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Giving pediatric patients a lot of extra TLC
技术
- 功能应用 - 远程监控系统
适用行业
- 医疗保健和医院
用例
- 结构健康监测
挑战
医院希望在每个房间安装摄像机,以便远程监控患者生命体征的护理人员也可以直观地看到孩子是否处于困境并立即就医。
客户
内穆尔儿童医院
关于客户
Nemours Children's 是该国最大的综合儿科卫生系统之一。我们所做的一切——我们的医疗、研究、教育、预防和宣传工作——都以儿童为中心。
解决方案
Nemours 创建了一个战术后勤中心 (TLC) - 也称为临床后勤中心 - 一个轮换的护理人员团队通过中央监控系统不断检查患者的生命体征。
除了临床数据外,TLC 还通过 Epic 软件集成了来自每个患者房间的 Axis 网络摄像机的实时流媒体视频。
运营影响
数量效益
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