Enhancing hospital course and outcome prediction in patients with traumatic brain injury: A machine learning study.

Traumatic brain injury computed tomography glial fibrillary acidic protein machine learning predictive model ubiquitin C-terminal hydrolase

Journal

The neuroradiology journal
ISSN: 2385-1996
Titre abrégé: Neuroradiol J
Pays: United States
ID NLM: 101295103

Informations de publication

Date de publication:
03 Nov 2023
Historique:
medline: 3 11 2023
pubmed: 3 11 2023
entrez: 3 11 2023
Statut: aheadofprint

Résumé

We aimed to use machine learning (ML) algorithms with clinical, lab, and imaging data as input to predict various outcomes in traumatic brain injury (TBI) patients. In this retrospective study, blood samples were analyzed for glial fibrillary acidic protein (GFAP) and ubiquitin C-terminal hydrolase L1 (UCH-L1). The non-contrast head CTs were reviewed by two neuroradiologists for TBI common data elements (CDE). Three outcomes were designed to predict: discharged or admitted for further management (prediction 1), deceased or not deceased (prediction 2), and admission only, prolonged stay, or neurosurgery performed (prediction 3). Five ML models were trained. SHapley Additive exPlanations (SHAP) analyses were used to assess the relative significance of variables. Four hundred forty patients were used to predict predictions 1 and 2, while 271 patients were used in prediction 3. Due to Prediction 3's hospitalization requirement, deceased and discharged patients could not be utilized. The Random Forest model achieved an average accuracy of 1.00 for prediction 1 and an accuracy of 0.99 for prediction 2. The Random Forest model achieved a mean accuracy of 0.93 for prediction 3. Key features were extracranial injury, hemorrhage, UCH-L1 for prediction 1; The Glasgow Coma Scale, age, GFAP for prediction 2; and GFAP, subdural hemorrhage volume, and pneumocephalus for prediction 3, per SHAP analysis. Combining clinical and laboratory parameters with non-contrast CT CDEs allowed our ML models to accurately predict the designed outcomes of TBI patients. GFAP and UCH-L1 were among the significant predictor variables, demonstrating the importance of these biomarkers.

Identifiants

pubmed: 37921691
doi: 10.1177/19714009231212364
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Pagination

19714009231212364

Déclaration de conflit d'intérêts

Declaration of conflicting interestsThe author(s) declared no potential conflicts of interest with respect to the research, authorship, and/or publication of this article.

Auteurs

Guangming Zhu (G)

Department of Neurology, The University of Arizona, USA.

Burak B Ozkara (BB)

Department of Neuroradiology, MD Anderson Cancer Center, USA.

Hui Chen (H)

Department of Neuroradiology, MD Anderson Cancer Center, USA.

Bo Zhou (B)

Neuroradiology Division, Department of Radiology, Stanford University, USA.

Bin Jiang (B)

Neuroradiology Division, Department of Radiology, Stanford University, USA.

Victoria Y Ding (VY)

Quantitative Sciences Unit, Department of Medicine, Stanford University, USA.

Max Wintermark (M)

Department of Neuroradiology, MD Anderson Cancer Center, USA.

Classifications MeSH