Trauma Follow-Up Prediction (Project 2: Aim 2)

NANot yet recruitingINTERVENTIONAL
Enrollment

852

Participants

Timeline

Start Date

June 30, 2024

Primary Completion Date

March 31, 2025

Study Completion Date

December 31, 2025

Conditions
Injury TraumaticInjuries
Interventions
DEVICE

Optimized version of the mHealth screening tool (intervention) using the machine learning approach

"An improvement to the mHealth triage tool using a machine learning approach, optimizing the efficiency of call schedule and the prediction of which patients are most likely to benefit from follow-up care given data collected at the hospital through the Cameroon Trauma Registry, as well as post-discharge phone contact attempts and survey information. The backbone of the estimators is the ensemble machine learning algorithm the Superlearner, which has been applied to medical contexts, including injury and trauma. It is a theory-driven method based on cross-validation, which combines potentially many different learners (e.g., standard regression, tree regression, random forest, neural nets) such that the model chosen (a weighted average of the learners) is asymptotically equivalent to the so called Oracle - the learner that fits optimally for the data-generating distribution. Note, double-robust CV-TMLE versions of this estimator are available as the tmle3mopttx function in tlverse."

All Listed Sponsors
collaborator

Fogarty International Center of the National Institute of Health

NIH

collaborator

University of California, Los Angeles

OTHER

collaborator

University of California, Berkeley

OTHER

lead

University of Buea

OTHER

NCT05464017 - Trauma Follow-Up Prediction (Project 2: Aim 2) | Biotech Hunter | Biotech Hunter