logo
ResearchBunny Logo
A framework for evaluating clinical artificial intelligence systems without ground-truth annotations

Medicine and Health

A framework for evaluating clinical artificial intelligence systems without ground-truth annotations

D. Kiyasseh, A. Cohen, et al.

Discover how SUDO, developed by Dani Kiyasseh, Aaron Cohen, Chengsheng Jiang, and Nicholas Altieri, is revolutionizing the evaluation of clinical AI systems. This innovative framework leverages real-world data to highlight unreliable predictions and biases, paving the way for the ethical deployment of AI in medicine.... show more
Abstract
A clinical artificial intelligence (AI) system is often validated on data withheld during its development. This provides an estimate of its performance upon future deployment on data in the wild; those currently unseen but are expected to be encountered in a clinical setting. However, estimating performance on data in the wild is complicated by distribution shift between data in the wild and withheld data and the absence of ground-truth annotations. Here, we introduce SUDO, a framework for evaluating AI systems on data in the wild. Through experiments on AI systems developed for dermatology images, histopathology patches, and clinical notes, we show that SUDO can identify unreliable predictions, inform the selection of models, and allow for the previously out-of-reach assessment of algorithmic bias for data in the wild without ground-truth annotations. These capabilities can contribute to the deployment of trustworthy and ethical AI systems in medicine.
Publisher
Nature Communications
Published On
Feb 28, 2024
Authors
Dani Kiyasseh, Aaron Cohen, Chengsheng Jiang, Nicholas Altieri
Tags
SUDO
clinical AI systems
real-world data
algorithmic bias
model selection
trustworthy AI
medicine
Listen, Learn & Level Up
Over 10,000 hours of research content in 25+ fields, available in 12+ languages.
No more digging through PDFs, just hit play and absorb the world's latest research in your language, on your time.
listen to research audio papers with researchbunny