Coding diagnosis and procedures in medical records is a crucial process in
the healthcare industry, which includes the creation of accurate billings,
receiving reimbursements from payers, and creating standardized patient care
records. In the United States, Billing and Insurance related activities cost
around 471billionin2012whichconstitutesabout25spending.Inthispaper,wereporttheperformanceofanaturallanguageprocessingmodelthatcanmapclinicalnotestomedicalcodes,andpredictfinaldiagnosisfromunstructuredentriesofhistoryofpresentillness,symptomsatthetimeofadmission,etc.Previousstudieshavedemonstratedthatdeeplearningmodelsperformbetteratsuchmappingwhencomparedtoconventionalmachinelearningmodels.Therefore,weemployedstate−of−the−artdeeplearningmethod,ULMFiTonthelargestemergencydepartmentclinicalnotesdatasetMIMICIIIwhichhas1.2Mclinicalnotestoselectforthetop−10andtop−50diagnosisandprocedurecodes.Ourmodelswereabletopredictthetop−10diagnosesandprocedureswith80.3top−50ICD−9codesofdiagnosisandproceduresarepredictedwith70.763.9clinicalnotesbenefithumancoderstosavetime,eliminateerrorsandminimizecosts.Withpromisingscoresfromourpresentmodel,thenextstepwouldbetodeploythisonasmall−scalereal−worldscenarioandcompareitwithhumancodersasthegoldstandard.Webelievethatfurtherresearchofthisapproachcancreatehighlyaccuratepredictionsthatcaneasetheworkflowinaclinicalsetting.