| Literature DB >> 26697422 |
Narayan Yoganandan1, Anjishnu Banerjee2, Frank A Pintar1.
Abstract
Injury criteria and risk curves are needed for anthropomorphic test devices (dummies) to assess injuries for improving human safety. The present state of knowledge is based on using injury outcomes and biomechanical metrics from post-mortem human subject (PMHS) and mechanical records from dummy tests. Data from these models are combined to develop dummy injury assessment risk curves (IARCs)/dummy injury assessment risk values (IARVs). This simple substitution approach involves duplicating dummy metrics for PMHS tested under similar conditions and pairing with PMHS injury outcomes. It does not directly account for the age of each specimen tested in the PMHS group. Current substitution methods for injury risk assessments use age as a covariate and dummy metrics (e.g., accelerations) are not modified so that age can be directly included in the model. The age-infusion methodology presented in this perspective article accommodates for an annual rate factor that modifies the dummy injury risk assessment responses to account for the age of the PMHS that the injury data were based on. The annual rate factor is determined using human injury risk curves. The dummy metrics are modulated based on individual PMHS age and rate factor, thus "infusing" age into the dummy data. Using PMHS injuries and accelerations from side-impact experiments, matched-pair dummy tests, and logistic regression techniques, the methodology demonstrates the process of age-infusion to derive the IARCs and IARVs.Entities:
Keywords: biomechanics; impact loading; injury risk curves; logistic regression; matched-pair tests; probability curves; statistical analysis
Year: 2015 PMID: 26697422 PMCID: PMC4677537 DOI: 10.3389/fbioe.2015.00196
Source DB: PubMed Journal: Front Bioeng Biotechnol ISSN: 2296-4185
Figure 1Spine acceleration versus age for injury (red) and no injury (blue) data points.
Figure 2Injury probability curves using the simple substitution and infused approaches. The simple substitution curve is based on duplicating acceleration magnitudes for all specimens tested under the same initial condition regardless of injury outcomes (Kuppa et al., 2003). The age-infused curve is based on modifying the dummy-measured acceleration based on the individual specimen age.