鉴黄师app Awarded $5.3 Million to Detect Cognitive Change in Older Drivers
For the longitudinal mixed study, researchers will recruit and enroll 750 older drivers, establish their baseline cognitive function and driving behavior profiles and repeat the testing every three months for three years (12 data points).
About 33 percent of older adults with dementia are thought to be active drivers and 50 percent are estimated to continue driving for up to three years post diagnosis. Drivers with dementia often have difficulty checking and changing lanes, merging, making left turns, signaling to park or following routes.聽
Researchers from 鉴黄师app鈥檚 in collaboration with 鉴黄师app鈥檚 and have received a five-year, $5.3 million R01 grant from the National Institute on Aging of the National Institutes of Health for a project titled, 鈥淚n-vehicle Sensors to Detect Cognitive Change in Older Drivers.鈥 This grant will enable researchers to test and evaluate a readily and rapidly available, unobtrusive in-vehicle sensing system, which could provide the first step toward future widespread, low-cost early warnings of cognitive change for this large number of older drivers in the United States. 聽聽
鈥淭here is a critical need to examine how these technologies used within vehicles could help detect abnormal driving behavior that may be attributed to cognitive impairment,鈥 said , R.N., Ed.D., FAAN, principal investigator, an expert gerontologist with extensive experience in dementia research, a professor and Christine E. Lynn Eminent Scholar in 鉴黄师app鈥檚 Christine E. Lynn College of Nursing and a member of the 鉴黄师app Brain Institute and the 鉴黄师app Institute for Human Health and Disease Intervention (I-HEALTH). 鈥淭he significant proportion of older drivers poses a noteworthy concern for traffic safety and public health as well as an opportunity to successfully detect cognitive decline.鈥
The project will involve testing the ability of a package of sophisticated in-vehicle sensors to detect cognitive change; developing algorithms that are able to translate sensor data into driving behavior indices that are gender, age and vehicle specific; and evaluating the acceptability of the installed systems in older drivers.
Tappen, , Ph.D., co-principal investigator, an associate professor and a statistician in 鉴黄师app鈥檚 Christine E. Lynn College of Nursing, and collaborators, will test an unobtrusive multi-sensor systems鈥 ability to detect and report cognitive changes in drivers age 65 and older. For the longitudinal mixed study, they will recruit and enroll 750 older drivers, establish their baseline cognitive function and driving behavior profiles and repeat the testing every three months for three years (12 data points).
鈥淐urrent screening and evaluation services are only able to test a small number of individuals with cognitive concerns, missing many who need to know if they require treatment,鈥 said Newman. 鈥淭herefore, there is a great need for rigorous, fully powered, long-term tests of an array of sensors to determine the ability to detect cognitive change, examine what changes are detected and which sensor data is most sensitive to these changes.鈥澛犅犅
The sensor systems will include inconspicuous cameras, on board diagnostics, high level GPS, motion and orientation detection, vision sensors, driver eye movements, driving scene awareness, and driving behavior that will be tracked and recorded over time. Researchers will track participants鈥 travel patterns such as miles driven during the day and night as well as number of trips; abnormal driving such as getting lost, losing focus, 聽and near-collision events; reaction time when stopping at a stop sign or traffic light; and braking patterns such as stopping at a stop sign or traffic signal as well as ignoring traffic signals. Recorded changes in driver behavior will be compared with results from a battery of cognitive tests including global cognition, executive function, memory, visuospatial, visual attention, and language selected for both sensitivity to early subtle changes in cognition and potential ability to predict driver risk.
鈥淭his research being led by Drs. Tappen and Newman and a highly-qualified interdisciplinary team is incredibly cutting-edge. It has the potential to shift the paradigm in cognitive evaluation of older adults to facilitate earlier detection of cognitive decline or changes that have real-world application and public health or societal risks associated, including driving safety,鈥 said , Ph.D., dean of 鉴黄师app鈥檚 Christine E. Lynn College of Nursing. 鈥淲hat is equally impressive is use of an advanced, multimodal approach that involves the development of novel driving sensors and integration of data from a battery of cognitive function tests, eye tracking and driving behaviors and factors. I am beyond proud of the team and excited about the project's potential to advance the science in this area and field.鈥
The design of the in-vehicle sensor networks will build upon current and popular open-source hardware and software components. Sensors will be developed and deployed rapidly starting in the first year of the project, providing time for collecting and analyzing driver behavior-related data. In-vehicle sensor setups will be simple and discreet through minimizing complex wiring, the size of sensing units, and the number of sensors in a vehicle. The algorithms to be developed (driving behavior indices) are unique and will contribute significantly to application of the results in real-world settings. Researchers also will evaluate the end users鈥 response to the installed system and propose improvements to increase acceptability by older drivers.聽
The research project team includes , D.N.P., A.P.R.N., an associate professor and director of 鉴黄师app鈥檚 , which is operated by 鉴黄师app鈥檚 Christine E. Lynn College of Nursing; and , Ph.D., a professor and assistant chair of and a neuropsychologist in 鉴黄师app鈥檚 Charles E. Schmidt College of Science.
Faculty members from 鉴黄师app鈥檚 College of Engineering and Computer Science are providing extensive expertise in civil engineering and computer science, notably low-cost vehicle sensing and computer science, video detection of driver drowsiness, and use of spatial network big data in transportation research. The engineering project team includes , Ph.D., an assistant professor in the and a fellow of the Institute for Sensing and Embedded Networks Systems Engineering (I-SENSE); , Ph.D., a professor in the , and director of the National Science Foundation Industry/University Cooperative Research Center for Advanced Knowledge Enablement (CAKE); and , Ph.D., an assistant professor in the Department of Computer and Electrical Engineering and Computer Science.
, M.D., M.P.H., medical director of 鉴黄师app鈥檚 Louis and Anne Green Memory and Wellness Center, interim neurology residency program director at 鉴黄师app鈥檚 , and chief of neurology, Marcus Neuroscience Institute, Boca Raton Regional Hospital/Baptist Health South; , Ph.D., an expert in driver simulation testing from the University of Central Florida; and , Ph.D., an expert in cognitive testing from the University of Miami are serving as consults.
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