TY - JOUR
T1 - Complementary value of molecular, phenotypic, and functional aging biomarkers in dementia prediction
AU - Alzheimer’s Disease Neuroimaging Initiative Consortium
AU - Engvig, Andreas
AU - Kalleberg, Karl Trygve
AU - Westlye, Lars T.
AU - Leonardsen, Esten Høyland
AU - Raj, Balebail Ashok
AU - Fargher, Kristin
AU - Smith, Amanda
AU - Raudin, Lisa
AU - Chaing, Gloria
AU - Relkin, Norman
AU - Smith, Karen Elizabeth
AU - Shim, Hyungsub
AU - Ponto, Laura L.Boles
AU - Schultz, Susan K.
AU - Sarrael, Antero
AU - Hernando, Raymundo
AU - Pomara, Nunzio
AU - Drost, Dick
AU - Kertesz, Andrew
AU - Rogers, John
AU - Rachinsky, Irina
AU - Pasternak, Stephen
AU - Finger, Elizabether
AU - Bachman, David
AU - Spicer, Kenneth
AU - Mintzer, Jacobo
AU - Miller, Bruce L.
AU - Rosen, Howard J.
AU - Correia, Stephen
AU - Malloy, Paul
AU - Salloway, Stephen
AU - Tremont, Geoffrey
AU - Querfurth, Henry
AU - Ott, Brian R.
AU - Watkins, Franklin
AU - Garg, Pradeep
AU - Williamson, Jeff D.
AU - Sink, Kaycee M.
AU - Schwartz, Eben S.
AU - Kitzmiller, Tamar J.
AU - Santulli, Robert B.
AU - Anderson, Karen
AU - Blank, Karen
AU - Pearlson, Godfrey D.
AU - Brown, Alice D.
AU - Celmins, Dzintra
AU - Zimmerman, Earl A.
AU - Adeli, Anahita
AU - Kataki, Maria
AU - Shah, Raj C.
N1 - Publisher Copyright:
© The Author(s) 2024.
PY - 2024
Y1 - 2024
N2 - DNA methylation age (MA), brain age (BA), and frailty index (FI) are putative aging biomarkers linked to dementia risk. We investigated their relationship and combined potential for prediction of cognitive impairment and future dementia risk using the ADNI database. Of several MA algorithms, DunedinPACE and GrimAge2, associated with memory, were combined in a composite MA alongside BA and a data-driven FI in predictive analyses. Pairwise correlations between age- and sex-adjusted measures for MA (aMA), aBA, and aFI were low. FI outperformed BA and MA in all diagnostic tasks. A model including age, sex, and aFI achieved an area under the curve (AUC) of 0.94 for differentiating cognitively normal controls (CN) from dementia patients in a held-out test set. When combined with clinical biomarkers (apolipoprotein E ε4 allele count, memory, executive function), a model including aBA and aFI predicted 5-year dementia risk among MCI patients with an out-of-sample AUC of 0.88. In the prognostic model, BA and FI offered complementary value (both βs 0.50). The tested MAs did not improve predictions. Results were consistent across FI algorithms, with data-driven health deficit selection yielding the best performance. FI had a stronger adverse effect on prognosis in males, while BA’s impact was greater in females. Our findings highlight the complementary value of BA and FI in dementia prediction. The results support a multidimensional view of dementia, including an intertwined relationship between the biomarkers, sex, and prognosis. The tested MA’s limited contribution suggests caution in their use for individual risk assessment of dementia.
AB - DNA methylation age (MA), brain age (BA), and frailty index (FI) are putative aging biomarkers linked to dementia risk. We investigated their relationship and combined potential for prediction of cognitive impairment and future dementia risk using the ADNI database. Of several MA algorithms, DunedinPACE and GrimAge2, associated with memory, were combined in a composite MA alongside BA and a data-driven FI in predictive analyses. Pairwise correlations between age- and sex-adjusted measures for MA (aMA), aBA, and aFI were low. FI outperformed BA and MA in all diagnostic tasks. A model including age, sex, and aFI achieved an area under the curve (AUC) of 0.94 for differentiating cognitively normal controls (CN) from dementia patients in a held-out test set. When combined with clinical biomarkers (apolipoprotein E ε4 allele count, memory, executive function), a model including aBA and aFI predicted 5-year dementia risk among MCI patients with an out-of-sample AUC of 0.88. In the prognostic model, BA and FI offered complementary value (both βs 0.50). The tested MAs did not improve predictions. Results were consistent across FI algorithms, with data-driven health deficit selection yielding the best performance. FI had a stronger adverse effect on prognosis in males, while BA’s impact was greater in females. Our findings highlight the complementary value of BA and FI in dementia prediction. The results support a multidimensional view of dementia, including an intertwined relationship between the biomarkers, sex, and prognosis. The tested MA’s limited contribution suggests caution in their use for individual risk assessment of dementia.
KW - Biological age
KW - Brain age
KW - Deep learning
KW - Dementia
KW - Frailty index
KW - Machine learning
KW - Methylation age
UR - http://www.scopus.com/inward/record.url?scp=85207707838&partnerID=8YFLogxK
U2 - 10.1007/s11357-024-01376-w
DO - 10.1007/s11357-024-01376-w
M3 - Article
C2 - 39446224
AN - SCOPUS:85207707838
SN - 2509-2715
JO - GeroScience
JF - GeroScience
ER -