Pneumonia is a leading cause of hospitalization and death. Antibiotics are the mainstay of treatment, but increasing antibiotic resistance among the bacteria that cause pneumonia threatens our ability to treat this disease. Patients who develop pneumonia after contact with the healthcare system are designated as having healthcare-associated pneumonia (HCAP), and are at increased risk for harboring bacteria that are resistant to the usual antibiotics. When such patients develop pneumonia, current guidelines recommend they be treated with 3 different antibiotics simultaneously to ensure adequate treatment for resistant organisms. However, such broad treatment can harm patients, either through direct toxicity (e.g. kidney damage) or through the development of superinfections with other bacteria (e.g. C. difficile infection, which can cause life-threatening diarrhea). Widespread use of unnecessary antibiotics can also increase the prevalence of resistant organisms, putting additional patients at risk. In caring for patients with HCAP, US physicians face several challenges. First, just because a patient was exposed to the healthcare system does not mean that the patient has a resistant infection. In fact, most patients with HCAP would be better off with standard therapy. However, physicians do not have a way of accurately determining an individual patient's risk for a resistant infection. Second, even if they knew the patient was at high risk for having a resistant infection, they do not know which antibiotic it will be resistant o until cultures are available, which usually takes several days.
The aim of this proposal is to use data from a large national sample of patients to create tools that physicians can use to assess an individual patient's risk of having a resistant infection and to choose the appropriate antibiotic. An experienced team will develop and test these tools, and then incorporate them into a widely-used commercially available electronic health record (EHR) in the form of a smart order set that will make a personalized antibiotic recommendation. We will then assess the effects of the order set on physician behavior and patient outcomes in a randomized trial. Examining the effectiveness of an electronic decision aid embedded in an EHR will test whether a smart order set can safely reduce antibiotic overuse by incorporating patient-specific factors into this complex decision process. This proposal builds upon our inter-disciplinary team's strong foundation of creating risk assessment tools and incorporating them into the EHR. Knowledge to be gained will inform best practices for HCAP treatment for hundreds of thousands of patients each year.

Public Health Relevance

'Reducing antimicrobial overuse in HCAP through personalized antimicrobial recommendations' will provide physicians with tools to individualize antibiotic treatment for half a million patients with healthcare-associated pneumonia each year. As part of this project, we will develop and validate risk prediction instruments that can be used by clinicians everywhere to personalize antibiotic recommendations based on an individual patient's history and risk factors. We will then test whether incorporating these instruments into a 'smart' order set embedded in an electronic health record will increase the number of patients who get appropriate antibiotic therapy and decrease the overall use of broad-spectrum antibiotics.

Agency
National Institute of Health (NIH)
Institute
Agency for Healthcare Research and Quality (AHRQ)
Type
Research Project (R01)
Project #
5R01HS024277-05
Application #
9749083
Study Section
Healthcare Patient Safety and Quality Improvement Research (HSQR)
Program Officer
Miller, Melissa
Project Start
2015-09-30
Project End
2020-07-31
Budget Start
2019-08-01
Budget End
2020-07-31
Support Year
5
Fiscal Year
2019
Total Cost
Indirect Cost
Name
Cleveland Clinic Lerner
Department
Type
DUNS #
City
Cleveland
State
OH
Country
United States
Zip Code
44195