TY - GEN
T1 - Applying Artificial Intelligence to clinical guidelines
T2 - The GLARE approach
AU - Terenziani, Paolo
AU - Montani, Stefania
AU - Bottrighi, Alessio
AU - Molino, Gianpaolo
AU - Torchio, Mauro
PY - 2008
Y1 - 2008
N2 - We present GLARE, a domain-independent system for acquiring, representing and executing clinical guidelines (GL). GLARE is characterized by the adoption of Artificial Intelligence (AI) techniques in the definition and implementation of the system. First of all, a high-level and user-friendly knowledge representation language has been designed. Second, a user-friendly acquisition tool, which provides expert physicians with various forms of help, has been implemented. Third, a tool for executing GL on a specific patient has been made available. At all the levels above, advanced AI techniques have been exploited, in order to enhance flexibility and user-friendliness and to provide decision support. Specifically, this chapter focuses on the methods we have developed in order to cope with (i) automatic resource-based adaptation of GL, (ii) representation and reasoning about temporal constraints in GL, (iii) decision making support, and (iv) model-based verification. We stress that, although we have devised such techniques within the GLARE project, they are mostly system-independent, so that they might be applied to other guideline management systems.
AB - We present GLARE, a domain-independent system for acquiring, representing and executing clinical guidelines (GL). GLARE is characterized by the adoption of Artificial Intelligence (AI) techniques in the definition and implementation of the system. First of all, a high-level and user-friendly knowledge representation language has been designed. Second, a user-friendly acquisition tool, which provides expert physicians with various forms of help, has been implemented. Third, a tool for executing GL on a specific patient has been made available. At all the levels above, advanced AI techniques have been exploited, in order to enhance flexibility and user-friendliness and to provide decision support. Specifically, this chapter focuses on the methods we have developed in order to cope with (i) automatic resource-based adaptation of GL, (ii) representation and reasoning about temporal constraints in GL, (iii) decision making support, and (iv) model-based verification. We stress that, although we have devised such techniques within the GLARE project, they are mostly system-independent, so that they might be applied to other guideline management systems.
KW - Acquisition
KW - Consistent checking
KW - Decision support
KW - Execution
KW - Representation
KW - Verification
UR - http://www.scopus.com/inward/record.url?scp=56149085230&partnerID=8YFLogxK
U2 - 10.3233/978-1-58603-873-1-273
DO - 10.3233/978-1-58603-873-1-273
M3 - Conference contribution
SN - 9781586038731
T3 - Studies in Health Technology and Informatics
SP - 273
EP - 282
BT - Computer-based Medical Guidelines and Protocols
PB - IOS Press
ER -