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Older driver fitness-to-drive evaluation using naturalistic driving data
Institution:1. Virginia Tech Transportation Institute, 3500 Transportation Research Plaza, Blacksburg, VA 24060, United States;2. Department of Statistics (MC0439), Hutcheson Hall, RM 406-A, Virginia Tech, 250 Drillfield Drive, Blacksburg, VA 24061, United States;3. Virginia Tech Wake Forest University School of Biomedical Engineering and Sciences, 325 Stanger Street, MC 0298, Blacksburg, VA 24061, United States
Abstract:ProblemAs our driving population continues to age, it is becoming increasingly important to find a small set of easily administered fitness metrics that can meaningfully and reliably identify at-risk seniors requiring more in-depth evaluation of their driving skills and weaknesses.MethodSixty driver assessment metrics related to fitness-to-drive were examined for 20 seniors who were followed for a year using the naturalistic driving paradigm. Principal component analysis and negative binomial regression modeling approaches were used to develop parsimonious models relating the most highly predictive of the driver assessment metrics to the safety-related outcomes observed in the naturalistic driving data.ResultsThis study provides important confirmation using naturalistic driving methods of the relationship between contrast sensitivity and crash-related events.Practical applicationsThe results of this study provide crucial information on the continuing journey to identify metrics and protocols that could be applied to determine seniors' fitness to drive.
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