Title |
Relationship between Plasma Analytes and SPARE-AD Defined Brain Atrophy Patterns in ADNI
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Published in |
PLOS ONE, February 2013
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DOI | 10.1371/journal.pone.0055531 |
Pubmed ID | |
Authors |
Jon B. Toledo, Xiao Da, Priyanka Bhatt, David A. Wolk, Steven E. Arnold, Leslie M. Shaw, John Q. Trojanowski, Christos Davatzikos, Alzheimer’s Disease Neuroimaging Initiative |
Abstract |
Different inflammatory and metabolic pathways have been associated with Alzheimeŕs disease (AD). However, only recently multi-analyte panels to study a large number of molecules in well characterized cohorts have been made available. These panels could help identify molecules that point to the affected pathways. We studied the relationship between a panel of plasma biomarkers (Human DiscoveryMAP) and presence of AD-like brain atrophy patterns defined by a previously published index (SPARE-AD) at baseline in subjects of the ADNI cohort. 818 subjects had MRI-derived SPARE-AD scores, of these subjects 69% had plasma biomarkers and 51% had CSF tau and Aβ measurements. Significant analyte-SPARE-AD and analytes correlations were studied in adjusted models. Plasma cortisol and chromogranin A showed a significant association that did not remain significant in the CSF signature adjusted model. Plasma macrophage inhibitory protein-1α and insulin-like growth factor binding protein 2 showed a significant association with brain atrophy in the adjusted model. Cortisol levels showed an inverse association with tests measuring processing speed. Our results indicate that stress and insulin responses and cytokines associated with recruitment of inflammatory cells in MCI-AD are associated with its characteristic AD-like brain atrophy pattern and correlate with clinical changes or CSF biomarkers. |
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