Version 2.5.2.0 CRISP Logo CRISP Homepage Help for CRISP Email Us

Abstract

Grant Number: 5K22LM008805-02
Project Title: Automated Detection of Medical Errors
PI Information:NameEmailTitle
STETSON, PETER D. peter.stetson@dbmi.columbia.edu

Abstract: DESCRIPTION: The long-term goal of this proposal is to use the electronic medical record, including narrative text, to understand and encode the process of care for individual patients in order to improve patient safety. Achieving this goal has the potential to help detect adverse events, and to differentiate medical errors from appropriately tailored care. The specific aims for this proposal are as follows: 1) To understand and encode the process of care for individual patients using data in the electronic medical record, including narrative text. 2) To use a more detailed understanding of patients' processes of care to improve automated adverse event detection. 3) To match processes of care for individual patients against accepted care pathways in order to identify discrepancies. We will capitalize on three core technologies that are in active use by clinicians and researchers in our busy clinical setting: 1) a Web-based clinical information system and its associated clinical data repository (WebCIS), 2) a full medical language parser (MedLEE), and 3) a semi-structured, electronic physician documentation system built by the applicant specifically to support this project (eNote). Methods will include evaluating the performance (sensitivity, specificity and positive predictive value) of our system, DETER+MINE (DETecting ERrors Mining Narrative Electronically), to model the care process and detect adverse events and pathway deviations. We will utilize explicit process criteria and manual, retrospective chart review as a gold standard. This research is intended to provide proof of concept that combining natural language processing of clinical narrative with traditional sources of coded data is required for effective screening with automated defection systems. This approach has the potential to impact significantly on our ability to detect and investigate medical errors, adverse medical events, and pathway deviations by reducing reliance on costly and slow manual chart reviews.

Public Health Relevance:
This Public Health Relevance is not available.

Thesaurus Terms:
automated medical record system, biomedical automation, health care quality, information retrieval, method development, patient care management, patient safety /medical error
behavioral /social science research tag, clinical research, health services research tag, human data, medical record

Institution: COLUMBIA UNIVERSITY HEALTH SCIENCES
Columbia University Medical Center
NEW YORK, NY 100323702
Fiscal Year: 2006
Department: MEDICINE
Project Start: 30-SEP-2005
Project End: 29-SEP-2008
ICD: NATIONAL LIBRARY OF MEDICINE
IRG: ZLM1


CRISP Homepage Help for CRISP Email Us