| Title | Quantitative electroencephalogram and machine learning to predict expired sevoflurane concentration in infants. |
| Publication Type | Journal Article |
| Year of Publication | 2025 |
| Authors | Kumar R, Skowno J, von Ungern-Sternberg BS, Davidson A, Xu T, Zhang J, Song XR, Zhang M, Zhao P, Liu H, Jiang Y, Zuo Y, de Graaff JC, Vutskits L, Olbrecht VA, Szmuk P, Simpao AF, Tsui FRich, Pratap JNick, Padiyath A, Nelson O, Kurth CD, Yuan I |
| Corporate Authors | BRAIN Collaborative Investigators |
| Journal | J Clin Monit Comput |
| Volume | 39 |
| Issue | 5 |
| Pagination | 999-1014 |
| Date Published | 2025 Oct |
| ISSN | 1573-2614 |
| Keywords | Algorithms, Anesthetics, Inhalation, Electroencephalography, Entropy, Female, Humans, Infant, Infant, Newborn, Machine Learning, Male, Reproducibility of Results, Sevoflurane, Signal Processing, Computer-Assisted, Support Vector Machine |
| Abstract | Processed electroencephalography (EEG) indices used to guide anesthetic dosing in adults are not validated in young infants. Raw EEG can be processed mathematically, yielding quantitative EEG parameters (qEEG). We hypothesized that machine learning combined with qEEG can accurately classify expired sevoflurane concentrations in young infants. Knowledge from this may contribute to development of future infant-specific EEG algorithms. Frontal EEG collected from infants ≤ 3 months were time-matched as one-minute epochs to expired sevoflurane (eSevo). Fifteen qEEG parameters were extracted from each epoch and eight machine learning models combined the qEEG to classify each epoch into one of four eSevo levels (%): 0.1-1.0, 1.0-2.1, 2.1-2.9, and > 2.9. 64 epochs formed the post hoc SHAP dataset to determine the qEEG that contributed most to the model. The remaining epochs were randomly split 50 times into 80/20 training/testing sets. Accuracy and F1-score determined model performance. 42 infants provided 4574 epochs. The top classifiers K-nearest neighbors, default multi-layer perceptron, and support vector machine achieved 67.5-68.7% accuracy. Burst suppression ratio and entropy β were the top contributors to the models. Post hoc analysis performed without burst suppression ratio yielded similar prediction performance. In young infants, machine learning applied to qEEG predicted eSevo levels with moderate success. Burst suppression ratio, the most important contributor, represented an efficient EEG feature that encapsulated underlying EEG changes seen on other qEEG features. These results provided insight into EEG parameter selection and optimal machine learning models used for future development of infant-specific EEG algorithms. |
| DOI | 10.1007/s10877-025-01301-2 |
| Alternate Journal | J Clin Monit Comput |
| PubMed ID | 40381151 |
| PubMed Central ID | PMC12474631 |
| Grant List | 2009322 / / Stan Perron Charitable Foundation and a National Health and Medical Research Council Investigator Grant / |
