Development and Implementation of a Birth Forecasting Tool to Optimize Resources in Obstetrical Care During the COVID-19 Pandemic: Mixed-Methods Study.

IF 2.3 Q2 PEDIATRICS
Huibert-Jan Joosse, Karin Jongsma, Marcel Moes, Kitty W Bloemenkamp, Wouter M Tiel Groenestege, Wouter W van Solinge, Saskia Haitjema, Maarten B Kok
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引用次数: 0

Abstract

Background: Medical resource allocation is important to ensure availability of care, especially in challenging circumstances like a pandemic. In fields of unpredictable care demand such as obstetrics, forecasting may help manage scarce resources.

Objective: The development, validation, and implementation of a regional birth forecasting tool to support obstetrical staff planning in the Utrecht region during the COVID-19 pandemic.

Methods: We combined predicted birth dates retrieved from Saltro, a large regional primary care laboratory, with data from the Dutch national perinatal registry (Perined) and Statistics Netherlands for model development. We created and implemented an HTML tool visualizing these forecasts, which were discussed during the regional acute obstetric health care network meetings. Six months after implementation, we assessed the impact of the tool using an evaluative stakeholder meeting.

Results: We achieved a performance accuracy (R) of 0.45, 0.61, and 0.67 (all actual number of births within 95% CI) forecasting the number of births in the region, pooled in 1-, 2-, and 3-weekly bins, respectively. After presenting these findings to stakeholders, we implemented a forecasting tool using the 2-week bin model. The evaluative stakeholder meeting proved that the tool improved communication, awareness of health care need, and collaborations among health care providers in the Utrecht region. Additionally, stakeholders identified additional applications, such as communication with patients and training of obstetric health care providers.

Conclusions: Implementation of a forecasting tool for the number of births based on available data across the health care system added value to obstetrical care by providing insight into care demand, and increasing communication, awareness, and collaboration between health care providers. Further research should aim at improving regional obstetric acute care by fostering data sharing in order to improve health care demand forecasts.

Abstract Image

Abstract Image

开发和实施出生预测工具以优化COVID-19大流行期间产科护理资源:混合方法研究
背景:医疗资源分配对于确保医疗服务的可获得性非常重要,特别是在大流行等具有挑战性的情况下。在护理需求难以预测的领域,如产科,预测可能有助于管理稀缺资源。目的:开发、验证和实施区域出生预测工具,以支持乌得勒支地区在COVID-19大流行期间的产科工作人员规划。方法:我们将从Saltro(一个大型区域性初级保健实验室)检索到的预测出生日期与荷兰国家围产期登记处(perine)和荷兰统计局的数据相结合,用于模型开发。我们创建并实施了一个HTML工具,将这些预测可视化,并在区域急性产科保健网络会议上进行了讨论。在实现六个月后,我们使用评估性涉众会议评估了工具的影响。结果:我们实现了0.45、0.61和0.67 (95% CI内的所有实际出生数)的性能准确度(R),预测该地区的出生数,分别集中在1周、2周和3周的箱子中。在向利益相关者展示这些发现后,我们使用2周bin模型实现了预测工具。评价性利益攸关方会议证明,该工具改善了乌得勒支地区卫生保健提供者之间的沟通、对卫生保健需求的认识和协作。此外,利益攸关方还确定了其他应用,例如与患者沟通和培训产科保健提供者。结论:基于整个卫生保健系统现有数据的出生人数预测工具的实施通过提供对护理需求的洞察,增加卫生保健提供者之间的沟通,意识和协作,为产科护理增加了价值。进一步的研究应着眼于通过促进数据共享来改善区域产科急诊护理,以便改进保健需求预测。
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来源期刊
JMIR Pediatrics and Parenting
JMIR Pediatrics and Parenting Medicine-Pediatrics, Perinatology and Child Health
CiteScore
5.00
自引率
5.40%
发文量
62
审稿时长
12 weeks
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