Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
10431277 | Journal of Biomechanics | 2015 | 7 Pages |
Abstract
We utilized Bayesian statistical methods to generate synthetic data from previously published concussion injury risk curves developed using data from helmet-based sensors on collegiate football players and assessed the effect of the three sources of error on the risk relationship. Accounting for sampling variability adds uncertainty or width to the injury risk curve. Assuming a variety of rates of unreported concussions in the non-concussed group, we found that accounting for under-reporting lowers the rotational acceleration required for a given concussion risk. Lastly, after accounting for sensor error, we find strengthened relationships between rotational acceleration and injury risk, further lowering the magnitude of rotational acceleration needed for a given risk of concussion. As more accurate sensors are designed and more sensitive and specific clinical diagnostic tools are introduced, our analysis provides guidance for the future development of comprehensive concussion risk curves.
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Physical Sciences and Engineering
Engineering
Biomedical Engineering
Authors
Michael R. Elliott, Susan S. Margulies, Matthew R. Maltese, Kristy B. Arbogast,