Lessons learned from the hospital to home community care program in Singapore and the supporting AI multiple readmissions prediction model

John Abisheganaden, Kheng Hock Lee, Lian Leng Low, Eugene Shum, Han Leong Goh, Christine Gia Lee Ang, Andy Wee An Ta, Steven M. Miller
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Abstract

In a prior practice and policy article published in Healthcare Science, we introduced the deployed application of an artificial intelligence (AI) model to predict longer-term inpatient readmissions to guide community care interventions for patients with complex conditions in the context of Singapore's Hospital to Home (H2H) program that has been operating since 2017. In this follow on practice and policy article, we further elaborate on Singapore's H2H program and care model, and its supporting AI model for multiple readmission prediction, in the following ways: (1) by providing updates on the AI and supporting information systems, (2) by reporting on customer engagement and related service delivery outcomes including staff-related time savings and patient benefits in terms of bed days saved, (3) by sharing lessons learned with respect to (i) analytics challenges encountered due to the high degree of heterogeneity and resulting variability of the data set associated with the population of program participants, (ii) balancing competing needs for simpler and stable predictive models versus continuing to further enhance models and add yet more predictive variables, and (iii) the complications of continuing to make model changes when the AI part of the system is highly interlinked with supporting clinical information systems, (4) by highlighting how this H2H effort supported broader Covid-19 response efforts across Singapore's public healthcare system, and finally (5) by commenting on how the experiences and related capabilities acquired from running this H2H program and related community care model and supporting AI prediction model are expected to contribute to the next wave of Singapore's public healthcare efforts from 2023 onwards. For the convenience of the reader, some content that introduces the H2H program and the multiple readmissions AI prediction model that previously appeared in the prior Healthcare Science publication is repeated at the beginning of this article.

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新加坡医院到家庭社区护理项目的经验教训和支持人工智能的多次再入院预测模型
在之前发表在《医疗保健科学》上的一篇实践和政策文章中,我们介绍了人工智能(AI)模型的部署应用,以预测长期住院患者的再次入院,从而在新加坡自2017年开始实施的“院对家”(H2H)计划的背景下,指导对复杂疾病患者的社区护理干预。在这篇后续实践和政策文章中,我们通过以下方式进一步阐述了新加坡的H2H计划和护理模型,以及用于多次再入院预测的支持人工智能模型:(1)通过提供人工智能和支持信息系统的更新,(2)通过报告客户参与度和相关服务提供结果,包括与员工相关的时间节约和患者节省的床位福利,(3)通过分享在以下方面的经验教训:(i)由于与项目参与者群体相关的数据集的高度异质性和由此产生的可变性而遇到的分析挑战,(ii)平衡对更简单和稳定的预测模型的竞争需求与继续进一步增强模型和添加更多预测变量的需求,以及(iii)当系统的AI部分与支持的临床信息系统高度互连时,继续进行模型更改的复杂性,(4)通过强调这项H2H努力如何支持新加坡公共医疗系统更广泛的新冠肺炎应对工作,最后(5)通过评论从运行该H2H计划和相关社区护理模型以及支持人工智能预测模型中获得的经验和相关能力,预计将如何为2023年以后的下一波新加坡公共医疗努力做出贡献。为了方便读者,本文开头重复了介绍H2H程序和先前在《医疗保健科学》出版物中出现的多次再入院人工智能预测模型的一些内容。
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