Metabolites (May 2020)

Cross-Omics: Integrating Genomics with Metabolomics in Clinical Diagnostics

  • Marten H. P. M. Kerkhofs,
  • Hanneke A. Haijes,
  • A. Marcel Willemsen,
  • Koen L. I. van Gassen,
  • Maria van der Ham,
  • Johan Gerrits,
  • Monique G. M. de Sain-van der Velden,
  • Hubertus C. M. T. Prinsen,
  • Hanneke W. M. van Deutekom,
  • Peter M. van Hasselt,
  • Nanda M. Verhoeven-Duif,
  • Judith J. M. Jans

DOI
https://doi.org/10.3390/metabo10050206
Journal volume & issue
Vol. 10, no. 5
p. 206

Abstract

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Next-generation sequencing and next-generation metabolic screening are, independently, increasingly applied in clinical diagnostics of inborn errors of metabolism (IEM). Integrated into a single bioinformatic method, these two –omics technologies can potentially further improve the diagnostic yield for IEM. Here, we present cross-omics: a method that uses untargeted metabolomics results of patient’s dried blood spots (DBSs), indicated by Z-scores and mapped onto human metabolic pathways, to prioritize potentially affected genes. We demonstrate the optimization of three parameters: (1) maximum distance to the primary reaction of the affected protein, (2) an extension stringency threshold reflecting in how many reactions a metabolite can participate, to be able to extend the metabolite set associated with a certain gene, and (3) a biochemical stringency threshold reflecting paired Z-score thresholds for untargeted metabolomics results. Patients with known IEMs were included. We performed untargeted metabolomics on 168 DBSs of 97 patients with 46 different disease-causing genes, and we simulated their whole-exome sequencing results in silico. We showed that for accurate prioritization of disease-causing genes in IEM, it is essential to take into account not only the primary reaction of the affected protein but a larger network of potentially affected metabolites, multiple steps away from the primary reaction.

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