Confidence intervals uncovered: Are we ready for real-world medical imaging AI?
Evangelia Christodoulou, Annika Reinke, Rola Houhou, Piotr Kalinowski,, Selen Erkan, Carole H. Sudre, Ninon Burgos, Sofi\`ene Boutaj, Sophie, Loizillon, Ma\"elys Solal, Nicola Rieke, Veronika Cheplygina, Michela, Antonelli, Leon D. Mayer, Minu D. Tizabi, M. Jorge Cardoso

TL;DR
This paper highlights the lack of performance variability reporting in medical imaging AI research, proposes a method to estimate confidence intervals from published data, and demonstrates that current reporting practices are insufficient for clinical translation.
Contribution
It introduces a polynomial approximation to estimate confidence intervals from mean performance metrics and assesses their implications in medical imaging AI publications.
Findings
Over 50% of papers do not report performance variability.
The polynomial model accurately estimates confidence intervals from mean scores.
Most studies lack sufficient evidence for clinical deployment decisions.
Abstract
Medical imaging is spearheading the AI transformation of healthcare. Performance reporting is key to determine which methods should be translated into clinical practice. Frequently, broad conclusions are simply derived from mean performance values. In this paper, we argue that this common practice is often a misleading simplification as it ignores performance variability. Our contribution is threefold. (1) Analyzing all MICCAI segmentation papers (n = 221) published in 2023, we first observe that more than 50% of papers do not assess performance variability at all. Moreover, only one (0.5%) paper reported confidence intervals (CIs) for model performance. (2) To address the reporting bottleneck, we show that the unreported standard deviation (SD) in segmentation papers can be approximated by a second-order polynomial function of the mean Dice similarity coefficient (DSC). Based on…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Machine Learning in Healthcare · Artificial Intelligence in Healthcare and Education
