Is an MRI-derived anatomical measure of dementia risk also a measure of brain aging?

Higgins-Chen AT, Thrush KL, Levine ME. Aging biomarkers and the brain. Semin Cell Dev Biol. 2021;116:180–93.

CAS  PubMed  PubMed Central  Article  Google Scholar 

Casanova R, Hsu FC, Sink KM, Rapp SR, Williamson JD, Resnick SM, Espeland MA, Alzheimer’s Disease Neuroimaging I. Alzheimer’s disease risk assessment using large-scale machine learning methods. PLoS ONE. 2013;8: e77949.

CAS  PubMed  PubMed Central  Article  Google Scholar 

Espeland MA, Chen JC, Weitlauf J, Hayden KM, Rapp SR, Resnick SM, Garcia L, Cannell B, Baker LD, Sachs BC, Tindle HA, Wallace R, Casanova R, Women’s Health Initiative Memory Study Magnetic Resonance Imaging Study G. Trajectories of relative performance with 2 measures of global cognitive function. J Am Geriatr Soc. 2018;66:1575–80.

Article  Google Scholar 

Espeland MA, Luchsinger JA, Neiberg RH, Carmichael O, Laurienti PJ, Pi-Sunyer X, Wing RR, Cook D, Horton E, Casanova R, Erickson K, Nick Bryan R, Action for Health in Diabetes Brain Magnetic Resonance Imaging Research G. Long term effect of intensive lifestyle intervention on cerebral blood flow. J Am Geriatr Soc. 2018;66:120–6.

Article  Google Scholar 

Younan D, Petkus AJ, Widaman KF, Wang X, Casanova R, Espeland MA, Gatz M, Henderson VW, Manson JE, Rapp SR, Sachs BC, Serre ML, Gaussoin SA, Barnard R, Saldana S, Vizuete W, Beavers DP, Salinas JA, Chui HC, Resnick SM, Shumaker SA, Chen JC. Particulate matter and episodic memory decline mediated by early neuroanatomic biomarkers of Alzheimer’s disease. Brain. 2020;143:289–302.

PubMed  Article  Google Scholar 

Younan D, Wang X, Casanova R, Barnard R, Gaussoin SA, Saldana S, Petkus AJ, Beavers DP, Resnick SM, Manson JE, Serre ML, Vizuete W, Henderson VW, Sachs BC, Salinas JA, Gatz M, Espeland MA, Chui HC, Shumaker SA, Rapp SR, Chen JC PM2.5 associated with gray matter atrophy reflecting increased Alzheimers risk in older women. Neurology. 2020.

Casanova R, Hsu FC, Barnard RT, Anderson AM, Talluri R, Whitlow CT, Hughes TM, Griswold M, Hayden KM, Gottesman RF, Wagenknecht LE. Comparing data-driven and hypothesis-driven MRI-based predictors of cognitive impairment in individuals from the Atherosclerosis Risk in Communities (ARIC) study. Alzheimers Dement. 2022;18:561–71.

CAS  PubMed  Article  Google Scholar 

Kennedy BK, Berger SL, Brunet A, Campisi J, Cuervo AM, Epel ES, Franceschi C, Lithgow GJ, Morimoto RI, Pessin JE, Rando TA, Richardson A, Schadt EE, Wyss-Coray T, Sierra F. Geroscience: linking aging to chronic disease. Cell. 2014;159:709–13.

CAS  PubMed  PubMed Central  Article  Google Scholar 

Kohanski RA, Deeks SG, Gravekamp C, Halter JB, High K, Hurria A, Fuldner R, Green P, Huebner R, Macchiarini F, Sierra F. Reverse geroscience: how does exposure to early diseases accelerate the age-related decline in health? Ann N Y Acad Sci. 2016;1386:30–44.

PubMed  Article  Google Scholar 

Justice JN, Ferrucci L, Newman AB, Aroda VR, Bahnson JL, Divers J, Espeland MA, Marcovina S, Pollak MN, Kritchevsky SB, Barzilai N, Kuchel GA. A framework for selection of blood-based biomarkers for geroscience-guided clinical trials: report from the TAME Biomarkers Workgroup. Geroscience. 2018;40:419–36.

CAS  PubMed  PubMed Central  Article  Google Scholar 

LeBrasseur NK, de Cabo R, Fielding R, Ferrucci L, Rodriguez-Manas L, Vina J, Vellas B. Identifying biomarkers for biological age: geroscience and the ICFSR task force. J Frailty Aging. 2021;10:196–201.

CAS  PubMed  PubMed Central  Google Scholar 

Hoffman JM, Hernandez CM, Hernandez AR, Bizon JL, Burke SN, Carter CS, Buford TW. Bridging the gap: a geroscience primer for neuroscientists with potential collaborative applications. J Gerontol A Biol Sci Med Sci. 2021.

Hernandez CM, Hernandez AR, Hoffman JM, King PH, McMahon LL, Buford TW, Carter C, Bizon JL, Burke SN. A neuroscience primer for integrating geroscience with the neurobiology of aging. J Gerontol A Biol Sci Med Sci. 2021.

Franke K, Gaser C. Ten years of BrainAGE as a neuroimaging biomarker of brain aging: what insights have we gained? Front Neurol. 2019;10:789 (PMID: 31474922).

PubMed  PubMed Central  Article  Google Scholar 

Cole JH. Neuroimaging-derived brain-age: an ageing biomarker? Aging (Albany NY). 2017;9:1861–2.

Article  Google Scholar 

Cole JH, Franke K. Predicting age using neuroimaging: innovative brain ageing biomarkers. Trends Neurosci. 2017;40:681–90 (PMID: 29074032).

CAS  PubMed  Article  Google Scholar 

Ning K, Zhao L, Matloff W, Sun F, Toga AW. Association of relative brain age with tobacco smoking, alcohol consumption, and genetic variants. Sci Rep. 2020;10:10 (PMID: 32001736).

CAS  PubMed  PubMed Central  Article  Google Scholar 

Gaser C, Franke K, Kloppel S, Koutsouleris N, Sauer H. BrainAGE in mild cognitive impaired patients: predicting the conversion to Alzheimer’s disease. PLoS ONE. 2013;8: e67346.

CAS  PubMed  PubMed Central  Article  Google Scholar 

Gaser C, Franke K, Kloppel S, Koutsouleris N, Sauer H, Alzheimer’s Disease Neuroimaging I. BrainAGE in mild cognitive impaired patients: predicting the conversion to Alzheimer’s disease. PLoS ONE. 2013;8: e67346 (PMID: 23826273).

CAS  PubMed  PubMed Central  Article  Google Scholar 

Johnson AA, Shokhirev MN, Wyss-Coray T, Lehallier B. Systematic review and analysis of human proteomics aging studies unveils a novel proteomic aging clock and identifies key processes that change with age. Ageing Res Rev. 2020;60: 101070.

CAS  PubMed  Article  Google Scholar 

Mitnitski AB, Mogilner AJ, Rockwood K. Accumulation of deficits as a proxy measure of aging. ScientificWorldJournal. 2001;1:323–36 (PMID: 12806071).

CAS  PubMed  PubMed Central  Article  Google Scholar 

Knopman DS, Gottesman RF, Sharrett AR, Wruck LM, Windham BG, Coker L, Schneider AL, Hengrui S, Alonso A, Coresh J, Albert MS, Mosley TH Jr. Mild cognitive impairment and dementia prevalence: the Atherosclerosis Risk in Communities Neurocognitive Study (ARIC-NCS). Alzheimers Dement (Amst). 2016;2:1–11.

Article  Google Scholar 

Casanova R, Barnard RT, Gaussoin SA, Saldana S, Hayden KM, Manson JE, Wallace RB, Rapp SR, Resnick SM, Espeland MA, Chen JC, Group W-MS, the Alzheimer’s disease Neuroimaging I. Using high-dimensional machine learning methods to estimate an anatomical risk factor for Alzheimer’s disease across imaging databases. Neuroimage. 2018;183:401–11.

Article  Google Scholar 

Walker KA, Chen J, Zhang J, Fornage M, Yang Y, Zhou L, Grams ME, Tin A, Daya N, Hoogeveen RC, Aozhou Wu, Sullivan KJ, Ganz P, Zeger SL, Gudmundsson EF, Emilsson V, Launer LJ, Jennings LL, Gudnason V, Chatterjee N, Gottesman RF, Mosley TH, Boerwinkle E, Ballantyne CM, Coresh J. Large-scale plasma proteomic analysis identifies proteins and pathways associated with dementia risk. Nature Aging. 2021;1:473–89.

Article  Google Scholar 

Casanova R, Hsu FC, Espeland MA. Classification of structural MRI images in Alzheimer’s disease from the perspective of ill-posed problems. PLoS One. 2012;7: e44877 (PMID: 23071501).

CAS  PubMed  PubMed Central  Article  Google Scholar 

Casanova R, Maldjian JA, Espeland MA. Evaluating the impact of different factors on voxel-wise classification methods of ADNI structural MRI brain images. International Journal of Biomedical Datamining. 2011;1:11.

Google Scholar 

Fine JP, Gray RJ. A proportional hazards model for the subdistribution of a competing risk. J Am Stat Assoc. 1999;94:496–509.

Article  Google Scholar 

Franke K, Gaser C, Manor B, Novak V. Advanced BrainAGE in older adults with type 2 diabetes mellitus. Front Aging Neurosci. 2013;5:90.

PubMed  PubMed Central  Article  Google Scholar 

Cole JH, Poudel RPK, Tsagkrasoulis D, Caan MWA, Steves C, Spector TD, Montana G. Predicting brain age with deep learning from raw imaging data results in a reliable and heritable biomarker. Neuroimage. 2017;163:115–24.

PubMed  Article  Google Scholar 

Cole JH, Ritchie SJ, Bastin ME, Valdes Hernandez MC, Munoz Maniega S, Royle N, Corley J, Pattie A, Harris SE, Zhang Q, Wray NR, Redmond P, Marioni RE, Starr JM, Cox SR, Wardlaw JM, Sharp DJ, Deary IJ. Brain age predicts mortality. Mol Psychiatry. 2018;23:1385–92 (PMID: 28439103).

CAS  PubMed  Article  Google Scholar 

Belsky DW, Caspi A, Houts R, Cohen HJ, Corcoran DL, Danese A, Harrington H, Israel S, Levine ME, Schaefer JD, Sugden K, Williams B, Yashin AI, Poulton R, Moffitt TE. Quantification of biological aging in young adults. Proc Natl Acad Sci U S A. 2015;112:E4104-4110.

CAS  PubMed  PubMed Central  Article  Google Scholar 

Elliott ML, Caspi A, Houts RM, Ambler A, Broadbent JM, Hancox RJ, Harrington H, Hogan S, Keenan R, Knodt A, Leung JH, Melzer TR, Purdy SC, Ramrakha S, Richmond-Rakerd LS, Righarts A, Sugden K, Thomson WM, Thorne PR, Williams BS, Wilson G, Hariri AR, Poulton R, Moffitt TE. Disparities in the pace of biological aging among midlife adults of the same chronological age have implications for future frailty risk and policy. Nat Aging. 2021;1:295–308.

PubMed  PubMed Central  Article  Google Scholar 

Elliott ML, Belsky DW, Knodt AR, Ireland D, Melzer TR, Poulton R, Ramrakha S, Caspi A, Moffitt TE, Hariri AR. Brain-age in midlife is associated with accelerated biological aging and cognitive decline in a longitudinal birth cohort. Mol Psychiatry. 2021;26:3829–38.

PubMed  Article  Google Scholar 

Habes M, Janowitz D, Erus G, Toledo JB, Resnick SM, Doshi J, Van der Auwera S, Wittfeld K, Hegenscheid K, Hosten N, Biffar R, Homuth G, Volzke H, Grabe HJ, Hoffmann W, Davatzikos C. Advanced brain aging: relationship with epidemiologic and genetic risk factors, and overlap with Alzheimer disease atrophy patterns. Transl Psychiatry. 2016;6: e775.

CAS  PubMed  PubMed Central  Article  Google Scholar 

Kuller LH, Arnold AM, Longstreth WT Jr, Manolio TA, O’Leary DH, Burke GL, Fried LP, Newman AB. White matter grade and ventricular volume on brain MRI as markers of longevity in the cardiovascular health study. Neurobiol Aging. 2007;28:1307–15.

PubMed  Article  Google Scholar 

Henneman WJ, Sluimer JD, Cordonnier C, Baak MM, Scheltens P, Barkhof F, van der Flier WM. MRI biomarkers of vascular damage and atrophy predicting mortality in a memory clinic population. Stroke. 2009;40:492–8.

PubMed  Article  Google Scholar 

Doerstling S, Hedberg P, Ohrvik J, Leppert J, Henriksen E. Growth differentiation factor 15 in a community-based sample: age-dependent reference limits and prognostic impact. Ups J Med Sci. 2018;123:86–93.

PubMed  PubMed Central  Article  Google Scholar 

Lim JH, Jeon Y, Ahn JS, Kim S, Kim DK, Lee JP, Ryu DR, Seong EY, Ahn SY, Baek SH, Jung HY, Choi JY, Park SH, Kim CD, Kim YL, Cho JH. GDF-15 predicts in-hospital mortality of critically ill patients with acute kidney injury requiring continuous renal replacement therapy: a multicenter prospective study. J Clin Med 10. 2021

Meyer SL, Wolff D, Ridderbos FS, Eshuis G, Hillege H, Willems TP, Ebels T, van Melle JP, Berger RMF. GDF-15 (growth differentiation factor 15) is associated with hospitalization and mortality in patients with a fontan circulation. J Am Heart Assoc. 2020;9: e015521.

CAS  PubMed  PubMed Central  Article  Google Scholar 

Sathyan S, Ayers E, Gao T, Weiss EF, Milman S, Verghese J, Barzilai N. Plasma proteomic profile of age, health span, and all-cause mortality in older adults. Aging Cell. 2020;19: e13250.

CAS 

留言 (0)

沒有登入
gif