COMPUTATIONAL PROCESS REPRESENTATION IN A KNOWLEDGE BASE

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Presentation transcript:

COMPUTATIONAL PROCESS REPRESENTATION IN A KNOWLEDGE BASE GEORGE ACQUAAH-MENSAH, AARON GABOW, JENS EBERLEIN AND LAWRENCE HUNTER CENTER FOR COMPUTATIONAL PHARMACOLOGY THE UNIVERSITY OF COLORADO SCHOOL OF MEDICINE. DENVER, COLORADO.

KNOWLEDGE REPRESENTATION EXPERIMENTAL CONFIRMATION KNOWLEDGE DISCOVERY DATA KNOWLEDGE REPRESENTATION INFERENCE RULES CONCEPT INFERENCES RELATIONSHIP DATA PROCESS SUBSTANCE STUDY CONSTRUCT ANATOMY PROTEIN LIGAND EXPERIMENTAL CONFIRMATION KNOWLEDGE DISCOVERY

RELATIONSHIP INPUT OUTPUT PROCESS STORAGE OUTPUT EPHEMERAL OUTPUT DISPLAY OUTPUT PHYSIOLOGICAL PROCESS BEHAVIOR NON-BIOLOGICAL PROCESS COMPUTATIONAL PROCESS DESCRIPTRON ONTOLOGY PROCESSING DATA PROCESSING PATHWAY ANALYSIS PROMOTER ANALYSIS QTL ANALYSIS LITERATURE PROCESSING