Data Processing Thresholds for Abundance and Sparsity and Missed Biological Insights in an Untargeted Chemical Analysis of Blood Specimens for Exposomics

Background: An untargeted chemical analysis of bio-fluids provides semi-quantitative data for thousands of chemicals for expanding our understanding about relationships among metabolic pathways, diseases, phenotypes and exposures. During the processing of mass spectral and chromatography data, vario...

Full description

Bibliographic Details
Main Authors: Dinesh Kumar Barupal, Sadjad Fakouri Baygi, Robert O. Wright, Manish Arora
Format: Article
Language:English
Published: Frontiers Media S.A. 2021-06-01
Series:Frontiers in Public Health
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fpubh.2021.653599/full
id doaj-09b804d1f63448b1a45cea3a61cce9c9
record_format Article
spelling doaj-09b804d1f63448b1a45cea3a61cce9c92021-06-10T04:37:02ZengFrontiers Media S.A.Frontiers in Public Health2296-25652021-06-01910.3389/fpubh.2021.653599653599Data Processing Thresholds for Abundance and Sparsity and Missed Biological Insights in an Untargeted Chemical Analysis of Blood Specimens for ExposomicsDinesh Kumar BarupalSadjad Fakouri BaygiRobert O. WrightManish AroraBackground: An untargeted chemical analysis of bio-fluids provides semi-quantitative data for thousands of chemicals for expanding our understanding about relationships among metabolic pathways, diseases, phenotypes and exposures. During the processing of mass spectral and chromatography data, various signal thresholds are used to control the number of peaks in the final data matrix that is used for statistical analyses. However, commonly used stringent thresholds generate constrained data matrices which may under-represent the detected chemical space, leading to missed biological insights in the exposome research.Methods: We have re-analyzed a liquid chromatography high resolution mass spectrometry data set for a publicly available epidemiology study (n = 499) of human cord blood samples using the MS-DIAL software with minimally possible thresholds during the data processing steps. Peak list for individual files and the data matrix after alignment and gap-filling steps were summarized for different peak height and detection frequency thresholds. Correlations between birth weight and LC/MS peaks in the newly generated data matrix were computed using the spearman correlation coefficient.Results: MS-DIAL software detected on average 23,156 peaks for individual LC/MS file and 63,393 peaks in the aligned peak table. A combination of peak height and detection frequency thresholds that was used in the original publication at the individual file and the peak alignment levels can reject 90% peaks from the untargeted chemical analysis dataset that was generated by MS-DIAL. Correlation analysis for birth weight data suggested that up to 80% of the significantly associated peaks were rejected by the data processing thresholds that were used in the original publication. The re-analysis with minimum possible thresholds recovered metabolic insights about C19 steroids and hydroxy-acyl-carnitines and their relationships with birth weight.Conclusions: Data processing thresholds for peak height and detection frequencies at individual data file and at the alignment level should be used at minimal possible level or completely avoided for mining untargeted chemical analysis data in the exposome research for discovering new biomarkers and mechanisms.https://www.frontiersin.org/articles/10.3389/fpubh.2021.653599/fullLC/MSexposomemetabolomicsuntargeted chemical analysisbirth weight
collection DOAJ
language English
format Article
sources DOAJ
author Dinesh Kumar Barupal
Sadjad Fakouri Baygi
Robert O. Wright
Manish Arora
spellingShingle Dinesh Kumar Barupal
Sadjad Fakouri Baygi
Robert O. Wright
Manish Arora
Data Processing Thresholds for Abundance and Sparsity and Missed Biological Insights in an Untargeted Chemical Analysis of Blood Specimens for Exposomics
Frontiers in Public Health
LC/MS
exposome
metabolomics
untargeted chemical analysis
birth weight
author_facet Dinesh Kumar Barupal
Sadjad Fakouri Baygi
Robert O. Wright
Manish Arora
author_sort Dinesh Kumar Barupal
title Data Processing Thresholds for Abundance and Sparsity and Missed Biological Insights in an Untargeted Chemical Analysis of Blood Specimens for Exposomics
title_short Data Processing Thresholds for Abundance and Sparsity and Missed Biological Insights in an Untargeted Chemical Analysis of Blood Specimens for Exposomics
title_full Data Processing Thresholds for Abundance and Sparsity and Missed Biological Insights in an Untargeted Chemical Analysis of Blood Specimens for Exposomics
title_fullStr Data Processing Thresholds for Abundance and Sparsity and Missed Biological Insights in an Untargeted Chemical Analysis of Blood Specimens for Exposomics
title_full_unstemmed Data Processing Thresholds for Abundance and Sparsity and Missed Biological Insights in an Untargeted Chemical Analysis of Blood Specimens for Exposomics
title_sort data processing thresholds for abundance and sparsity and missed biological insights in an untargeted chemical analysis of blood specimens for exposomics
publisher Frontiers Media S.A.
series Frontiers in Public Health
issn 2296-2565
publishDate 2021-06-01
description Background: An untargeted chemical analysis of bio-fluids provides semi-quantitative data for thousands of chemicals for expanding our understanding about relationships among metabolic pathways, diseases, phenotypes and exposures. During the processing of mass spectral and chromatography data, various signal thresholds are used to control the number of peaks in the final data matrix that is used for statistical analyses. However, commonly used stringent thresholds generate constrained data matrices which may under-represent the detected chemical space, leading to missed biological insights in the exposome research.Methods: We have re-analyzed a liquid chromatography high resolution mass spectrometry data set for a publicly available epidemiology study (n = 499) of human cord blood samples using the MS-DIAL software with minimally possible thresholds during the data processing steps. Peak list for individual files and the data matrix after alignment and gap-filling steps were summarized for different peak height and detection frequency thresholds. Correlations between birth weight and LC/MS peaks in the newly generated data matrix were computed using the spearman correlation coefficient.Results: MS-DIAL software detected on average 23,156 peaks for individual LC/MS file and 63,393 peaks in the aligned peak table. A combination of peak height and detection frequency thresholds that was used in the original publication at the individual file and the peak alignment levels can reject 90% peaks from the untargeted chemical analysis dataset that was generated by MS-DIAL. Correlation analysis for birth weight data suggested that up to 80% of the significantly associated peaks were rejected by the data processing thresholds that were used in the original publication. The re-analysis with minimum possible thresholds recovered metabolic insights about C19 steroids and hydroxy-acyl-carnitines and their relationships with birth weight.Conclusions: Data processing thresholds for peak height and detection frequencies at individual data file and at the alignment level should be used at minimal possible level or completely avoided for mining untargeted chemical analysis data in the exposome research for discovering new biomarkers and mechanisms.
topic LC/MS
exposome
metabolomics
untargeted chemical analysis
birth weight
url https://www.frontiersin.org/articles/10.3389/fpubh.2021.653599/full
work_keys_str_mv AT dineshkumarbarupal dataprocessingthresholdsforabundanceandsparsityandmissedbiologicalinsightsinanuntargetedchemicalanalysisofbloodspecimensforexposomics
AT sadjadfakouribaygi dataprocessingthresholdsforabundanceandsparsityandmissedbiologicalinsightsinanuntargetedchemicalanalysisofbloodspecimensforexposomics
AT robertowright dataprocessingthresholdsforabundanceandsparsityandmissedbiologicalinsightsinanuntargetedchemicalanalysisofbloodspecimensforexposomics
AT manisharora dataprocessingthresholdsforabundanceandsparsityandmissedbiologicalinsightsinanuntargetedchemicalanalysisofbloodspecimensforexposomics
_version_ 1721386225602920448