菜单

关于 🐙 GitHub
arXiv 提交日期: 2026-04-13
📄 Abstract - Development and evaluation of CADe systems in low-prevalence setting: The RARE25 challenge for early detection of Barrett's neoplasia

Computer-aided detection (CADe) of early neoplasia in Barrett's esophagus is a low-prevalence surveillance problem in which clinically relevant findings are rare. Although many CADe systems report strong performance on balanced or enriched datasets, their behavior under realistic prevalence remains insufficiently characterized. The RARE25 challenge addresses this gap by introducing a large-scale, prevalence-aware benchmark for neoplasia detection. It includes a public training set and a hidden test set reflecting real-world incidence. Methods were evaluated using operating-point-specific metrics emphasizing high sensitivity and accounting for prevalence. Eleven teams from seven countries submitted approaches using diverse architectures, pretraining, ensembling, and calibration strategies. While several methods achieved strong discriminative performance, positive predictive values remained low, highlighting the difficulty of low-prevalence detection and the risk of overestimating clinical utility when prevalence is ignored. All methods relied on fully supervised classification despite the dominance of normal findings, indicating a lack of prevalence-agnostic approaches such as anomaly detection or one-class learning. By releasing a public dataset and a reproducible evaluation framework, RARE25 aims to support the development of CADe systems robust to prevalence shift and suitable for clinical surveillance workflows.

顶级标签: medical computer vision model evaluation
详细标签: computer-aided detection low-prevalence benchmark barrett's esophagus neoplasia detection 或 搜索:

在低患病率环境中开发和评估CADe系统:针对巴雷特瘤早期检测的RARE25挑战 / Development and evaluation of CADe systems in low-prevalence setting: The RARE25 challenge for early detection of Barrett's neoplasia


1️⃣ 一句话总结

这篇论文通过RARE25挑战赛,揭示了在巴雷特食管癌变这种罕见病的实际低患病率场景下,现有计算机辅助检测系统虽然识别能力强,但阳性预测值普遍偏低,容易高估临床效用,并呼吁开发更适应真实患病率变化的检测方法。

源自 arXiv: 2604.11171