Version 2.5.2.0 CRISP Logo CRISP Homepage Help for CRISP Email Us

Abstract

Grant Number: 1R01LM006539-01
Project Title: SEMANTIC PARSER FOR MEDICAL FREE TEXT
PI Information:NameEmailTitle
HAUG, PETER J. peter.haug@ihc.com PROFESSOR

Abstract: DESCRIPTION (Taken from application abstract): Integrated clinical data bases are the cornerstones of computerized clinical information systems. As these systems evolve to support more and more of the health care delivered in this country, the completeness and accuracy of these data bases will increase in importance. So too will the need to capture the clinical data that they store in a form that computers can analyze and manipulate, a coded form. Much of the information currently captured fails this criterion; it is collected as a variety of free-text medical documents. This natural language data can be interpreted only by human readers. This proposal describes research intended to develop a natural language understanding system specifically aimed at extracting relevant clinical facts from medical free-text. It builds on previous work in two domains. In the domain of radiology an application has been developed that encodes relevant clinical data using a model of the semantics of sentences. This project seeks to extend that work by developing additional contextual models whose focus is the semantics of the entire x-ray report. In the domain of diagnostic coding, previous work has demonstrated a promising approach to encoding free-text admitting diagnoses using a semantic model derived from the work in radiology. This project seeks to extend that work by developing techniques to 1) manage the need for regular training to update knowledge structures in this system and 2) extend the semantic model to assist in recognizing misspellings and variations on accepted abbreviations. As a part of this project, two systems will be developed to explore these two complimentary parts of the natural language understanding problem. These systems will undergo a sequence of testing procedures as a part of formative evaluations. Ultimately, the goal of this project is to further techniques that allow the encoding of medical information captured as free-text into a form appropriate for research, quality assurance, the management of medical enterprises, and direct clinical decision support.

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

Thesaurus Terms:
health care facility information system, semantics, syntax, vocabulary development for information system
automated medical record system, data management, indexing, radiology
behavioral /social science research tag, computer processing of clinical data, human data

Institution: LDS HOSPITAL
SALT LAKE CITY, UT 84143
Fiscal Year: 1997
Department:
Project Start: 30-SEP-1997
Project End: 31-AUG-2000
ICD: NATIONAL LIBRARY OF MEDICINE
IRG: BLR


CRISP Homepage Help for CRISP Email Us