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Comparison of Untargeted Metabolomic Profiling vs Traditional Metabolic Screening to Identify Inborn Errors of Metabolism

IMPORTANCE: Recent advances in newborn screening (NBS) have improved the diagnosis of inborn errors of metabolism (IEMs); however, many potentially treatable IEMs are not included on NBS panels, nor are they covered in standard, first-line biochemical testing. OBJECTIVE: To examine the utility of un...

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Autores principales: Liu, Ning, Xiao, Jing, Gijavanekar, Charul, Pappan, Kirk L., Glinton, Kevin E., Shayota, Brian J., Kennedy, Adam D., Sun, Qin, Sutton, V. Reid, Elsea, Sarah H.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Medical Association 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8276086/
https://www.ncbi.nlm.nih.gov/pubmed/34251446
http://dx.doi.org/10.1001/jamanetworkopen.2021.14155
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author Liu, Ning
Xiao, Jing
Gijavanekar, Charul
Pappan, Kirk L.
Glinton, Kevin E.
Shayota, Brian J.
Kennedy, Adam D.
Sun, Qin
Sutton, V. Reid
Elsea, Sarah H.
author_facet Liu, Ning
Xiao, Jing
Gijavanekar, Charul
Pappan, Kirk L.
Glinton, Kevin E.
Shayota, Brian J.
Kennedy, Adam D.
Sun, Qin
Sutton, V. Reid
Elsea, Sarah H.
author_sort Liu, Ning
collection PubMed
description IMPORTANCE: Recent advances in newborn screening (NBS) have improved the diagnosis of inborn errors of metabolism (IEMs); however, many potentially treatable IEMs are not included on NBS panels, nor are they covered in standard, first-line biochemical testing. OBJECTIVE: To examine the utility of untargeted metabolomics as a primary screening tool for IEMs by comparing the diagnostic rate of clinical metabolomics with the recommended traditional metabolic screening approach. DESIGN, SETTING, AND PARTICIPANTS: This cross-sectional study compares data from 4464 clinical samples received from 1483 unrelated families referred for trio testing of plasma amino acids, plasma acylcarnitine profiling, and urine organic acids (June 2014 to October 2018) and 2000 consecutive plasma samples from 1807 unrelated families (July 2014 to February 2019) received for clinical metabolomic screening at a College of American Pathologists and Clinical Laboratory Improvement Amendments–certified biochemical genetics laboratory. Data analysis was performed from September 2019 to August 2020. EXPOSURES: Metabolic and molecular tests performed at a genetic testing reference laboratory in the US and available clinical information for each patient were assessed to determine diagnostic rate. MAIN OUTCOMES AND MEASURES: The diagnostic rate of traditional metabolic screening compared with clinical metabolomic profiling was assessed in the context of expanded NBS. RESULTS: Of 1483 cases screened by the traditional approach, 912 patients (61.5%) were male and 1465 (98.8%) were pediatric (mean [SD] age, 4.1 [6.0] years; range, 0-65 years). A total of 19 families were identified with IEMs, resulting in a 1.3% diagnostic rate. A total of 14 IEMs were detected, including 3 conditions not included in the Recommended Uniform Screening Panel for NBS. Of the 1807 unrelated families undergoing plasma metabolomic profiling, 1059 patients (58.6%) were male, and 1665 (92.1%) were pediatric (mean [SD] age, 8.1 [10.4] years; range, 0-80 years). Screening identified 128 unique cases with IEMs, giving an overall diagnostic rate of 7.1%. In total, 70 different metabolic conditions were identified, including 49 conditions not presently included on the Recommended Uniform Screening Panel for NBS. CONCLUSIONS AND RELEVANCE: These findings suggest that untargeted metabolomics provided a 6-fold higher diagnostic yield compared with the conventional screening approach and identified a broader spectrum of IEMs. Notably, with the expansion of NBS programs, traditional metabolic testing approaches identify few disorders beyond those covered on the NBS. These data support the capability of clinical untargeted metabolomics in screening for IEMs and suggest that broader screening approaches should be considered in the initial evaluation for metabolic disorders.
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spelling pubmed-82760862021-07-19 Comparison of Untargeted Metabolomic Profiling vs Traditional Metabolic Screening to Identify Inborn Errors of Metabolism Liu, Ning Xiao, Jing Gijavanekar, Charul Pappan, Kirk L. Glinton, Kevin E. Shayota, Brian J. Kennedy, Adam D. Sun, Qin Sutton, V. Reid Elsea, Sarah H. JAMA Netw Open Original Investigation IMPORTANCE: Recent advances in newborn screening (NBS) have improved the diagnosis of inborn errors of metabolism (IEMs); however, many potentially treatable IEMs are not included on NBS panels, nor are they covered in standard, first-line biochemical testing. OBJECTIVE: To examine the utility of untargeted metabolomics as a primary screening tool for IEMs by comparing the diagnostic rate of clinical metabolomics with the recommended traditional metabolic screening approach. DESIGN, SETTING, AND PARTICIPANTS: This cross-sectional study compares data from 4464 clinical samples received from 1483 unrelated families referred for trio testing of plasma amino acids, plasma acylcarnitine profiling, and urine organic acids (June 2014 to October 2018) and 2000 consecutive plasma samples from 1807 unrelated families (July 2014 to February 2019) received for clinical metabolomic screening at a College of American Pathologists and Clinical Laboratory Improvement Amendments–certified biochemical genetics laboratory. Data analysis was performed from September 2019 to August 2020. EXPOSURES: Metabolic and molecular tests performed at a genetic testing reference laboratory in the US and available clinical information for each patient were assessed to determine diagnostic rate. MAIN OUTCOMES AND MEASURES: The diagnostic rate of traditional metabolic screening compared with clinical metabolomic profiling was assessed in the context of expanded NBS. RESULTS: Of 1483 cases screened by the traditional approach, 912 patients (61.5%) were male and 1465 (98.8%) were pediatric (mean [SD] age, 4.1 [6.0] years; range, 0-65 years). A total of 19 families were identified with IEMs, resulting in a 1.3% diagnostic rate. A total of 14 IEMs were detected, including 3 conditions not included in the Recommended Uniform Screening Panel for NBS. Of the 1807 unrelated families undergoing plasma metabolomic profiling, 1059 patients (58.6%) were male, and 1665 (92.1%) were pediatric (mean [SD] age, 8.1 [10.4] years; range, 0-80 years). Screening identified 128 unique cases with IEMs, giving an overall diagnostic rate of 7.1%. In total, 70 different metabolic conditions were identified, including 49 conditions not presently included on the Recommended Uniform Screening Panel for NBS. CONCLUSIONS AND RELEVANCE: These findings suggest that untargeted metabolomics provided a 6-fold higher diagnostic yield compared with the conventional screening approach and identified a broader spectrum of IEMs. Notably, with the expansion of NBS programs, traditional metabolic testing approaches identify few disorders beyond those covered on the NBS. These data support the capability of clinical untargeted metabolomics in screening for IEMs and suggest that broader screening approaches should be considered in the initial evaluation for metabolic disorders. American Medical Association 2021-07-12 /pmc/articles/PMC8276086/ /pubmed/34251446 http://dx.doi.org/10.1001/jamanetworkopen.2021.14155 Text en Copyright 2021 Liu N et al. JAMA Network Open. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the CC-BY License.
spellingShingle Original Investigation
Liu, Ning
Xiao, Jing
Gijavanekar, Charul
Pappan, Kirk L.
Glinton, Kevin E.
Shayota, Brian J.
Kennedy, Adam D.
Sun, Qin
Sutton, V. Reid
Elsea, Sarah H.
Comparison of Untargeted Metabolomic Profiling vs Traditional Metabolic Screening to Identify Inborn Errors of Metabolism
title Comparison of Untargeted Metabolomic Profiling vs Traditional Metabolic Screening to Identify Inborn Errors of Metabolism
title_full Comparison of Untargeted Metabolomic Profiling vs Traditional Metabolic Screening to Identify Inborn Errors of Metabolism
title_fullStr Comparison of Untargeted Metabolomic Profiling vs Traditional Metabolic Screening to Identify Inborn Errors of Metabolism
title_full_unstemmed Comparison of Untargeted Metabolomic Profiling vs Traditional Metabolic Screening to Identify Inborn Errors of Metabolism
title_short Comparison of Untargeted Metabolomic Profiling vs Traditional Metabolic Screening to Identify Inborn Errors of Metabolism
title_sort comparison of untargeted metabolomic profiling vs traditional metabolic screening to identify inborn errors of metabolism
topic Original Investigation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8276086/
https://www.ncbi.nlm.nih.gov/pubmed/34251446
http://dx.doi.org/10.1001/jamanetworkopen.2021.14155
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