Syndromic Surveillance Data for Accidental Fall Injury.

Online journal of public health informatics Pub Date : 2021-12-24 eCollection Date: 2021-01-01 DOI:10.5210/ojphi.v13i3.10264
Donald E Brannen, Melissa Howell, Ashley Steveley, Jeff Webb, Deidre Owsley
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引用次数: 1

Abstract

Background: Fall injuries (FI) are a priority for public health planning. Syndromic surveillance (SS) is used to detect outbreaks, environmental exposures, and bioterrorism in real time. Since information is gathered on patients, the utility of using this system for FI should be evaluated.

Methods: Strategies to integrate FI medical and SS data were compared using a cohort versus case control (CC) study design.

Results: The CC study was accurate 77.7% (57.7-91.3) of the time versus 100% for a cohort design. The CC study design found FI increased for older age groups, female gender, November, and December months. Dates with any freezing temperature had a higher case fatality rate. Repeat acute care visits increased the risk of FI diagnosis by over 6% and trended upward with each visit (R=.333, p<.001).

Conclusions: The CC diagnostic quality of FI were better for age and gender than for area. The CC study found the indicators of increased risk of FI including freezing temperature, repeat acute care visits, older age groups, female gender, November, and December months. A gradient of increasing odds of FI with the number of acute care visits provides proof that community fall prevention programs should focus on those most likely to fall. A CC design of SS data can quickly identify indicators of FI with a lower accuracy but with less cost than a full cohort study, thus providing a method to focus local public health interventions.

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意外跌倒损伤的综合征监测数据。
背景:跌倒损伤(FI)是公共卫生规划的重点。综合征监测(SS)用于实时检测疫情、环境暴露和生物恐怖主义。由于收集了患者的信息,因此应该评估使用该系统进行FI的效用。方法:采用队列与病例对照(CC)研究设计,比较整合FI医学数据和SS数据的策略。结果:CC研究的准确率为77.7%(57.7-91.3),而队列设计的准确率为100%。CC研究设计发现,老年群体、女性、11月和12月的FI增加。任何冰点温度的日期都有较高的病死率。重复急诊就诊使FI诊断的风险增加了6%以上,并且每次就诊都呈上升趋势(R=。结论:FI对CC的诊断质量在年龄和性别上优于区域。CC研究发现,FI风险增加的指标包括冰冻温度、重复急症就诊、年龄较大的年龄组、女性、11月和12月。随着急诊就诊次数的增加,FI的几率呈梯度增加,这证明社区预防跌倒项目应该关注那些最有可能跌倒的人。SS数据的CC设计可以快速识别FI指标,准确性较低,但成本低于全队列研究,从而提供了一种集中地方公共卫生干预措施的方法。
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