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Using Machine Learning Models to Identify Factors Associated With 30-Day Readmissions After Posterior Cervical Fusions: A Longitudinal Cohort Study.

Aneysis D Gonzalez-SuarezPaymon G RezaiiDaniel HerrickSeth Stravers TigchelaarJohn K RatliffMirabela RusuDavid ScheinkerIkchan JeonAtman M Desai
Published in: Neurospine (2024)
Five models (GBM, XGBoost [extreme gradient boosting], RF [random forest], LASSO [least absolute shrinkage and selection operator], and MLR) were evaluated, among which, the GBM model exhibited superior predictive performance, robustness, and accuracy. Factors associated with readmissions impact LR and GBM models differently, suggesting that these models can be used complementarily. When analyzing PCF procedures, the GBM model resulted in greater predictive performance and was associated with higher theoretical cost savings for readmissions associated with PCF complications.
Keyphrases
  • climate change
  • risk factors