Ontology-based metabolomics data integration with quality control

Bioanalysis. 2019 Jun;11(12):1139-1155. doi: 10.4155/bio-2018-0303. Epub 2019 Jun 10.

Abstract

Aim: The complications that arise when performing meta-analysis of datasets from multiple metabolomics studies are addressed with computational methods that ensure data quality, completeness of metadata and accurate interpretation across studies. Results & methodology: This paper presents an integrated system of quality control (QC) methods to assess metabolomics results by evaluating the data acquisition strategies and metabolite identification process when integrating datasets for meta-analysis. An ontology knowledge base and a rule-based system representing the experiment and chemical background information direct the processes involved in data integration and QC verification. A diabetes meta-analysis study using these QC methods finds putative biomarkers that differ between cohorts. Conclusion: The methods presented here ensure the validity of meta-analysis when integrating data from different metabolic profiling studies.

Keywords: data integration; diabetes use case; meta-analysis; metabolomics; ontology-based expert system; quality control.

MeSH terms

  • Biological Ontologies*
  • Data Analysis*
  • Diabetes Mellitus / metabolism
  • Humans
  • Metabolomics / methods*
  • Quality Control