Metabolic network failures in Alzheimer's disease: A biochemical road map

Jon B. Toledo(Methodist Hospital), Matthias Arnold(Helmholtz Zentrum München), Gabi Kastenmüller(Helmholtz Zentrum München), Rui Chang(Icahn School of Medicine at Mount Sinai), Rebecca Baillie(Rosa (United States)), Xianlin Han(Sanford Burnham Prebys Medical Discovery Institute), Madhav Thambisetty(National Institutes of Health), Jessica D. Tenenbaum(Duke University), Karsten Suhre(Helmholtz Zentrum München), Paul M. Thompson(Duke University), Lisa St. John‐Williams(Duke University), Siamak MahmoudianDehkordi(North Carolina State University), Daniel M. Rotroff(North Carolina State University), John Jack(North Carolina State University), Alison A. Motsinger‐Reif(North Carolina State University), Shannon L. Risacher(Indiana University School of Medicine), Colette Blach(Duke University), Joseph E. Lucas(Duke University), Tyler Massaro(Duke University), Gregory Louie(Duke University), Hongjie Zhu(Duke University), Guido Dallmann(Biocrates Life Sciences (Austria)), Kristaps Klavins(Biocrates Life Sciences (Austria)), Therese Koal(Biocrates Life Sciences (Austria)), Sungeun Kim(Indiana University School of Medicine), Kwangsik Nho(Indiana University School of Medicine), Li Shen(Indiana University School of Medicine), Ramon Casanova(National Institutes of Health), Sudhir Varma(National Institutes of Health), Cristina Legido‐Quigley(King's College - North Carolina), M. Arthur Moseley(Duke University), Kuixi Zhu(Icahn School of Medicine at Mount Sinai), Marc Henrion(Icahn School of Medicine at Mount Sinai), Sven J. van der Lee(Erasmus MC), Amy C. Harms(Leiden University), Ayşe Demirkan(Erasmus MC), Thomas Hankemeier(Leiden University), Cornelia M. van Duijn(Leiden University), John Q. Trojanowski(University of Pennsylvania), Leslie M. Shaw(University of Pennsylvania), Andrew J. Saykin(Indiana University School of Medicine), Michael W. Weiner(San Francisco VA Medical Center), P. Murali Doraiswamy(Duke University), Rima Kaddurah‐Daouk(Duke University)
Alzheimer s & Dementia
March 21, 2017
Cited by 489Open Access
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Abstract

Abstract Introduction The Alzheimer's Disease Research Summits of 2012 and 2015 incorporated experts from academia, industry, and nonprofit organizations to develop new research directions to transform our understanding of Alzheimer's disease (AD) and propel the development of critically needed therapies. In response to their recommendations, big data at multiple levels are being generated and integrated to study network failures in disease. We used metabolomics as a global biochemical approach to identify peripheral metabolic changes in AD patients and correlate them to cerebrospinal fluid pathology markers, imaging features, and cognitive performance. Methods Fasting serum samples from the Alzheimer's Disease Neuroimaging Initiative (199 control, 356 mild cognitive impairment, and 175 AD participants) were analyzed using the AbsoluteIDQ‐p180 kit. Performance was validated in blinded replicates, and values were medication adjusted. Results Multivariable‐adjusted analyses showed that sphingomyelins and ether‐containing phosphatidylcholines were altered in preclinical biomarker‐defined AD stages, whereas acylcarnitines and several amines, including the branched‐chain amino acid valine and α‐aminoadipic acid, changed in symptomatic stages. Several of the analytes showed consistent associations in the Rotterdam, Erasmus Rucphen Family, and Indiana Memory and Aging Studies. Partial correlation networks constructed for Aβ 1–42 , tau, imaging, and cognitive changes provided initial biochemical insights for disease‐related processes. Coexpression networks interconnected key metabolic effectors of disease. Discussion Metabolomics identified key disease‐related metabolic changes and disease‐progression‐related changes. Defining metabolic changes during AD disease trajectory and its relationship to clinical phenotypes provides a powerful roadmap for drug and biomarker discovery.


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