Literature DB >> 34382643

A Metabolomic Aging Clock Using Human Cerebrospinal Fluid.

Nathan Hwangbo1, Xinyu Zhang2, Daniel Raftery2, Haiwei Gu2, Shu-Ching Hu3,4, Thomas J Montine5, Joseph F Quinn6,7, Kathryn A Chung6,7, Amie L Hiller6,7, Dongfang Wang2, Qiang Fei2, Lisa Bettcher2, Cyrus P Zabetian3,4, Elaine Peskind3,8, Gail Li3,8, Daniel E L Promislow9,10, Alexander Franks1.   

Abstract

Quantifying the physiology of aging is essential for improving our understanding of age-related disease and the heterogeneity of healthy aging. Recent studies have shown that, in regression models using "-omic" platforms to predict chronological age, residual variation in predicted age is correlated with health outcomes, and suggest that these "omic clocks" provide measures of biological age. This paper presents predictive models for age using metabolomic profiles of cerebrospinal fluid (CSF) from healthy human subjects and finds that metabolite and lipid data are generally able to predict chronological age within 10 years. We use these models to predict the age of a cohort of subjects with Alzheimer's and Parkinson's disease and find an increase in prediction error, potentially indicating that the relationship between the metabolome and chronological age differs with these diseases. However, evidence is not found to support the hypothesis that our models will consistently overpredict the age of these subjects. In our analysis of control subjects, we find the carnitine shuttle, sucrose, biopterin, vitamin E metabolism, tryptophan, and tyrosine to be the most associated with age. We showcase the potential usefulness of age prediction models in a small data set (n = 85) and discuss techniques for drift correction, missing data imputation, and regularized regression, which can be used to help mitigate the statistical challenges that commonly arise in this setting. To our knowledge, this work presents the first multivariate predictive metabolomic and lipidomic models for age using mass spectrometry analysis of CSF.
© The Author(s) 2021. Published by Oxford University Press on behalf of The Gerontological Society of America. All rights reserved. For permissions, please e-mail: journals.permissions@oup.com.

Entities:  

Keywords:  Aging clock; Biomarker; Cerebrospinal fluid; Metabolomics

Mesh:

Substances:

Year:  2022        PMID: 34382643      PMCID: PMC8974344          DOI: 10.1093/gerona/glab212

Source DB:  PubMed          Journal:  J Gerontol A Biol Sci Med Sci        ISSN: 1079-5006            Impact factor:   6.591


  49 in total

1.  GBA Variants are associated with a distinct pattern of cognitive deficits in Parkinson's disease.

Authors:  Ignacio F Mata; James B Leverenz; Daniel Weintraub; John Q Trojanowski; Alice Chen-Plotkin; Vivianna M Van Deerlin; Beate Ritz; Rebecca Rausch; Stewart A Factor; Cathy Wood-Siverio; Joseph F Quinn; Kathryn A Chung; Amie L Peterson-Hiller; Jennifer G Goldman; Glenn T Stebbins; Bryan Bernard; Alberto J Espay; Fredy J Revilla; Johnna Devoto; Liana S Rosenthal; Ted M Dawson; Marilyn S Albert; Debby Tsuang; Haley Huston; Dora Yearout; Shu-Ching Hu; Brenna A Cholerton; Thomas J Montine; Karen L Edwards; Cyrus P Zabetian
Journal:  Mov Disord       Date:  2015-08-21       Impact factor: 10.338

Review 2.  Aging Biomarkers: From Functional Tests to Multi-Omics Approaches.

Authors:  Ksenia S Kudryashova; Ksenia Burka; Anton Y Kulaga; Nataliya S Vorobyeva; Brian K Kennedy
Journal:  Proteomics       Date:  2020-03-11       Impact factor: 3.984

Review 3.  The relevance of the Lewy body to the pathogenesis of idiopathic Parkinson's disease.

Authors:  W R Gibb; A J Lees
Journal:  J Neurol Neurosurg Psychiatry       Date:  1988-06       Impact factor: 10.154

4.  Cerebrospinal fluid monoamine metabolites in 114 healthy individuals 18-88 years of age.

Authors:  K Blennow; A Wallin; C G Gottfries; I Karlsson; J E Månsson; I Skoog; C Wikkelsö; L Svennerholm
Journal:  Eur Neuropsychopharmacol       Date:  1993-03       Impact factor: 4.600

5.  Five Easy Metrics of Data Quality for LC-MS-Based Global Metabolomics.

Authors:  Xinyu Zhang; Jiyang Dong; Daniel Raftery
Journal:  Anal Chem       Date:  2020-09-14       Impact factor: 6.986

6.  1H NMR metabolomics study of age profiling in children.

Authors:  Haiwei Gu; Zhengzheng Pan; Bowei Xi; Bryan E Hainline; Narasimhamurthy Shanaiah; Vincent Asiago; G A Nagana Gowda; Daniel Raftery
Journal:  NMR Biomed       Date:  2009-10       Impact factor: 4.044

Review 7.  Tryptophan metabolism: entering the field of aging and age-related pathologies.

Authors:  Annemieke T van der Goot; Ellen A A Nollen
Journal:  Trends Mol Med       Date:  2013-04-02       Impact factor: 11.951

8.  The effects of age and dietary restriction on the tissue-specific metabolome of Drosophila.

Authors:  Matthew J Laye; ViLinh Tran; Dean P Jones; Pankaj Kapahi; Daniel E L Promislow
Journal:  Aging Cell       Date:  2015-06-18       Impact factor: 9.304

9.  Increased epigenetic age and granulocyte counts in the blood of Parkinson's disease patients.

Authors:  Steve Horvath; Beate R Ritz
Journal:  Aging (Albany NY)       Date:  2015-12       Impact factor: 5.682

10.  DNA methylation-based measures of biological age: meta-analysis predicting time to death.

Authors:  Brian H Chen; Riccardo E Marioni; Elena Colicino; Marjolein J Peters; Cavin K Ward-Caviness; Pei-Chien Tsai; Nicholas S Roetker; Allan C Just; Ellen W Demerath; Weihua Guan; Jan Bressler; Myriam Fornage; Stephanie Studenski; Amy R Vandiver; Ann Zenobia Moore; Toshiko Tanaka; Douglas P Kiel; Liming Liang; Pantel Vokonas; Joel Schwartz; Kathryn L Lunetta; Joanne M Murabito; Stefania Bandinelli; Dena G Hernandez; David Melzer; Michael Nalls; Luke C Pilling; Timothy R Price; Andrew B Singleton; Christian Gieger; Rolf Holle; Anja Kretschmer; Florian Kronenberg; Sonja Kunze; Jakob Linseisen; Christine Meisinger; Wolfgang Rathmann; Melanie Waldenberger; Peter M Visscher; Sonia Shah; Naomi R Wray; Allan F McRae; Oscar H Franco; Albert Hofman; André G Uitterlinden; Devin Absher; Themistocles Assimes; Morgan E Levine; Ake T Lu; Philip S Tsao; Lifang Hou; JoAnn E Manson; Cara L Carty; Andrea Z LaCroix; Alexander P Reiner; Tim D Spector; Andrew P Feinberg; Daniel Levy; Andrea Baccarelli; Joyce van Meurs; Jordana T Bell; Annette Peters; Ian J Deary; James S Pankow; Luigi Ferrucci; Steve Horvath
Journal:  Aging (Albany NY)       Date:  2016-09-28       Impact factor: 5.682

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  4 in total

Review 1.  Recent Advances in Studying Age-Associated Lipids Alterations and Dietary Interventions in Mammals.

Authors:  Benedikt Gille; Christina E Galuska; Beate Fuchs; Shahaf Peleg
Journal:  Front Aging       Date:  2021-11-19

2.  LipidClock: A Lipid-Based Predictor of Biological Age.

Authors:  Maximilian Unfried; Li Fang Ng; Amaury Cazenave-Gassiot; Krishna Chaithanya Batchu; Brian K Kennedy; Markus R Wenk; Nicholas Tolwinski; Jan Gruber
Journal:  Front Aging       Date:  2022-05-27

3.  Predictive Modeling of Alzheimer's and Parkinson's Disease Using Metabolomic and Lipidomic Profiles from Cerebrospinal Fluid.

Authors:  Nathan Hwangbo; Xinyu Zhang; Daniel Raftery; Haiwei Gu; Shu-Ching Hu; Thomas J Montine; Joseph F Quinn; Kathryn A Chung; Amie L Hiller; Dongfang Wang; Qiang Fei; Lisa Bettcher; Cyrus P Zabetian; Elaine R Peskind; Ge Li; Daniel E L Promislow; Marie Y Davis; Alexander Franks
Journal:  Metabolites       Date:  2022-03-22

Review 4.  Utilization of Host and Microbiome Features in Determination of Biological Aging.

Authors:  Karina Ratiner; Suhaib K Abdeen; Kim Goldenberg; Eran Elinav
Journal:  Microorganisms       Date:  2022-03-21
  4 in total

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