Severe sepsis 3-hour bundle compliance and mortality.

Am J Infect Control

BayCare Health System, Clearwater, FL.

Published: November 2018

AI Article Synopsis

  • Severe sepsis significantly contributes to the death rates of hospitalized patients.
  • Tracking the adherence to a 3-hour treatment protocol (bundle) for severe sepsis and its impact on mortality revealed crucial findings.
  • Patients who received the complete treatment bundle showed better chances of survival in the hospital compared to those who did not receive it.

Article Abstract

Severe sepsis is a major cause of mortality among hospitalized patients. We tracked severe sepsis 3-hour bundle compliance and mortality over time. Those patients with severe sepsis who received the entire bundle had improved in-hospital survivability over those patients who did not receive the bundle.

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Source
http://dx.doi.org/10.1016/j.ajic.2018.04.228DOI Listing

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