This paper quantitatively reveals the state-of-the-art and state-of-the-practice AI systems only achieve acceptable performance on the stringent conditions that all categories of subjects are known, which we call closed clinical settings, but fail to work in real-world clinical settings. Compared to the diagnosis task in the closed setting, real-world clinical settings pose severe challenges, and we must treat them differently. We build a clinical AI benchmark named Clinical AIBench to set up real-world clinical settings to facilitate researches. We propose an open, dynamic machine learning framework and develop an AI system named OpenClinicalAI to diagnose diseases in real-world clinical settings. The first versions of Clinical AIBench and OpenClinicalAI target Alzheimer's disease. In the real-world clinical setting, OpenClinicalAI significantly outperforms the state-of-the-art AI system. In addition, OpenClinicalAI develops personalized diagnosis strategies to avoid unnecessary testing and seamlessly collaborates with clinicians. It is promising to be embedded in the current medical systems to improve medical services.
翻译:本文从数量上揭示了最新和最新实践的AI系统在已知所有类别患者已知的严格条件下只能取得可接受的业绩,我们称之为封闭临床环境,但未能在现实世界临床环境中发挥作用。与封闭环境中的诊断任务相比,现实世界临床环境构成严重挑战,我们必须以不同的方式对待它们。我们建立了一个名为AIBENCH的临床AI基准,以建立真实世界的临床环境,以便利研究。我们提出了一个开放、动态的机器学习框架,并开发了一个名为OpenClinicalAI的AI系统,用于诊断现实世界临床环境中的疾病。第一种临床AIBENCH和OpenClinicalAI的目标疾病。在现实世界临床环境中,OpenClinicalAI大大超越了最先进的AI系统。此外,OpenClinicalAI还开发了个性化诊断战略,以避免不必要的测试,并与临床医生进行无缝合。它有望嵌入目前的医疗系统,以改善医疗服务。