The Impact of Drop Test Conditions on Brain Strain Location and Severity: A Novel Approach Using a Deep Learning Model

Type of content
Journal Article
Thesis discipline
Degree name
Publisher
Springer Science and Business Media LLC
Journal Title
Journal ISSN
Volume Title
Language
eng
Date
2024
Authors
Stilwell, George
Stitt D
Alexander, Keith
Draper, Nick
Kabaliuk, Natalia
Abstract

In contact sports such as rugby, players are at risk of sustaining traumatic brain injuries (TBI) due to high-intensity head impacts that generate high linear and rotational accelerations of the head. Previous studies have established a clear link between high-intensity head impacts and brain strains that result in concussions. This study presents a novel approach to investigating the effect of a range of laboratory controlled drop test parameters on regional peak and mean maximum principal strain (MPS) predictions within the brain using a trained convolutional neural network (CNN). The CNN is publicly available at https://github.com/Jilab-biomechanics/CNN-brain-strains. The results of this study corroborate previous findings that impacts to the side of the head result in significantly higher regional MPS than forehead impacts. Forehead impacts tend to result in the lowest region-averaged MPS values for impacts where the surface angle was at 0° and 45°, while side impacts tend to result in higher regional peak and mean MPS. The absence of a neck in drop tests resulted in lower regional peak and mean MPS values. The results indicated that the relationship between drop test parameters and resulting regional peak and mean MPS predictions is complex. The study’s findings offer valuable insights into how deep learning models can be used to provide more detailed insights into how drop test conditions impact regional MPS. The novel approach used in this paper to predict brain strains can be applied in the development of better methods to reduce the brain strain resulting from head accelerations such as protective sports headgear.

Description
Citation
Stilwell G, Stitt D, Alexander K, Draper N, Kabaliuk N (2024). The Impact of Drop Test Conditions on Brain Strain Location and Severity: A Novel Approach Using a Deep Learning Model. Annals of Biomedical Engineering. 52(8). 2234-2246.
Keywords
Brain, Humans, Brain Concussion, Models, Biological, Football, Biomechanical Phenomena, Deep Learning, Brain strain, Rugby, Rotational motion, Finite element, Concussion
Ngā upoko tukutuku/Māori subject headings
ANZSRC fields of research
40 - Engineering::4017 - Mechanical engineering::401799 - Mechanical engineering not elsewhere classified
32 - Biomedical and clinical sciences::3202 - Clinical sciences::320225 - Sports medicine
32 - Biomedical and clinical sciences::3208 - Medical physiology::320802 - Human biophysics
32 - Biomedical and clinical sciences::3202 - Clinical sciences::320220 - Pathology (excl. oral pathology)
32 - Biomedical and clinical sciences::3209 - Neurosciences::320999 - Neurosciences not elsewhere classified
Rights
All rights reserved unless otherwise stated