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首页> 外文期刊>Journal of the American College of Radiology: JACR >Artificial Intelligence in Quality Improvement: Reviewing Uses of Artificial Intelligence in Noninterpretative Processes from Clinical Decision Support to Education and Feedback
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Artificial Intelligence in Quality Improvement: Reviewing Uses of Artificial Intelligence in Noninterpretative Processes from Clinical Decision Support to Education and Feedback

机译:质量改进中的人工智能:审查人工智能在非候选过程中的用途从临床决策支持到教育和反馈

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摘要

The radiology workflow can be segmented into three large groups: pre-interpretative processes, interpretation, and postinterpretative processes. Each stage of this workflow represents quality improvement opportunities for artificial intelligence and machine learning. Although the focus of recent research has been targeted toward optimization of image interpretation, this article describes significant use cases for artificial intelligence in both the pre-interpretative and postinterpretative aspects of radiology. We provide examples of how current applications of AI for quality improvement purposes across the radiology workflow have been implemented and how further integration of these technologies can significantly improve clinical efficiency, reduce radiologist work burden, and ultimately optimize patient care and outcomes.
机译:放射学工作流程可分为三大类:解释前流程、解释和解释后流程。该工作流程的每个阶段都代表了人工智能和机器学习的质量改进机会。尽管最近的研究重点是优化图像解释,但本文描述了放射学解释前和解释后方面人工智能的重要用例。我们提供了一些例子,说明了当前在整个放射学工作流程中为提高质量而应用人工智能的情况,以及这些技术的进一步集成如何能够显著提高临床效率,减轻放射科医生的工作负担,并最终优化患者护理和结果。

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