重症监护室
远程医疗
构造(python库)
重症监护
过程(计算)
医疗急救
医学
计算机科学
医学教育
护理部
医疗保健
重症监护医学
经济
程序设计语言
经济增长
操作系统
作者
Jennifer Van Tiem,Julia Friberg,Jaime R. Wilson,Lynn Fitzwater,James M. Blum,Ralph J. Panos,Heather Schacht Reisinger,Jane Moeckli
出处
期刊:Telemedicine Journal and E-health
[Mary Ann Liebert, Inc.]
日期:2020-01-13
卷期号:26 (9): 1167-1177
被引量:9
标识
DOI:10.1089/tmj.2019.0135
摘要
Background: Generating, reading, or interpreting data is a component of Telemedicine-Intensive Care Unit (Tele-ICU) utilization that has not been explored in the literature. Introduction: Using the idea of "coherence," a construct of Normalization Process Theory, we describe how intensive care unit (ICU) and Tele-ICU staff made sense of their shared work and how they made use of Tele-ICU together. Materials and Methods: We interviewed ICU and Tele-ICU staff involved in the implementation of Tele-ICU during site visits to a Tele-ICU hub and 3 ICUs, at preimplementation (43 interviews with 65 participants) and 6 months postimplementation (44 interviews with 67 participants). Data were analyzed using deductive coding techniques and lexical searches. Results: In the early implementation of Tele-ICU, ICU and Tele-ICU staff lacked consensus about how to share information and consequently how to make use of innovations in data tracking and interpretation offered by the Tele-ICU (e.g., acuity systems). Attempts to collaborate and create opportunities for utilization were supported by quality improvement (QI) initiatives. Discussion: Characterizing Tele-ICU utilization as an element of a QI process limited how ICU staff understood Tele-ICU as an innovation. It also did not promote an understanding of how the Tele-ICU used data and may therefore attenuate the larger promise of Tele-ICU as a potential tool for leveraging big data in critical care. Conclusions: Shared data practices lay the foundation for Tele-ICU program utilization but raise new questions about how the promise of big data can be operationalized for bedside ICU staff.
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