Development of a Multimodal Machine Learning-Based Prognostication Model for Traumatic Brain Injury Using Clinical Data and Computed Tomography Scans: A CENTER-TBI and CINTER-TBI Study.
- Resource Type
- Academic Journal
- Authors
- Hibi A; Institute of Medical Science, Departments of University of Toronto, Toronto, Ontario, Canada.; Medical Imaging, University of Toronto, Toronto, Ontario, Canada.; Division of Neurosurgery, St Michael's Hospital, Unity Health Toronto, Toronto, Ontario, Canada.; Cusimano MD; Institute of Medical Science, Departments of University of Toronto, Toronto, Ontario, Canada.; Division of Neurosurgery, St Michael's Hospital, Unity Health Toronto, Toronto, Ontario, Canada.; Bilbily A; Medical Imaging, University of Toronto, Toronto, Ontario, Canada.; Sunnybrook Health Sciences Centre, Toronto, Ontario, Canada.; Krishnan RG; Computer Science, University of Toronto, Toronto, Ontario, Canada.; Laboratory Medicine and Pathobiology, and University of Toronto, Toronto, Ontario, Canada.; Tyrrell PN; Institute of Medical Science, Departments of University of Toronto, Toronto, Ontario, Canada.; Medical Imaging, University of Toronto, Toronto, Ontario, Canada.; Statistical Sciences, University of Toronto, Toronto, Ontario, Canada.
- Source
- Publisher: Mary Ann Liebert Country of Publication: United States NLM ID: 8811626 Publication Model: Print-Electronic Cited Medium: Internet ISSN: 1557-9042 (Electronic) Linking ISSN: 08977151 NLM ISO Abbreviation: J Neurotrauma Subsets: MEDLINE
- Subject
- Language
- English
Computed tomography (CT) is an important imaging modality for guiding prognostication in patients with traumatic brain injury (TBI). However, because of the specialized expertise necessary, timely and dependable TBI prognostication based on CT imaging remains challenging. This study aimed to enhance the efficiency and reliability of TBI prognostication by employing machine learning (ML) techniques on CT images. A retrospective analysis was conducted on the Collaborative European NeuroTrauma Effectiveness Research in TBI (CENTER-TBI) data set ( n = 1016). An ML-driven binary classifier was developed to predict favorable or unfavorable outcomes at 6 months post-injury. The prognostic performance was assessed using the area under the curve (AUC) over fivefold cross-validation and compared with conventional models that depend on clinical variables and CT scoring systems. An external validation was performed using the Comparative Indian Neurotrauma Effectiveness Research in Traumatic Brain Injury (CINTER-TBI) data set ( n = 348). The developed model achieved superior performance without the necessity for manual CT assessments (AUC = 0.846 [95% CI: 0.843-0.849]) compared with the model based on the clinical and laboratory variables (AUC = 0.817 [95% CI: 0.814-0.820]) and established CT scoring systems requiring manual interpretations (AUC = 0.829 [95% CI: 0.826-0.832] for Marshall and 0.838 [95% CI: 0.835-0.841] for International Mission for Prognosis and Analysis of Clinical Trials in TBI [IMPACT]). The external validation demonstrated the prognostic capacity of the developed model to be significantly better (AUC = 0.859 [95% CI: 0.857-0.862]) than the model using clinical variables (AUC = 0.809 [95% CI: 0.798-0.820]). This study established an ML-based model that provides efficient and reliable TBI prognosis based on CT scans, with potential implications for earlier intervention and improved patient outcomes.