2023
DOI: 10.1186/s12911-023-02151-1
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Impact of the Covid-19 pandemic on the performance of machine learning algorithms for predicting perioperative mortality

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 morta… Show more

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“…Hinns et al study XAI generated by various predictors on a dataset and show how inconsistent model interpretations emerge among a set of random data sub-sets when using little data, and that by increasing the size of the data, interpretations of the random data subsets converge towards each other [19]. Andonov, Ulm, and Graessner show how a sudden shift in the input data impacts the performances of AI models as well as the explanation of the models [20].…”
Section: Missing Datamentioning
confidence: 99%
“…Hinns et al study XAI generated by various predictors on a dataset and show how inconsistent model interpretations emerge among a set of random data sub-sets when using little data, and that by increasing the size of the data, interpretations of the random data subsets converge towards each other [19]. Andonov, Ulm, and Graessner show how a sudden shift in the input data impacts the performances of AI models as well as the explanation of the models [20].…”
Section: Missing Datamentioning
confidence: 99%