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Machine learning algorithms performed no better than regression models for prognostication in traumatic brain injury.

Accepted version
Peer-reviewed

Type

Article

Change log

Authors

Gravesteijn, Benjamin Y 
Nieboer, Daan 
Lingsma, Hester F 
Nelson, David 

Abstract

OBJECTIVE: We aimed to explore the added value of common machine learning (ML) algorithms for prediction of outcome for moderate and severe traumatic brain injury. STUDY DESIGN AND SETTING: We performed logistic regression (LR), lasso regression, and ridge regression with key baseline predictors in the IMPACT-II database (15 studies, n = 11,022). ML algorithms included support vector machines, random forests, gradient boosting machines, and artificial neural networks and were trained using the same predictors. To assess generalizability of predictions, we performed internal, internal-external, and external validation on the recent CENTER-TBI study (patients with Glasgow Coma Scale <13, n = 1,554). Both calibration (calibration slope/intercept) and discrimination (area under the curve) was quantified. RESULTS: In the IMPACT-II database, 3,332/11,022 (30%) died and 5,233(48%) had unfavorable outcome (Glasgow Outcome Scale less than 4). In the CENTER-TBI study, 348/1,554(29%) died and 651(54%) had unfavorable outcome. Discrimination and calibration varied widely between the studies and less so between the studied algorithms. The mean area under the curve was 0.82 for mortality and 0.77 for unfavorable outcomes in the CENTER-TBI study. CONCLUSION: ML algorithms may not outperform traditional regression approaches in a low-dimensional setting for outcome prediction after moderate or severe traumatic brain injury. Similar to regression-based prediction models, ML algorithms should be rigorously validated to ensure applicability to new populations.

Description

Keywords

Cohort study, Data science, Machine learning, Prediction, Prognosis, Traumatic brain injury, Adult, Algorithms, Brain Injuries, Traumatic, Decision Making, Computer-Assisted, Female, Glasgow Coma Scale, Humans, Logistic Models, Machine Learning, Male, Middle Aged, Models, Statistical, Prognosis

Journal Title

J Clin Epidemiol

Conference Name

Journal ISSN

0895-4356
1878-5921

Volume Title

122

Publisher

Elsevier BV
Sponsorship
European Commission (602150)