# Models for aging and Alzheimer with image-based cerebrovascular network synthesis (iCNS)

> **NIH NIH R56** · UNIVERSITY OF ILLINOIS AT CHICAGO · 2020 · $743,548

## Abstract

Significant resources on age-related neurodegeneration are directed toward animal research in the
assumption that results will inform our understanding of parallel processes in human. Yet, no reliable method
exists to accurately translate cerebral blood flow or metabolic data from animal to human. For lack of rigorous
mathematical methods for associating cerebral metabolic parameters between species, correlation of valuable
data from mouse to human remains guesswork. There is a need for a predictive computational framework that
quantifies cerebral blood flow and metabolism in normal and diseased brain states. Our long term goal is that
mechanistic models of animal data that are precisely scaled to human brain metabolism will enable rational
development of therapies that will ameliorate the effects of aging, especially Alzheimer’s and dementia. The
objective is to identify structural and functional modifications in the micro-angioarchitecture that cause age-
related decline in brain health. The central hypothesis is that structural and functional changes to the cerebral
microcirculation are major physical factors in reduced perfusion, loss of vascular reserve, and diminished
oxygen extraction, eventually leading to age-induced cognitive decline. The central hypothesis will be tested by
pursuing three specific aims:
 Aim 1) Characterize the effect of aging and Alzheimer’s disease on brain metabolic function in mouse. We
will validate a mechanistic model of cerebral circulation in mouse to determine the effect of structural changes
on perfusion and oxygen extraction in the aged rodent brain.
 Aim 2) Create in-silico models of cerebral blood flow and metabolism in the human brain predictive of
normative and unhealthy aging. We will create an anatomically detailed mechanistic model of cerebral
circulation in human to predict the effect of structural changes on perfusion and oxygen extraction. The model
will enable prospective simulation of age-related changes that are expected to occur in the human
angioarchitecture based on scaled observations in mouse.
 Aim 3) Quantify age-related changes in cerebral blood flow and metabolism in human brain to refine and
validate in silico mechanistic modeling. To validate the mechanistic translation from mouse to human, we will
measure age-related metabolic functions in cohorts of aged and Alzheimer patients. We will identify imaging
biomarkers for morphometric changes in imaging data that correlate with cognitive decline.
 The research is significant because it will establish a novel scientific method to form quantifiable
conclusions about the human brain from experiments in mouse. It will identify biomarkers visible in noninvasive
diagnostic imaging in humans that signal age-related deterioration before symptoms develop. The
computational framework for relating data acquired in animal models to human will enable interpretation
without guesswork and dramatically boost the relevance and utility of animal data for h...

## Key facts

- **NIH application ID:** 10233850
- **Project number:** 1R56AG066634-01
- **Recipient organization:** UNIVERSITY OF ILLINOIS AT CHICAGO
- **Principal Investigator:** ANDREAS A LINNINGER
- **Activity code:** R56 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2020
- **Award amount:** $743,548
- **Award type:** 1
- **Project period:** 2020-09-15 → 2022-08-31

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10233850

## Citation

> US National Institutes of Health, RePORTER application 10233850, Models for aging and Alzheimer with image-based cerebrovascular network synthesis (iCNS) (1R56AG066634-01). Retrieved via AI Analytics 2026-06-01 from https://api.ai-analytics.org/grant/nih/10233850. Licensed CC0.

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