Occupant-Based Injury Severity Prediction

2021-22-0002

05/20/2022

Features
Event
65th Stapp Car Crash Conference
Authors Abstract
Content
Road traffic injuries continue to be a leading cause of death around the world. Rapid emergency response is a key factor in improving occupant outcomes. Over the past ten years, Injury Severity Prediction (ISP) models have been developed and deployed to assist in effective dispatch of emergency medical services (EMS). Prior versions of ISP have relied on driver-based scenarios that are not relevant in many of the possible autonomous vehicle (AV) contexts. This paper describes the development and validation of occupant-based ISP models that predict injury severity for specific vehicle seat positions. Models show improved predictive performance, sensitivity 80% and specificity over 95%, for front row occupants. Second row occupant models have similar specificity, but sensitivity scores dropped due to occupant heterogeneity and small sample sizes of seriously injured occupants.
Meta TagsDetails
DOI
https://doi.org/10.4271/2021-22-0002
Pages
12
Citation
H. Owen, S., W. Joyner, J., Zhang, P., and C. Wang, S., "Occupant-Based Injury Severity Prediction," SAE Technical Paper 2021-22-0002, 2022, https://doi.org/10.4271/2021-22-0002.
Additional Details
Publisher
Published
May 20, 2022
Product Code
2021-22-0002
Content Type
Technical Paper
Language
English