Metabolomics Analytics Workflow for Epidemiological Research: Perspectives from the Consortium of Metabolomics Studies (COMETS)
Mary C. Playdon; Amit D. Joshi; Fred K. Tabung; Susan Cheng; Mir Henglin; Andy Kim; Tengda Lin; Eline H. van Roekel; Jiaqi Huang; Jan Krumsiek; Ying Wang; Ewy Mathé; Marinella Temprosa; Steven Moore; Bo Chawes; A. Heather Eliassen; Andrea Gsur; Marc J. Gunter; Sei Harada; Claudia Langenberg; Matej Oresic; Wei Perng; Wei Jie Seow; Oana A. Zeleznik
Metabolomics Analytics Workflow for Epidemiological Research: Perspectives from the Consortium of Metabolomics Studies (COMETS)
Mary C. Playdon
Amit D. Joshi
Fred K. Tabung
Susan Cheng
Mir Henglin
Andy Kim
Tengda Lin
Eline H. van Roekel
Jiaqi Huang
Jan Krumsiek
Ying Wang
Ewy Mathé
Marinella Temprosa
Steven Moore
Bo Chawes
A. Heather Eliassen
Andrea Gsur
Marc J. Gunter
Sei Harada
Claudia Langenberg
Matej Oresic
Wei Perng
Wei Jie Seow
Oana A. Zeleznik
MDPI
Julkaisun pysyvä osoite on:
https://urn.fi/URN:NBN:fi-fe2021042824212
https://urn.fi/URN:NBN:fi-fe2021042824212
Tiivistelmä
The application of metabolomics technology to epidemiological studies is emerging as a new approach to elucidate disease etiology and for biomarker discovery. However, analysis of metabolomics data is complex and there is an urgent need for the standardization of analysis workflow and reporting of study findings. To inform the development of such guidelines, we conducted a survey of 47 cohort representatives from the Consortium of Metabolomics Studies (COMETS) to gain insights into the current strategies and procedures used for analyzing metabolomics data in epidemiological studies worldwide. The results indicated a variety of applied analytical strategies, from biospecimen and data pre-processing and quality control to statistical analysis and reporting of study findings. These strategies included methods commonly used within the metabolomics community and applied in epidemiological research, as well as novel approaches to pre-processing pipelines and data analysis. To help with these discrepancies, we propose use of open-source initiatives such as the online web-based tool COMETS Analytics, which includes helpful tools to guide analytical workflow and the standardized reporting of findings from metabolomics analyses within epidemiological studies. Ultimately, this will improve the quality of statistical analyses, research findings, and study reproducibility.
Kokoelmat
- Rinnakkaistallenteet [29337]
