The Second Australian Workshop on Artificial Intelligence in Health

A commercially used expert system using multiple-classification rippledown rules applied to the domain of pharmacist-conducted home medicines review was examined. The system was capable of detecting a wide range of potential drug-related problems. The system identified the same problems as pharmacists in many of the cases. Problems identified by pharmacists but not by the system may be related to missing information or information outside the domain model. Problems identified by the system but not by pharmacists may be associated with system consistency and perhaps human oversight or human selective prioritization. Problems identified by the system were considered relevant even though the system identified a larger number of problems than human

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