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Bhattacharyya72Microsoft PowerPoint@Lp&@P@q8#Gg  4  y--$xx--'@"Verdana-. 12  Ready Clinical Intelligence ."System-@Times New Roman-.  2 &" .-@"Verdana-. "2 &+Deriving Clinical .-@"Verdana-. *2 2Knowledge From Medical  .-@"Verdana-. 2 =, Data Using IT.-@Times New Roman-. 42 KDr. Suman Bhusan Bhattacharyya.-@Times New Roman-. 2 V0MBBS, ADHA, MBA.-՜.+,0@    On-screen ShowGE Healthcare |g  d Times New RomanVerdanaDefault DesignVReady Clinical Intelligence Deriving Clinical Knowledge From Medical Data Using IT Data Knowledge IntelligenceMost Important Areas of UseClinical Intelligence MethodologyFormal Paper-based Process*Current Paper-based Intelligence SourcesAssociated ProblemsHow IT Helps Fallacies of ITThe IT ProcessComparative Analysis Slide 13  Fonts UsedDesign Template Slide Titles /_{Dr. S. B. BhattacharyyaDr. S. B. Bhattacharyya  !"#$%&'()*+,-./0123456789:;<=>@ABCDEFHIJKLMNPQRSTUVYRoot EntrydO)Current UserOSummaryInformation(?PowerPoint Document( |DocumentSummaryInformation8G