# Tracking brain arousal fluctuations for fMRI Big Data discovery

> **NIH NIH K22** · VANDERBILT UNIVERSITY · 2020 · $202,463

## Abstract

Recent years have seen rapid growth in the availability of large, complex functional magnetic resonance
imaging (fMRI) datasets of the human brain. However, the potential of this fMRI Big Data is presently limited by
our understanding of the neural sources that contribute to fMRI signals. Fluctuations in arousal (i.e., in the level
wakefulness and alertness) are known to modulate cognitive and behavioral processes and to display
prominent alterations in neuropsychiatric disorders. Yet, since the vast majority of fMRI datasets lack
neurophysiological or behavioral indices of arousal, fMRI Big Data cannot be readily harnessed to understand
human brain arousal in health and disease. Recent data-driven approaches attempt to fill this gap but have
limitations. The overall goal of this proposal is to increase the transformative potential of fMRI Big Data for
human neuroscience through a novel analytic framework for detecting arousal fluctuations from fMRI data
alone. We will accomplish this goal by developing and disseminating tools for modeling arousal fluctuations
based on powerful statistical learning methods (Specific Aim 1). We will apply these models to large fMRI
databases of healthy aging and Alzheimer’s Disease, both of which are associated with altered arousal
(Specific Aims 2 and 3). We will capitalize on these databases to determine how knowledge of brain arousal
fluctuations improves neuroimaging biomarkers of aging- and neurodegenerative disease-related changes in
human brain function, and the extent to which arousal itself constitutes an informative biomarker of these
states. This research would, moreover, increase the reliability and translational potential of fMRI studies more
broadly by providing the ability to account for these major neural (arousal) state changes.
These immediate research goals form a strong bridge with my long-term research objective of
understanding principles of brain function by developing and innovatively adapting methods for the analysis of
large and complex neuroimaging datasets. This objective is enabled by the mentored training plan, where I will
(i) develop expertise in cutting-edge machine learning techniques and (ii) apply these techniques to multimodal
neuroimaging data. The two co-mentors have complementary expertise that align, respectively, with these two
training components. Aims 1 and 2 will span the mentored phase and part of the independent phase, while Aim
3 (application to the Alzheimer’s Disease Neuroimaging Initiative data) will be performed in the independent
phase. The mentored environment of the NIH Intramural Research Program provides the resources for all
planned data acquisition, as well as a rich community of neuroscience investigators and seminars. Interaction
with the extramural (Columbia University) co-mentor will occur through frequent video conferences and several
visits, with opportunities to engage with the Columbia data science community.

## Key facts

- **NIH application ID:** 9982966
- **Project number:** 5K22ES028048-04
- **Recipient organization:** VANDERBILT UNIVERSITY
- **Principal Investigator:** Catherine Elizabeth Chang
- **Activity code:** K22 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2020
- **Award amount:** $202,463
- **Award type:** 5
- **Project period:** 2017-04-01 → 2022-07-31

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/9982966

## Citation

> US National Institutes of Health, RePORTER application 9982966, Tracking brain arousal fluctuations for fMRI Big Data discovery (5K22ES028048-04). Retrieved via AI Analytics 2026-05-25 from https://api.ai-analytics.org/grant/nih/9982966. Licensed CC0.

---

*[NIH grants dataset](/datasets/nih-grants) · CC0 1.0*
