HCAINov 15, 2023

In-vehicle Sensing and Data Analysis for Older Drivers with Mild Cognitive Impairment

arXiv:2311.09273v115 citationsh-index: 40
Originality Synthesis-oriented
AI Analysis

This work addresses early detection of cognitive decline in older drivers, which is incremental as it applies existing machine learning methods to a new dataset in a specific domain.

The paper tackled the problem of detecting early cognitive impairment in older drivers by analyzing in-vehicle sensing data, finding that drivers with mild cognitive impairment exhibit smoother and safer driving patterns, and identified key factors like night trips and education as influential in detection.

Driving is a complex daily activity indicating age and disease related cognitive declines. Therefore, deficits in driving performance compared with ones without mild cognitive impairment (MCI) can reflect changes in cognitive functioning. There is increasing evidence that unobtrusive monitoring of older adults driving performance in a daily-life setting may allow us to detect subtle early changes in cognition. The objectives of this paper include designing low-cost in-vehicle sensing hardware capable of obtaining high-precision positioning and telematics data, identifying important indicators for early changes in cognition, and detecting early-warning signs of cognitive impairment in a truly normal, day-to-day driving condition with machine learning approaches. Our statistical analysis comparing drivers with MCI to those without reveals that those with MCI exhibit smoother and safer driving patterns. This suggests that drivers with MCI are cognizant of their condition and tend to avoid erratic driving behaviors. Furthermore, our Random Forest models identified the number of night trips, number of trips, and education as the most influential factors in our data evaluation.

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