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Abstract

Grant Number: 5R01LM006806-02
Project Title: INTELLIGENT CRITIQUING OF CLINICAL-GUIDELINE APPLICATION
PI Information:NameEmailTitle
GOLDSTEIN, MARY K. goldstein@stanford.edu ASSOCIATE DIRECTOR FOR CLINICAL AFFAIRS

Abstract: Clinical guidelines are a powerful method for standardization and uniform improvement of the quality of medical care. In the proposed research project, which we call Asgaard/DeGel, we will design and implement software solutions that support the design, application, and, in particular, quality assessment of the application of clinical guidelines by care providers. Our long-term objectives include provision of a standardized computational framework for specification, application, and runtime as well as retrospective quality assessment of clinical-guidelines. We will provide these solutions by using a novel framework for specification and interpretation of clinical guidelines. The new framework encodes explicitly both the therapeutic actions indicated by the guideline and the intermediate clinical process and outcome goals of the guideline designers, which we refer to as intentions. Intentions are represented as temporal patterns of care-provider actions or patient states to be maintained, achieved or avoided, using results from our previous work on interpretation and summarization of time-oriented clinical data. Intentions include both the intermediate and overall process pattern (care provider actions) to follow and the expected intermediate and final outcome pattern (patient states). The tasks that we are focusing on include (1) design-time tasks, such as specification, validation, and verification of the guideline, and (2) runtime tasks such as automated support to application of the guideline, recognition of care providers' intentions from their actions, and real-time as well as retrospective critiquing and quality assessment of care providers' application of he guideline, given the guideline and its intentions, the patient's medical record, and the analysis of the care provider's perceived intentions. In our previous work, we have designed a formal, machine-interpretable language, called Asbru, to represent and to annotate guidelines based on our framework, and implemented a small prototype interpreter for it. We will implement a full interpreter for the Asbru language and a set of software tools for specification, validation, and verification of Asbru guidelines. We will also design and implement a set of computational methods for runtime (during application) and retrospective quality assessment of clinical guideline application, both for individual patients and for populations of patients, using our intention-based model. We will rigorously test, validate, and evaluate our methodologies using collaborators in clinical areas such as oncology, hypertension, and endocrinology.

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

Thesaurus Terms:
artificial intelligence, computer assisted medical decision making, health care quality
computer system design /evaluation, experimental design, medical record, vocabulary development for information system
behavioral /social science research tag, clinical research, health services research tag, human data

Institution: STANFORD UNIVERSITY
STANFORD, CA 94305
Fiscal Year: 2002
Department: MEDICINE
Project Start: 01-APR-2000
Project End: 29-FEB-2004
ICD: NATIONAL LIBRARY OF MEDICINE
IRG: BLR


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