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Machine Learning Methods Improve Specificity in Newborn Screening for Isovaleric Aciduria

Isovaleric aciduria (IVA) is a rare disorder of leucine metabolism and part of newborn screening (NBS) programs worldwide. However, NBS for IVA is hampered by, first, the increased birth prevalence due to the identification of individuals with an attenuated disease variant (so-called “mild” IVA) and...

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Autores principales: Zaunseder, Elaine, Mütze, Ulrike, Garbade, Sven F., Haupt, Saskia, Feyh, Patrik, Hoffmann, Georg F., Heuveline, Vincent, Kölker, Stefan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9962193/
https://www.ncbi.nlm.nih.gov/pubmed/36837923
http://dx.doi.org/10.3390/metabo13020304
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author Zaunseder, Elaine
Mütze, Ulrike
Garbade, Sven F.
Haupt, Saskia
Feyh, Patrik
Hoffmann, Georg F.
Heuveline, Vincent
Kölker, Stefan
author_facet Zaunseder, Elaine
Mütze, Ulrike
Garbade, Sven F.
Haupt, Saskia
Feyh, Patrik
Hoffmann, Georg F.
Heuveline, Vincent
Kölker, Stefan
author_sort Zaunseder, Elaine
collection PubMed
description Isovaleric aciduria (IVA) is a rare disorder of leucine metabolism and part of newborn screening (NBS) programs worldwide. However, NBS for IVA is hampered by, first, the increased birth prevalence due to the identification of individuals with an attenuated disease variant (so-called “mild” IVA) and, second, an increasing number of false positive screening results due to the use of pivmecillinam contained in the medication. Recently, machine learning (ML) methods have been analyzed, analogous to new biomarkers or second-tier methods, in the context of NBS. In this study, we investigated the application of machine learning classification methods to improve IVA classification using an NBS data set containing 2,106,090 newborns screened in Heidelberg, Germany. Therefore, we propose to combine two methods, linear discriminant analysis, and ridge logistic regression as an additional step, a digital-tier, to traditional NBS. Our results show that this reduces the false positive rate by [Formula: see text] from 103 to 31 while maintaining [Formula: see text] sensitivity in cross-validation. The ML methods were able to classify mild and classic IVA from normal newborns solely based on the NBS data and revealed that besides isovalerylcarnitine (C5), the metabolite concentration of tryptophan (Trp) is important for improved classification. Overall, applying ML methods to improve the specificity of IVA could have a major impact on newborns, as it could reduce the newborns’ and families’ burden of false positives or over-treatment.
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spelling pubmed-99621932023-02-26 Machine Learning Methods Improve Specificity in Newborn Screening for Isovaleric Aciduria Zaunseder, Elaine Mütze, Ulrike Garbade, Sven F. Haupt, Saskia Feyh, Patrik Hoffmann, Georg F. Heuveline, Vincent Kölker, Stefan Metabolites Article Isovaleric aciduria (IVA) is a rare disorder of leucine metabolism and part of newborn screening (NBS) programs worldwide. However, NBS for IVA is hampered by, first, the increased birth prevalence due to the identification of individuals with an attenuated disease variant (so-called “mild” IVA) and, second, an increasing number of false positive screening results due to the use of pivmecillinam contained in the medication. Recently, machine learning (ML) methods have been analyzed, analogous to new biomarkers or second-tier methods, in the context of NBS. In this study, we investigated the application of machine learning classification methods to improve IVA classification using an NBS data set containing 2,106,090 newborns screened in Heidelberg, Germany. Therefore, we propose to combine two methods, linear discriminant analysis, and ridge logistic regression as an additional step, a digital-tier, to traditional NBS. Our results show that this reduces the false positive rate by [Formula: see text] from 103 to 31 while maintaining [Formula: see text] sensitivity in cross-validation. The ML methods were able to classify mild and classic IVA from normal newborns solely based on the NBS data and revealed that besides isovalerylcarnitine (C5), the metabolite concentration of tryptophan (Trp) is important for improved classification. Overall, applying ML methods to improve the specificity of IVA could have a major impact on newborns, as it could reduce the newborns’ and families’ burden of false positives or over-treatment. MDPI 2023-02-18 /pmc/articles/PMC9962193/ /pubmed/36837923 http://dx.doi.org/10.3390/metabo13020304 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Zaunseder, Elaine
Mütze, Ulrike
Garbade, Sven F.
Haupt, Saskia
Feyh, Patrik
Hoffmann, Georg F.
Heuveline, Vincent
Kölker, Stefan
Machine Learning Methods Improve Specificity in Newborn Screening for Isovaleric Aciduria
title Machine Learning Methods Improve Specificity in Newborn Screening for Isovaleric Aciduria
title_full Machine Learning Methods Improve Specificity in Newborn Screening for Isovaleric Aciduria
title_fullStr Machine Learning Methods Improve Specificity in Newborn Screening for Isovaleric Aciduria
title_full_unstemmed Machine Learning Methods Improve Specificity in Newborn Screening for Isovaleric Aciduria
title_short Machine Learning Methods Improve Specificity in Newborn Screening for Isovaleric Aciduria
title_sort machine learning methods improve specificity in newborn screening for isovaleric aciduria
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9962193/
https://www.ncbi.nlm.nih.gov/pubmed/36837923
http://dx.doi.org/10.3390/metabo13020304
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