An inflammatory aging clock (iAge) based on deep learning tracks multimorbidity, immunosenescence, frailty and cardiovascular aging

被引:0
|
作者
Nazish Sayed
Yingxiang Huang
Khiem Nguyen
Zuzana Krejciova-Rajaniemi
Anissa P. Grawe
Tianxiang Gao
Robert Tibshirani
Trevor Hastie
Ayelet Alpert
Lu Cui
Tatiana Kuznetsova
Yael Rosenberg-Hasson
Rita Ostan
Daniela Monti
Benoit Lehallier
Shai S. Shen-Orr
Holden T. Maecker
Cornelia L. Dekker
Tony Wyss-Coray
Claudio Franceschi
Vladimir Jojic
François Haddad
José G. Montoya
Joseph C. Wu
Mark M. Davis
David Furman
机构
[1] Stanford University School of Medicine,Stanford 1000 Immunomes Project
[2] Stanford University School of Medicine,Stanford Cardiovascular Institute
[3] Stanford University School of Medicine,Department of Surgery, Division of Vascular Surgery
[4] Buck Artificial Intelligence Platform,Department of Computer Science
[5] the Buck Institute for Research on Aging,Department of Statistics and Department of Biomedical Data Science
[6] Edifice Health Inc.,Faculty of Medicine
[7] University of North Carolina,Department of Pathology
[8] Stanford University School of Medicine,Research Unit Hypertension and Cardiovascular Epidemiology, KU Leuven Department of Cardiovascular Sciences
[9] Technion,Human Immune Monitoring Center, Institute for Immunity, Transplantation and Infection
[10] Israel Institute of Technology,Interdepartmental Centre L. Galvani (CIG), Alma Mater Studiorum
[11] Stanford University School of Medicine,Department of Experimental Clinical and Biomedical Sciences, Mario Serio
[12] University of Leuven,Department of Neurology and Neurological Sciences
[13] Stanford University School of Medicine,Division of Pediatric Infectious Diseases
[14] University of Bologna,Institute for Immunity, Transplantation and Infection
[15] University of Florence,Paul F. Glenn Center for Aging Research
[16] Stanford School of Medicine,Institute of Information Technologies, Mathematics and Mechanics
[17] Stanford University School of Medicine,Department of Medicine
[18] Stanford University School of Medicine,Division of Cardiovascular Medicine
[19] Stanford University School of Medicine,Howard Hughes Medical Institute
[20] Lobachevsky University,Austral Institute for Applied Artificial Intelligence, Institute for Research in Translational Medicine (IIMT)
[21] Calico Life Sciences L.L.C,undefined
[22] Stanford University School of Medicine,undefined
[23] Stanford University School of Medicine,undefined
[24] Stanford University School of Medicine,undefined
[25] Universidad Austral,undefined
[26] CONICET,undefined
[27] Pilar,undefined
来源
Nature Aging | 2021年 / 1卷
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摘要
While many diseases of aging have been linked to the immunological system, immune metrics capable of identifying the most at-risk individuals are lacking. From the blood immunome of 1,001 individuals aged 8–96 years, we developed a deep-learning method based on patterns of systemic age-related inflammation. The resulting inflammatory clock of aging (iAge) tracked with multimorbidity, immunosenescence, frailty and cardiovascular aging, and is also associated with exceptional longevity in centenarians. The strongest contributor to iAge was the chemokine CXCL9, which was involved in cardiac aging, adverse cardiac remodeling and poor vascular function. Furthermore, aging endothelial cells in human and mice show loss of function, cellular senescence and hallmark phenotypes of arterial stiffness, all of which are reversed by silencing CXCL9. In conclusion, we identify a key role of CXCL9 in age-related chronic inflammation and derive a metric for multimorbidity that can be utilized for the early detection of age-related clinical phenotypes.
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页码:598 / 615
页数:17
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