Alzheimer's disease (AD) affects as many as 5 million individuals over the age of 65 in the United States (US) and 35 million worldwide. Because of the aging population, the prevalence of AD will disproportionately increase in future years if no effective early interventions are developed. Converging evidence suggests that the pathophysiologic processes in the brains of AD patients begin decades before symptoms occur. The long preclinical phase of AD provides a valuable window for early intervention with disease-modifying therapy, if we are able to understand the underlying mechanisms of AD by identifying reliable biomarkers. Diffusion MRI (dMRI) probes microstructures of the human brain by measuring water diffusion properties at the cellular level in vivo and non-invasively, which is especially suitable for preclinical screening and monitoring disease progression for AD. Microstructural features with links to specific biologic targets, e.g., axons, glia, or extracellular substrates may provide direct insight into the pathophysiologic changes underlying neurodegenerative disorders. In theory, diffusion MRI provides significant advances for objectively detecting and characterizing the mechanisms of brain changes in AD. Current approaches using diffusion tensor imaging (DTI), however, have not achieved this potential. A very recent advance in the use of dMRI to image the human brain is the development of a method to reflect axonal density and volume fraction of glial cells (cellularity) among other microstructural features. These biologic specific diffusion metrics can be obtained by parametric analysis of the diffusion data via diffusion compartment modeling. We will use the hybrid diffusion imaging (HYDI) developed by the PI to acquire diffusion data with at least five diffusion-weighting b-value shells to sensitize diffusion compartments (e.g., axons, glia, and extracellular substrates) with different diffusivities. A novel feature of HYDI is its versatility for various diffusion model analyses and computational approaches. In the proposed research, we will use two diffusion modeling approaches: (1) neurite orientation dispersion and density imaging (NODDI) to extract the diffusion metric for axonal density, and (2) diffusion basis spectrum imaging (DBSI) to extract the cellularity of glial cells reflecting inflammatory processes. The goals of the proposed research are to determine the sensitivity (Aim 1), discrimination (Aim 2), and predictive power (Aim 3) of the diffusion metrics of axonal density and inflammation-associated cellularity cross-sectionally (Aims 1 and 2) and longitudinally (Aim 3) in a cohort of healthy control and preclinical (at-risk) older adults, and patients with early mild cognitive impairment (MCI), late MCI, and AD. The success of the proposed research will lead to the development of non-invasive differential diagnostic tools and reveal the micromechanisms of the pathophysiologic changes that occur in the early stages of AD.

Public Health Relevance

Public Health Relevance Alzheimer's disease affects as many as 5 million individuals over the age of 65 in the United States and 35 million worldwide. The best treatment is prevention, which requires objective diagnostic tools for early detection. To this end, the proposed research aims to identify novel microstructural imaging biomarkers obtained with magnetic resonance imaging as early differential diagnostic tools.

Agency
National Institute of Health (NIH)
Institute
National Institute on Aging (NIA)
Type
Research Project (R01)
Project #
1R01AG053993-01
Application #
9193897
Study Section
Special Emphasis Panel (ZRG1-ETTN-E (55)R)
Program Officer
Hsiao, John
Project Start
2016-08-15
Project End
2021-05-31
Budget Start
2016-08-15
Budget End
2017-05-31
Support Year
1
Fiscal Year
2016
Total Cost
$319,565
Indirect Cost
$110,279
Name
Indiana University-Purdue University at Indianapolis
Department
Radiation-Diagnostic/Oncology
Type
Schools of Medicine
DUNS #
603007902
City
Indianapolis
State
IN
Country
United States
Zip Code
46202
Cong, Shan; Risacher, Shannon L; West, John D et al. (2018) Volumetric comparison of hippocampal subfields extracted from 4-minute accelerated vs. 8-minute high-resolution T2-weighted 3T MRI scans. Brain Imaging Behav 12:1583-1595
Mustafi, Sourajit Mitra; Harezlak, Jaroslaw; Koch, Kevin M et al. (2018) Acute White-Matter Abnormalities in Sports-Related Concussion: A Diffusion Tensor Imaging Study from the NCAA-DoD CARE Consortium. J Neurotrauma 35:2653-2664
Yan, Jingwen; Liu, Kefei; Li, Huang et al. (2018) JOINT EXPLORATION AND MINING OF MEMORY-RELEVANT BRAIN ANATOMIC AND CONNECTOMIC PATTERNS VIA A THREE-WAY ASSOCIATION MODEL. Proc IEEE Int Symp Biomed Imaging 2018:6-9
Hulvershorn, Leslie; Hummer, Tom; Wu, Yu-Chien et al. (2018) Global white matter microstructural abnormalities associated with addiction liability score in drug naïve youth. Brain Imaging Behav 12:274-283
Wen, Qiuting; Kodiweera, Chandana; Dale, Brian M et al. (2018) Rotating single-shot acquisition (RoSA) with composite reconstruction for fast high-resolution diffusion imaging. Magn Reson Med 79:264-275