Machine learning classification of EEG responses to pain-related vs non-pain-related stimulus in preterm infants
Document Type
Article
Publication Date
10-1-2025
Abstract
INTRODUCTION: Unmanaged pain in preterm infants can lead to long-term developmental consequences. Current pain assessment methods lack specificity, resulting in possible pain mismanagement in Neonatal Intensive Care Units (NICUs). This study explores the application of machine learning (ML) to differentiate between pain-related and non-pain-related cortical activity in preterm infants. OBJECTIVE: To evaluate the performance of ML models in distinguishing cortical EEG activity during a painful procedure in preterm infants across different postmenstrual ages (PMAs). METHODS: This observational study was conducted from June 2015 to May 2024 at Mount Sinai Hospital in Toronto, Canada, and University College London Hospital, United Kingdom. EEG data were collected from 72 preterm infants (27 females) during routine heel lance procedures while held in skin-to-skin contact. Infants' gestational ages ranged from 24 to 36 weeks with a mean PMA of 32.87 weeks. Five ML models-XGBoost, support vector machines, Random Forest, Logistic Regression (LR), and convolutional neural networks-distinguished EEG activity pre-heel and post-heel lance. RESULTS: Model performance was assessed using accuracy and area under the receiver operating characteristic curve (AUC). In the oldest PMA group (≥34 weeks), LR achieved the highest mean accuracy (82%) and AUC (0.90). Similarly, LR achieved the highest mean accuracy (70%) and AUC (0.94) in the middle PMA group (32-33 weeks, 6 days). In the youngest group (<32 weeks), all models except XGBoost performed relatively the same with a mean accuracy of 76% or 77% and a mean AUC of 0.82 or 0.80. CONCLUSION: Machine learning models demonstrate potential in distinguishing pain-related cortical activity, offering a pathway for improved neonatal pain assessment in NICUs.
Publication Title
Pain reports
Recommended Citation
Hamwi, L.,
Du, H.,
Jasim, S.,
Wang, X.,
Shah, V.,
Cheng, C.,
Fabrizi, L.,
Fitzgerald, M.,
Meek, J.,
Racine, N.,
Stedman, I.,
&
Pillai Riddell, R.
(2025).
Machine learning classification of EEG responses to pain-related vs non-pain-related stimulus in preterm infants.
Pain reports,
10(5), e1332.
http://doi.org/10.1097/PR9.0000000000001332
Retrieved from: https://digitalcommons.mtu.edu/michigantech-p2/2048