Adverse events (AEs) ? harm to patients that results from medical care ? affect as many as 13.5% of hospitalized patients; half of these AEs are preventable and AEs particularly affect the elderly. AEs are notoriously difficult to measure accurately. A variety of paper and electronic trigger tools have been developed to identify AEs; however, their positive predictive value (PPV) is low, requiting subsequent, time-intensive manual chart review to accurately measure AEs. In the proposed project, we will use innovative, state-of-the-art machine interactive learning (IML) techniques to refine existing AE triggers, improving their accuracy substantially. We will also develop a novel AE Explorer to speed review of possible AEs, as well as an innovative package of predictive analytics tools and methods to measure and detect them. Our approach combines and compares expert-driven improvement with the most recent IML techniques to make triggers more accurate, with the ultimate goal of creating triggers that are accurate enough to stand in as proxies for actual measurement of harm. We call our approach Safety Promotion through Early Event Detection in the Elderly, or SPEEDe. Our team of accomplished machine learning, patient safety, risk management, AE detection, geriatric medicine and trigger tool experts will work together to carry out the specific aims of this project: (1) prototype and rapidly iterate a trigger review dashboard (the Adverse Event Explorer) using a user-centered design process, (2) develop and evaluate novel Interactive Machine Learning approaches for more efficient and accurate adverse event chart review and trigger refinement, and (3) Integrate Interactive Machine Learning into the Adverse Event Explorer and evaluate it prospectively in a clinical setting.

Public Health Relevance

Adverse events ? harm to patients that results from medical care ? are common and difficult to identify and measure using existing tools. Accurate real-time measures of adverse events would enable organizations to track harm over time, identify and prioritize areas for safety improvements, evaluate whether patient safety programs are effective, and communicate risks of harm to patients and caregivers. Through SPEEDe, we will develop an innovative machine- learning approach for accurately detecting adverse events in the elderly in real-time.

Agency
National Institute of Health (NIH)
Institute
National Institute on Aging (NIA)
Type
Research Project (R01)
Project #
1R01AG062499-01
Application #
9711286
Study Section
Biomedical Computing and Health Informatics Study Section (BCHI)
Program Officer
Salive, Marcel
Project Start
2019-05-01
Project End
2019-06-30
Budget Start
2019-05-01
Budget End
2019-06-30
Support Year
1
Fiscal Year
2019
Total Cost
Indirect Cost
Name
Brigham and Women's Hospital
Department
Type
DUNS #
030811269
City
Boston
State
MA
Country
United States
Zip Code
02115