Two Singapore public healthcare AI applications for national screening programs and other examples

Andy Wee An Ta, Han Leong Goh, Christine Ang, Lian Yeow Koh, Ken Poon, Steven M. Miller
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引用次数: 4

Abstract

This article explains how two AI systems have been incorporated into the everyday operations of two Singapore public healthcare nation-wide screening programs. The first example is embedded within the setting of a national level population health screening program for diabetes related eye diseases, targeting the rapidly increasing number of adults in the country with diabetes. In the second example, the AI assisted screening is done shortly after a person is admitted to one of the public hospitals to identify which inpatients—especially which elderly patients with complex conditions—have a high risk of being readmitted as an inpatient multiple times in the months following discharge. Ways in which healthcare needs and the clinical operations context influenced the approach to designing or deploying the AI systems are highlighted, illustrating the multiplicity of factors that shape the requirements for successful large-scale deployments of AI systems that are deeply embedded within clinical workflows. In the first example, the choice was made to use the system in a semi-automated (vs. fully automated) mode as this was assessed to be more cost-effective, though still offering substantial productivity improvement. In the second example, machine learning algorithm design and model execution trade-offs were made that prioritized key aspects of patient engagement and inclusion over higher levels of predictive accuracy. The article concludes with several lessons learned related to deploying AI systems within healthcare settings, and also lists several other AI efforts already in deployment and in the pipeline for Singapore's public healthcare system.

Abstract Image

两个新加坡公共医疗人工智能应用于国家筛查项目和其他例子
这篇文章解释了两个人工智能系统是如何被纳入新加坡两个公共医疗保健全国性筛查项目的日常运作的。第一个例子是在国家一级的糖尿病相关眼病人口健康筛查方案的背景下进行的,目标是该国迅速增加的成人糖尿病患者。在第二个例子中,人工智能辅助筛查是在一个人被送入公立医院后不久进行的,以确定哪些住院病人——尤其是那些病情复杂的老年病人——在出院后的几个月内有多次再次住院的高风险。强调了医疗保健需求和临床操作环境影响人工智能系统设计或部署方法的方式,说明了影响人工智能系统成功大规模部署需求的多种因素,这些人工智能系统深深嵌入临床工作流程中。在第一个例子中,选择在半自动化(相对于全自动)模式下使用系统,因为评估认为这种模式更具成本效益,尽管仍然提供了实质性的生产力改进。在第二个例子中,机器学习算法设计和模型执行权衡,优先考虑患者参与和包容的关键方面,而不是更高水平的预测准确性。本文总结了与在医疗保健环境中部署人工智能系统相关的几个经验教训,并列出了新加坡公共医疗保健系统已经部署和正在部署的其他几个人工智能工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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