Impact of the Covid-19 pandemic on the performance of machine learning algorithms for predicting perioperative mortality.

BMC Med Inform Decis Mak

Department of Anaesthesiology and Intensive Care Medicine, School of Medicine, Technical University of Munich, Munich, Germany.

Published: April 2023

AI Article Synopsis

  • The study examines how the performance of machine-learning models, specifically for predicting perioperative mortality, declined due to external changes, such as the Covid-19 pandemic.
  • Two prediction models were developed: one using pre-pandemic data, and others incorporating data from both pre-pandemic and pandemic periods, revealing that the XGBoost model performed more consistently than the Deep Learning model across pandemic phases.
  • Results indicated that models built solely on pre-pandemic data struggled during the pandemic's first wave, highlighting significant deterioration in prediction accuracy and changes in critical variables influencing model performance.

Article Abstract

Background: Machine-learning models are susceptible to external influences which can result in performance deterioration. The aim of our study was to elucidate the impact of a sudden shift in covariates, like the one caused by the Covid-19 pandemic, on model performance.

Methods: After ethical approval and registration in Clinical Trials (NCT04092933, initial release 17/09/2019), we developed different models for the prediction of perioperative mortality based on preoperative data: one for the pre-pandemic data period until March 2020, one including data before the pandemic and from the first wave until May 2020, and one that covers the complete period before and during the pandemic until October 2021. We applied XGBoost as well as a Deep Learning neural network (DL). Performance metrics of each model during the different pandemic phases were determined, and XGBoost models were analysed for changes in feature importance.

Results: XGBoost and DL provided similar performance on the pre-pandemic data with respect to area under receiver operating characteristic (AUROC, 0.951 vs. 0.942) and area under precision-recall curve (AUPR, 0.144 vs. 0.187). Validation in patient cohorts of the different pandemic waves showed high fluctuations in performance from both AUROC and AUPR for DL, whereas the XGBoost models seemed more stable. Change in variable frequencies with onset of the pandemic were visible in age, ASA score, and the higher proportion of emergency operations, among others. Age consistently showed the highest information gain. Models based on pre-pandemic data performed worse during the first pandemic wave (AUROC 0.914 for XGBoost and DL) whereas models augmented with data from the first wave lacked performance after the first wave (AUROC 0.907 for XGBoost and 0.747 for DL). The deterioration was also visible in AUPR, which worsened by over 50% in both XGBoost and DL in the first phase after re-training.

Conclusions: A sudden shift in data impacts model performance. Re-training the model with updated data may cause degradation in predictive accuracy if the changes are only transient. Too early re-training should therefore be avoided, and close model surveillance is necessary.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10092913PMC
http://dx.doi.org/10.1186/s12911-023-02151-1DOI Listing

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