One-year employment outcome prediction after traumatic brain injury: A CENTER-TBI study
Author | Affiliation | |
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Van Deynse, Helena | ||
Other(s) | |||||
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Ragauskas, Arminas | |||||
Date | Volume | Issue | Start Page | End Page |
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2025-04-01 | 18 | 2 | 1 | 7 |
Indėliai: 7 autoriai + 251 tyrėjas (iš jų 4 iš Lietuvos). Visų skirtingų šalies verslo įstaigų (įmonių) ir užsienio institucijų prieskyrų skaičius - 148.
Art. no. 101716
Traumatic brain injury (TBI) can come with long term consequences for functional outcome that can complicate return to work.
This study aims to make accurate patient-specific predictions on one-year return to work after TBI using machine learning algorithms. Within this process, specific research questions were defined: 1 How can we make accurate predictions on employment outcome, and does this require follow-up data beyond hospitalization? 2 Which predictors are required to make accurate predictions? 3 Are predictions accurate enough for use in clinical practice?
This study used the core CENTER-TBI observational cohort dataset, collected across 18 European countries between 2014 and 2017. Hospitalized patients with sufficient follow-up data were selected for the current analysis (N = 586). Data regarding hospital stay and follow-up until three months post-injury were used to predict return to work after one year. Three distinct algorithms were used to predict employment outcomes: elastic net logistic regression, random forest and gradient boosting. Finally, a reduced model and corresponding ROC-curve was created.
Full models without follow-up achieved an area under the curve (AUC) of about 81 %, which increased up to 88 % with follow-up data. A reduced model with five predictors achieved similar results with an AUC of 90 %.
The addition of three-month follow-up data causes a notable increase in model performance. The reduced model - containing Glasgow Outcome Scale Extended, pre-injury job class, pre-injury employment status, length of stay and age - matched the predictive performance of the full models. Accurate predictions on post-TBI vocational outcomes contribute to realistic prognosis and goal setting, targeting the right interventions to the right patients.
URI | Access Rights |
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PubMed | Dokumento santrauka arba dalis / Document Summary or Part |
https://www.sciencedirect.com/science/article/abs/pii/S1936657424001651?via%3Dihub | Viso teksto dokumentas (prieiga prenumeratoriams) / Full Text Document (Access for Subscribers) |
https://hdl.handle.net/20.500.12512/249369 |