URI | http://purl.tuc.gr/dl/dias/F6942C3C-98E2-4F93-AFF4-150C2A905E3E | - |
Αναγνωριστικό | https://doi.org/10.1038/s41598-021-91614-4 | - |
Αναγνωριστικό | https://www.nature.com/articles/s41598-021-91614-4 | - |
Γλώσσα | en | - |
Μέγεθος | 19 pages | en |
Τίτλος | Recurrent neural network-based acute concussion classifier using raw resting state EEG data | en |
Δημιουργός | Thanjavur Karun | en |
Δημιουργός | Babul, Arif | en |
Δημιουργός | Foran Brandon | en |
Δημιουργός | Bielecki Maya | en |
Δημιουργός | Gilchrist Adam | en |
Δημιουργός | Christopoulos Dionysios | en |
Δημιουργός | Χριστοπουλος Διονυσιος | el |
Δημιουργός | Brucar Leyla R. | en |
Δημιουργός | Virji-Babul, Naznin, 1962- | en |
Εκδότης | Springer Nature | en |
Περίληψη | Concussion is a global health concern. Despite its high prevalence, a sound understanding of the mechanisms underlying this type of diffuse brain injury remains elusive. It is, however, well established that concussions cause significant functional deficits; that children and youths are disproportionately affected and have longer recovery time than adults; and that individuals suffering from a concussion are more prone to experience additional concussions, with each successive injury increasing the risk of long term neurological and mental health complications. Currently, the most significant challenge in concussion management is the lack of objective, clinically- accepted, brain-based approaches for determining whether an athlete has suffered a concussion. Here, we report on our efforts to address this challenge. Specifically, we introduce a deep learning long short-term memory (LSTM)-based recurrent neural network that is able to distinguish between non-concussed and acute post-concussed adolescent athletes using only short (i.e. 90 s long) samples of resting state EEG data as input. The athletes were neither required to perform a specific task nor expected to respond to a stimulus during data collection. The acquired EEG data were neither filtered, cleaned of artefacts, nor subjected to explicit feature extraction. The LSTM network was trained and validated using data from 27 male, adolescent athletes with sports related concussion, benchmarked against 35 non-concussed adolescent athletes. During rigorous testing, the classifier consistently identified concussions with an accuracy of > 90% and achieved an ensemble median Area Under the Receiver Operating Characteristic Curve (ROC/AUC) equal to 0.971. This is the first instance of a high-performing classifier that relies only on easy-to-acquire resting state, raw EEG data. Our concussion classifier represents a promising first step towards the development of an easy-to-use, objective, brain-based, automatic classification of concussion at an individual level. | en |
Τύπος | Peer-Reviewed Journal Publication | en |
Τύπος | Δημοσίευση σε Περιοδικό με Κριτές | el |
Άδεια Χρήσης | http://creativecommons.org/licenses/by/4.0/ | en |
Ημερομηνία | 2023-01-11 | - |
Ημερομηνία Δημοσίευσης | 2021 | - |
Θεματική Κατηγορία | Brain injuries | en |
Θεματική Κατηγορία | Machine learning | en |
Θεματική Κατηγορία | Neuroscience | en |
Βιβλιογραφική Αναφορά | K. Thanjavur, A. Babul, B. Foran, M. Bielecki, A. Gilchrist, D. T. Hristopulos, L. R. Brucar, and N. Virji-Babul, “Recurrent neural network-based acute concussion classifier using raw resting state EEG data,” Sci. Rep., vol. 11, no. 1, June 2021, doi: 10.1038/s41598-021-91614-4. | en |