识别老年人意外跌倒风险的电子健康记录数据驱动模型

Q3 Medicine
Adam Baus, Jeffrey Coben, Keith Zullig, Cecil Pollard, Charles Mullett, Henry Taylor, Jill Cochran, Traci Jarrett, Dustin Long
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引用次数: 0

摘要

由于就诊时间有限,初级保健机构对意外跌倒风险的筛查仍然很低。全国性的研究表明,照顾老年人的医生只有30%到37%的时间提供推荐的跌倒风险筛查。鉴于先前在开发将电子健康记录数据重新用于识别跌倒风险的方法方面取得的成功,本研究涉及建立一个模型,在该模型中,电子健康记录数据可以应用于临床决策支持,通过主动识别筛查有益的患者并专门针对这些患者进行筛查,从而加强筛查。最后一个模型由优先级和扩展措施组成,显示出适度的歧视性,表明它可以在临床环境中用于识别有跌倒风险的患者。焦点小组讨论揭示了涉及使用跌倒相关数据的重要背景问题,并为卫生系统级创新的发展提供了方向,以便使用电子健康记录数据进行跌倒风险识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

An Electronic Health Record Data-driven Model for Identifying Older Adults at Risk of Unintentional Falls.

An Electronic Health Record Data-driven Model for Identifying Older Adults at Risk of Unintentional Falls.

Screening for risk of unintentional falls remains low in the primary care setting because of the time constraints of brief office visits. National studies suggest that physicians caring for older adults provide recommended fall risk screening only 30 to 37 percent of the time. Given prior success in developing methods for repurposing electronic health record data for the identification of fall risk, this study involves building a model in which electronic health record data could be applied for use in clinical decision support to bolster screening by proactively identifying patients for whom screening would be beneficial and targeting efforts specifically to those patients. The final model, consisting of priority and extended measures, demonstrates moderate discriminatory power, indicating that it could prove useful in a clinical setting for identifying patients at risk of falls. Focus group discussions reveal important contextual issues involving the use of fall-related data and provide direction for the development of health systems-level innovations for the use of electronic health record data for fall risk identification.

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来源期刊
CiteScore
1.90
自引率
0.00%
发文量
0
期刊介绍: Perspectives in Health Information Management is a scholarly, peer-reviewed research journal whose mission is to advance health information management practice and to encourage interdisciplinary collaboration between HIM professionals and others in disciplines supporting the advancement of the management of health information. The primary focus is to promote the linkage of practice, education, and research and to provide contributions to the understanding or improvement of health information management processes and outcomes.
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