Identifying unreliable predictions in clinical risk models.
Paul D MyersKenney NgKristen SeversonUri KartounWangzhi DaiWei HuangFrederick A AndersonCollin M StultzPublished in: NPJ digital medicine (2020)
The ability to identify patients who are likely to have an adverse outcome is an essential component of good clinical care. Therefore, predictive risk stratification models play an important role in clinical decision making. Determining whether a given predictive model is suitable for clinical use usually involves evaluating the model's performance on large patient datasets using standard statistical measures of success (e.g., accuracy, discriminatory ability). However, as these metrics correspond to averages over patients who have a range of different characteristics, it is difficult to discern whether an individual prediction on a given patient should be trusted using these measures alone. In this paper, we introduce a new method for identifying patient subgroups where a predictive model is expected to be poor, thereby highlighting when a given prediction is misleading and should not be trusted. The resulting "unreliability score" can be computed for any clinical risk model and is suitable in the setting of large class imbalance, a situation often encountered in healthcare settings. Using data from more than 40,000 patients in the Global Registry of Acute Coronary Events (GRACE), we demonstrate that patients with high unreliability scores form a subgroup in which the predictive model has both decreased accuracy and decreased discriminatory ability.
Keyphrases
- end stage renal disease
- ejection fraction
- newly diagnosed
- chronic kidney disease
- peritoneal dialysis
- prognostic factors
- randomized controlled trial
- coronary artery disease
- case report
- heart failure
- intensive care unit
- palliative care
- decision making
- coronary artery
- liver failure
- electronic health record
- patient reported outcomes
- chronic pain
- quality improvement
- magnetic resonance imaging
- social media
- left ventricular
- artificial intelligence
- respiratory failure
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- extracorporeal membrane oxygenation
- deep learning
- patient reported
- affordable care act