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Elemental Dynamics in Hair Accurately Predict Future Autism Spectrum Disorder Diagnosis: An International Multi-Center Study

Christine Austin, Paul Curtin, Manish Arora, Abraham Reichenberg, Austen Curtin, Miyuki Iwai‐Shimada, Robert O. Wright, Rosalind J. Wright, Karl Lundin Remnélius, Johan Isaksson, Sven Bölte, Shoji F. Nakayama

2022Journal of Clinical Medicine15 citationsDOIOpen Access PDF

Abstract

Autism spectrum disorder (ASD) is a neurodevelopmental condition diagnosed in approximately 2% of children. Reliance on the emergence of clinically observable behavioral patterns only delays the mean age of diagnosis to approximately 4 years. However, neural pathways critical to language and social functions develop during infancy, and current diagnostic protocols miss the age when therapy would be most effective. We developed non-invasive ASD biomarkers using mass spectrometry analyses of elemental metabolism in single hair strands, coupled with machine learning. We undertook a national prospective study in Japan, where hair samples were collected at 1 month and clinical diagnosis was undertaken at 4 years. Next, we analyzed a national sample of Swedish twins and, in our third study, participants from a specialist ASD center in the US. In a blinded analysis, a predictive algorithm detected ASD risk as early as 1 month with 96.4% sensitivity, 75.4% specificity, and 81.4% accuracy (n = 486; 175 cases). These findings emphasize that the dynamics in elemental metabolism are systemically dysregulated in autism, and these signatures can be detected and leveraged in hair samples to predict the emergence of ASD as early as 1 month of age.

Topics & Concepts

Autism spectrum disorderMedicineAutismPediatricsProspective cohort studyAudiologyPsychiatryPathologyAutism Spectrum Disorder ResearchBiotin and Related StudiesRNA regulation and disease
Elemental Dynamics in Hair Accurately Predict Future Autism Spectrum Disorder Diagnosis: An International Multi-Center Study | Litcius