Abstract

Temporal dataset shift associated with changes in healthcare over time is a barrier to deploying machine learning-based clinical decision support systems. Algorithms that learn robust models by estimating invariant properties across time periods for domain generalization (DG) and unsupervised domain adaptation (UDA) might be suitable to proactively mitigate dataset shift. The objective was to characterize the impact of temporal dataset shift on clinical prediction models and benchmark DG and UDA algorithms on improving model robustness. In this cohort study, intensive care unit patients from the MIMIC-IV database were categorized by year groups (2008–2010, 2011–2013, 2014–2016 and 2017–2019). Tasks were predicting mortality, long length of stay, sepsis and invasive ventilation. Feedforward neural networks were used as prediction models. The baseline experiment trained models using empirical risk minimization (ERM) on 2008–2010 (ERM[08–10]) and evaluated them on subsequent year groups. DG experiment trained models using algorithms that estimated invariant properties using 2008–2016 and evaluated them on 2017–2019. UDA experiment leveraged unlabelled samples from 2017 to 2019 for unsupervised distribution matching. DG and UDA models were compared to ERM[08–16] models trained using 2008–2016. Main performance measures were area-under-the-receiver-operating-characteristic curve (AUROC), area-under-the-precision-recall curve and absolute calibration error. Threshold-based metrics including false-positives and false-negatives were used to assess the clinical impact of temporal dataset shift and its mitigation strategies. In the baseline experiments, dataset shift was most evident for sepsis prediction (maximum AUROC drop, 0.090; 95% confidence interval (CI), 0.080–0.101). Considering a scenario of 100 consecutively admitted patients showed that ERM[08–10] applied to 2017–2019 was associated with one additional false-negative among 11 patients with sepsis, when compared to the model applied to 2008–2010. When compared with ERM[08–16], DG and UDA experiments failed to produce more robust models (range of AUROC difference, − 0.003 to 0.050). In conclusion, DG and UDA failed to produce more robust models compared to ERM in the setting of temporal dataset shift. Alternate approaches are required to preserve model performance over time in clinical medicine.

Highlights

  • Temporal dataset shift associated with changes in healthcare over time is a barrier to deploying machine learning-based clinical decision support systems

  • For each combination of outcome, experiment-specific characteristic, and evaluation metric (AUROC, area-under-precision-recall curve (AUPRC) and absolute calibration error (ACE)), we reported the median and 95% confidence interval (CI) of the distribution over mean performance in the test set obtained from 10,000 bootstrap iterations

  • Largest temporal dataset shift was observed for sepsis predictions in 2017–2019

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Summary

Introduction

Temporal dataset shift associated with changes in healthcare over time is a barrier to deploying machine learning-based clinical decision support systems. The past decade of machine learning research offered numerous algorithms that learn robust models by using data from multiple environments to identify invariant properties These algorithms were often developed for domain generalization (DG) and unsupervised domain adaptation (UDA). If we consider EHR data across discrete time windows as related but distinct environments, both DG and UDA settings may be suitable to combat the impact of temporal dataset shift To date, these approaches have not been evaluated on improving model robustness to temporal dataset shift for clinical prediction tasks. The objective was to benchmark learning algorithms for DG and UDA on mitigating the impact of temporal dataset shift on machine learning model performance in a set of clinical prediction tasks

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