Adverse drug events (ADEs) result in substantial patient morbidity and lead to over 100,000 deaths yearly. The timely identification of previously unknown toxicities of cancer drugs is an important, unsolved problem. In the United States, 20% of the 548 drugs introduced into the market between 1975 and 1999 were either withdrawn or acquired a new black box warning during the 25-year period following initial approval by the Food and Drug Administration. Adverse drug events are an important cause of morbidity and mortality in patients, yet 95% of ADEs are unreported, leading to delays in the detection of previously unknown ADEs and underestimation of the risk to known ADEs. It is known that Electronic Medical Record (EMR), discharge summaries, and lab results contain ADE information and biomedical natural language processing (BioNLP) provides automated tools that facilitate chart review and thus improve patient surveillance and post-marketing pharmacovigilance. The objectives for this proposal are to develop intelligent BioNLP approaches to extract disease, medication, and structured ADE information from EMRs, and then evaluate extracted ADEs for detecting known ADE types as well as clinically unrecognized or novel ADEs whose pattern or effect have not been previously identified.

Public Health Relevance

EMR Adverse Drug Event Detection This project proposes innovative intelligent biomedical natural language process approaches to automatically extract adverse drug event from the Electronic Medical Record. It is anticipated that the data resources, algorithms, and the Pharmacovigilance Toolkit developed will significantly enhance ADE detection, patient surveillance and post marketing pharmacovigilance.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Project--Cooperative Agreements (U01)
Project #
5U01CA180975-03
Application #
9123554
Study Section
Special Emphasis Panel (ZCA1)
Program Officer
Witherspoon, Kim
Project Start
2014-09-01
Project End
2017-08-31
Budget Start
2016-09-01
Budget End
2017-08-31
Support Year
3
Fiscal Year
2016
Total Cost
Indirect Cost
Name
University of Massachusetts Medical School Worcester
Department
Other Health Professions
Type
Schools of Medicine
DUNS #
603847393
City
Worcester
State
MA
Country
United States
Zip Code
Jagannatha, Abhyuday N; Yu, Hong (2016) Bidirectional RNN for Medical Event Detection in Electronic Health Records. Proc Conf 2016:473-482
Zheng, Jiaping; Yarzebski, Jorge; Ramesh, Balaji Polepalli et al. (2014) Automatically Detecting Acute Myocardial Infarction Events from EHR Text: A Preliminary Study. AMIA Annu Symp Proc 2014:1286-93
Polepalli Ramesh, Balaji; Belknap, Steven M; Li, Zuofeng et al. (2014) Automatically Recognizing Medication and Adverse Event Information From Food and Drug Administration's Adverse Event Reporting System Narratives. JMIR Med Inform 2:e10