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arXiv 提交日期: 2026-04-06
📄 Abstract - Learning, Potential, and Retention: An Approach for Evaluating Adaptive AI-Enabled Medical Devices

This work addresses challenges in evaluating adaptive artificial intelligence (AI) models for medical devices, where iterative updates to both models and evaluation datasets complicate performance assessment. We introduce a novel approach with three complementary measurements: learning (model improvement on current data), potential (dataset-driven performance shifts), and retention (knowledge preservation across modification steps), to disentangle performance changes caused by model adaptations versus dynamic environments. Case studies using simulated population shifts demonstrate the approach's utility: gradual transitions enable stable learning and retention, while rapid shifts reveal trade-offs between plasticity and stability. These measurements provide practical insights for regulatory science, enabling rigorous assessment of the safety and effectiveness of adaptive AI systems over sequential modifications.

顶级标签: medical model evaluation machine learning
详细标签: adaptive ai medical devices regulatory science performance assessment population shift 或 搜索:

学习、潜力与保留:一种评估自适应人工智能医疗设备的方法 / Learning, Potential, and Retention: An Approach for Evaluating Adaptive AI-Enabled Medical Devices


1️⃣ 一句话总结

这篇论文提出了一种评估自适应AI医疗设备的新方法,通过测量其学习能力、性能潜力和知识保留度,来区分模型自身改进和环境变化对性能的影响,为监管这类持续更新的智能医疗系统提供了实用工具。

源自 arXiv: 2604.04878