Optimizing inpatient diabetes management with the diabetes dashboard.

IF 1.1 4区 医学 Q2 HEALTH CARE SCIENCES & SERVICES
Wenyong Wang, Gaurav Puri, Benjamin Sly, Mahnaz Samadbeik, Soong Ng, Jenna Newton, Clair Sullivan
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Abstract

Abstract: Inpatient diabetes management presents a complex challenge that is distinct from outpatient management. This is due to acute changes in physiology, medication regimens, and eating patterns associated with hospitalization, alongside the condition's prevalent and variable nature. The conventional systems for managing glycemic control in hospital have been found lacking, with gaps in data integration, decision support, and timely intervention. Queensland Health's development and adoption of the Glucose Management View and the Glucose Assessment for Inpatients (GAIN) dashboard represents a significant leap forward. The TIDieR checklist and guide have been used to report the implementation of these two interventions. The Glucose Management View, available within an individual's electronic medical record, provides an overview of demographics, relevant medication details, pathology data, and blood glucose levels. This cohesive and intuitive interface enhances individual patient trend visibility and facilitates diabetes medication prescribing. GAIN consolidates all diabetes-related patient data within the hospital into a single interface, enabling clinicians to monitor glycemic status across the whole cohort in near real-time, promoting a proactive approach to diabetes management. The future of inpatient diabetes care looks toward the incorporation of machine learning and artificial intelligence (AI) to predict adverse events and streamline care further. However, significant gaps remain in the deployment of these technologies, indicating a need for more comprehensive development and testing of all phases of the AI lifecycle, before integration into clinical practice.

Spanish abstract: http://links.lww.com/IJEBH/A308.

利用糖尿病仪表板优化住院糖尿病患者管理。
摘要:住院糖尿病患者的管理是一个复杂的挑战,不同于门诊管理。这是由于与住院治疗相关的生理、药物治疗方案和饮食模式的急性变化,以及病情的普遍性和多变性。传统的医院血糖控制管理系统缺乏,在数据整合、决策支持和及时干预方面存在差距。昆士兰州卫生部开发和采用了葡萄糖管理视图和住院患者葡萄糖评估(GAIN)仪表板,这是一个重大的飞跃。TIDieR检查表和指南已用于报告这两项干预措施的实施情况。葡萄糖管理视图可在个人电子医疗记录中使用,提供人口统计、相关药物详细信息、病理数据和血糖水平的概述。这种内聚和直观的界面增强了个体患者趋势的可见性,并促进了糖尿病药物处方。GAIN将医院内所有与糖尿病相关的患者数据整合到一个界面中,使临床医生能够近乎实时地监测整个队列的血糖状态,从而促进糖尿病管理的主动方法。未来住院糖尿病患者的护理将会结合机器学习和人工智能(AI)来预测不良事件并进一步简化护理。然而,在这些技术的部署方面仍然存在重大差距,这表明在整合到临床实践之前,需要对人工智能生命周期的所有阶段进行更全面的开发和测试。西班牙文摘要:http://links.lww.com/IJEBH/A308。
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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来源期刊
CiteScore
3.20
自引率
13.00%
发文量
23
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