Deep Learning to Optimize Magnetic Resonance Imaging Prediction of Motor Outcomes After Hypoxic-Ischemic Encephalopathy - 17/11/23
, Shamik B. Trivedi, MD b, Hallie F. Morris, MD c, Robert C. McKinstry, MD, PhD d, Yi Li, MD e, Amit M. Mathur, MBBS, MD, MRCP (UK) f, Yvonne W. Wu, MD, MPH gAbstract |
Background |
Magnetic resonance imaging (MRI) is the gold standard for outcome prediction after hypoxic-ischemic encephalopathy (HIE). Published scoring systems contain duplicative or conflicting elements.
Methods |
Infants ≥36 weeks gestational age (GA) with moderate to severe HIE, therapeutic hypothermia treatment, and T1/T2/diffusion-weighted imaging were identified. Adverse motor outcome was defined as Bayley-III motor score <85 or Alberta Infant Motor Scale <10th centile at 12 to 24 months. MRIs were scored using a published scoring system.
Logistic regression (LR) and gradient-boosted deep learning (DL) models quantified the importance of clinical and imaging features. The cohort underwent 80/20 train/test split with fivefold cross validation. Feature selection eliminated low-value features.
Results |
A total of 117 infants were identified with mean GA = 38.6 weeks, median cord pH = 7.01, and median 10-minute Apgar = 5. Adverse motor outcome was noted in 23 of 117 (20%).
Putamen/globus pallidus injury on T1, GA, and cord pH were the most informative features. Feature selection improved model accuracy from 79% (48-feature MRI model) to 85% (three-feature model). The three-feature DL model had superior performance to the best LR model (area under the receiver-operator curve 0.69 versus 0.75).
Conclusions |
The parsimonious DL model predicted adverse HIE motor outcomes with 85% accuracy using only three features (putamen/globus pallidus injury on T1, GA, and cord pH) and outperformed LR.
Le texte complet de cet article est disponible en PDF.Keywords : HIE, MRI, Machine learning, Outcome, Neonatal
Plan
| Consent: Informed written consent was obtained for all participants before any study procedures. |
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| Statement of financial support: 1. NIH Career Development Awards: K23 NS111086 (Vesoulis). 2. NIH Project Grant U01 NS092764 (Wu). 3. Thrasher Research Fund (Wu). |
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| Data availability statement: Code for the deep learning algorithm is available under GNU General Public License at: ml_mri. Patient level data are not available due to privacy restrictions. |
Vol 149
P. 26-31 - décembre 2023 Retour au numéroBienvenue sur EM-consulte, la référence des professionnels de santé.
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