren,
  • Wanwan Hou,
  • Jingcheng Yang,
  • Xiaoyun Gong,
  • Lianhua Dong,
  • Xiang Fang,
  • Leming Shi,
  • Ying Yu,
  • Yuanting Zheng

DOI
https://doi.org/10.1186/s13059-024-03168-z
Journal volume & issue
Vol. 25, no. 1
pp. 1 – 21

Abstract

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Abstract Background Various laboratory-developed metabolomic methods lead to big challenges in inter-laboratory comparability and effective integration of diverse datasets. Results As part of the Quartet Project, we establish a publicly available suite of four metabolite reference materials derived from B lymphoblastoid cell lines from a family of parents and monozygotic twin daughters. We generate comprehensive LC–MS-based metabolomic data from the Quartet reference materials using targeted and untargeted strategies in different laboratories. The Quartet multi-sample-based signal-to-noise ratio enables objective assessment of the reliability of intra-batch and cross-batch metabolomics profiling in detecting intrinsic biological differences among the four groups of samples. Significant variations in the reliability of the metabolomics profiling are identified across laboratories. Importantly, ratio-based metabolomics profiling, by scaling the absolute values of a study sample relative to those of a common reference sample, enables cross-laboratory quantitative data integration. Thus, we construct the ratio-based high-confidence reference datasets between two reference samples, providing “ground truth” for inter-laboratory accuracy assessment, which enables objective evaluation of quantitative metabolomics profiling using various instruments and protocols. Conclusions Our study provides the community with rich resources and best practices for inter-laboratory proficiency tests and data integration, ensuring reliability of large-scale and longitudinal metabolomic studies.

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