TOLGBIO-PHQMAPOct 16, 2020

Deep Learning Head Model for Real-time Estimation of Entire Brain Deformation in Concussion

arXiv:2010.08527v245 citations
Originality Incremental advance
AI Analysis

This model enables real-time brain deformation monitoring for clinical use and more efficient strain estimation in sports research, though it is incremental as it applies deep learning to an existing bottleneck.

The study tackled the slow computation of brain deformation from head impacts using finite element models by developing a deep learning head model that estimates maximum principal strain across the entire brain in under 0.001 seconds with an average root mean squared error of 0.025, based on training from 1803 head impacts.

Objective: Many recent studies have suggested that brain deformation resulting from a head impact is linked to the corresponding clinical outcome, such as mild traumatic brain injury (mTBI). Even though several finite element (FE) head models have been developed and validated to calculate brain deformation based on impact kinematics, the clinical application of these FE head models is limited due to the time-consuming nature of FE simulations. This work aims to accelerate the process of brain deformation calculation and thus improve the potential for clinical applications. Methods: We propose a deep learning head model with a five-layer deep neural network and feature engineering, and trained and tested the model on 1803 total head impacts from a combination of head model simulations and on-field college football and mixed martial arts impacts. Results: The proposed deep learning head model can calculate the maximum principal strain for every element in the entire brain in less than 0.001s (with an average root mean squared error of 0.025, and with a standard deviation of 0.002 over twenty repeats with random data partition and model initialization). The contributions of various features to the predictive power of the model were investigated, and it was noted that the features based on angular acceleration were found to be more predictive than the features based on angular velocity. Conclusion: Trained using the dataset of 1803 head impacts, this model can be applied to various sports in the calculation of brain strain with accuracy, and its applicability can even further be extended by incorporating data from other types of head impacts. Significance: In addition to the potential clinical application in real-time brain deformation monitoring, this model will help researchers estimate the brain strain from a large number of head impacts more efficiently than using FE models.

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