Proposing a Radial Basis Function and CSDM Indices to Predict the Traumatic Brain Injury Risk - 20/07/19
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Abstract |
Background |
Many head injury indices and finite element (FE) head models have been proposed to predict traumatic brain injury (TBI). Although FE head models are suitable methods with high accuracy, they are computationally intensive. Head motion-based brain injury criteria are usually fast tools with lower accuracy. So, the objective of this study is to propose new criteria along with an artificial neural network model to predict TBI risks, which can be fast and accurate.
Methods |
For this purpose, 250 FE head simulations have been carried out at 5 magnitudes and 50 rotational impact directions using the SIMon model. The effects of directions and magnitudes of rotational impacts were assessed for cumulative strain damage measure (CSDM) values. Next, statistical analysis and neural network were applied to predict CSDM values.
Results |
The results of the present research showed that the direction of rotation in the sagittal and frontal planes had a considerable effect on the CSDM values. Furthermore, new brain injury indices and a radial basis function neural network have been proposed to predict CSDM values which having high correlation coefficients with SIMon responses.
Conclusions |
The results of this research demonstrated that rotational impact directions should be used to develop new head injury criteria being able to predict CSDM values. However, findings of present research proved that head motion-based brain injury criteria and RBF network can be used to predict FE head model responses with high speed and accuracy.
Le texte complet de cet article est disponible en PDF.Graphical abstract |
Highlights |
• | A developed method for predicting the effect of impact direction on brain responses. |
• | The proposed metric predicts cumulative strain damage measure. |
• | The proposed radial basis function neural network predicts SIMon responses. |
• | Our method enables a faster and easier diagnosis probability of TBI. |
Keywords : Traumatic brain injury, Computational modeling, Finite element method, Injury criteria, Artificial neural network
Plan
Vol 40 - N° 4
P. 244-252 - août 2019 Retour au numéroBienvenue sur EM-consulte, la référence des professionnels de santé.
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