# Multi-directional dynamic model for traumatic brain injury detection

**Authors:** Kaveh Laksari, Michael Fanton, Lyndia C. Wu, Taylor H. Nguyen, Mehmet, Kurt, Chiara Giordano, Eoin Kelly, Eoin O'Keeffe, Eugene Wallace, Colin, Doherty, Matthew Campbell, Stephen Tiernan, Gerald Grant, Jesse Ruan, Saeed, Barbat, David B. Camarillo

arXiv: 1812.07731 · 2019-04-04

## TL;DR

This paper introduces a simplified 3-DOF brain model that efficiently estimates brain strain during head impacts, correlates well with complex FE models, and effectively classifies traumatic brain injuries using a new injury metric.

## Contribution

The authors developed a computationally efficient brain injury prediction model based on natural frequencies, providing a practical alternative to finite element models for injury classification.

## Key findings

- Model correlates with FE strain (R2=0.80)
- Proposed injury metric performs comparably to existing metrics
- Directional components improve injury classification accuracy

## Abstract

Traumatic brain injury (TBI) is a complex injury that is hard to predict and diagnose, with many studies focused on associating head kinematics to brain injury risk. Recently, there has been a push towards using computationally expensive finite element (FE) models of the brain to create tissue deformation metrics of brain injury. Here, we developed a 3 degree-of-freedom lumped-parameter brain model, built based on the measured natural frequencies of a FE brain model simulated with live human impact data, to be used to rapidly estimate peak brain strains experienced during head rotational accelerations. On our dataset, the simplified model correlates with peak principal FE strain by an R2 of 0.80. Further, coronal and axial model displacement correlated with fiber-oriented peak strain in the corpus callosum with an R2 of 0.77. Using the maximum displacement predicted by our brain model, we propose an injury criteria and compare it against a number of existing rotational and translational kinematic injury metrics on a dataset of head kinematics from 27 clinically diagnosed injuries and 887 non-injuries. We found that our proposed metric performed comparably to peak angular acceleration, linear acceleration, and angular velocity in classifying injury and non-injury events. Metrics which separated time traces into their directional components had improved deviance to those which combined components into a single time trace magnitude. Our brain model can be used in future work as a computationally efficient alternative to FE models for classifying injuries over a wide range of loading conditions.

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Source: https://tomesphere.com/paper/1812.07731