Log In

Forgot Password?
Create New Account

Loading... please wait

Abstract Details

Real-world driving digital data reliably index MCI over time
Aging, Dementia, and Behavioral Neurology
S15 - Innovative Diagnostics in Dementia (2:24 PM-2:36 PM)
008

Cognitive decline affects driving abilities. Driver behavior patterns, in turn, index cognitive abilities. Roadway environments present varying challenges, revealing driver strategies accommodating challenges. Strategies map to cognitive decline, even in transitional dementia stages like mild cognitive impairment (MCI).

Our objective is to detect age-related cognitive decline from driver behavior. The overarching goal is to develop real-world, digital biomarkers of early dementia, including Alzheimer’s disease (AD), to inform clinical care and intervention.

Real-world driving data (249,104 miles) were collected for 2, 3-month periods across 2 years (baseline/longitudinal) using sensors installed in participants’ vehicles. 74 participants (mean age = 75.1, 44 females) self-reported demographics and completed neuropsychological assessments relevant to aging, driving, and AD. Neuropsychological data were used to classify MCI at baseline (MCI: N = 14; Peterson, 2004). Mixed-effect linear regressions assessed changes in speed limit compliance (difference between vehicle speed and posted speed limit) across MCI class and roadway environment (residential/commercial/interstate roads [20-30/35-45/≥ 55 mph]).

Drivers with MCI drove further below the posted speed limit compared to controls (b = -0.235, p < 0.001). Individual driver speed patterns correlated at baseline and longitudinal (r = 0.63).  Commercial (b = -0.541, p < 0.001) and residential (b = -0.647, p < 0.001) roadways showed ability to detect differences in speed limit compliance based on driver MCI class. High-speed driving (interstate roadways) revealed greater differences in speed limit compliance for MCI drivers compared to those without MCI.

Results demonstrate feasibility to detect early dementia stages, like MCI, from real-world, digital driving sensor data. Findings reveal key environments that show discriminative MCI utility. Data show longitudinal reliability across individuals suggesting utility of data to predict decline progression for AD intervention.  Sensor-based digital health biomarkers hold promise to deliver clinicians timely, objective data on patient health and risk.

Authors/Disclosures
Matthew Rizzo, MD, FAAN (University of Nebraska Medical Center)
PRESENTER
The institution of Dr. Rizzo has received research support from NIH. Dr. Rizzo has a non-compensated relationship as a Chair with ABC that is relevant to AAN interests or activities.
Jun Ha Chang (University of Nebraska Medical Center) No disclosure on file
No disclosure on file
No disclosure on file
Jennifer Merickel No disclosure on file