The fundamental problem of risk prediction for individuals: health AI, uncertainty, and personalized medicine
Lasai Barre\~nada, Ewout W Steyerberg, Dirk Timmerman, Doranne Thomassen, Laure Wynants, Ben Van Calster

TL;DR
This paper investigates the various sources of uncertainty in individual health risk predictions, revealing that model and applicability uncertainties often surpass estimation uncertainty, impacting personalized medicine.
Contribution
It empirically demonstrates the dominance of model and applicability uncertainty over estimation uncertainty in individual health risk predictions, emphasizing the need for cautious interpretation.
Findings
Estimation uncertainty can be overshadowed by model and applicability uncertainty.
Increasing training data reduces estimation uncertainty but not model/applicability uncertainty.
Individual risk estimates are often more uncertain than commonly assumed.
Abstract
Background: Clinical prediction models for a health condition are commonly evaluated regarding performance for a population, although decisions are made for individuals. The classic view relates uncertainty in risk estimates for individuals to sample size (estimation uncertainty) but uncertainty can also be caused by model uncertainty (variability in modeling choices) and applicability uncertainty (variability in measurement procedures and between populations). Methods: We used real and synthetic data for ovarian cancer diagnosis to train 59400 models with variations in estimation, model, and applicability uncertainty. We then used these models to estimate the probability of ovarian cancer in a fixed test set of 100 patients and evaluate the variability in individual estimates. Findings: We show empirically that estimation uncertainty can be strongly dominated by model uncertainty and…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Machine Learning in Healthcare · AI in cancer detection
