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dc.creatorMohammadi, I
dc.creatorWu, H
dc.creatorTurkcan, A
dc.creatorToscos, T
dc.creatorDoebbeling, BN
dc.date.accessioned2020-12-11T21:42:04Z
dc.date.available2020-12-11T21:42:04Z
dc.date.issued2018-11-01
dc.identifier.issn2150-1319
dc.identifier.issn2150-1327
dc.identifier.doihttp://dx.doi.org/10.34944/dspace/4364
dc.identifier.other30451063 (pubmed)
dc.identifier.urihttp://hdl.handle.net/20.500.12613/4382
dc.description.abstract© The Author(s) 2018. Objectives: Using predictive modeling techniques, we developed and compared appointment no-show prediction models to better understand appointment adherence in underserved populations. Methods and Materials: We collected electronic health record (EHR) data and appointment data including patient, provider and clinical visit characteristics over a 3-year period. All patient data came from an urban system of community health centers (CHCs) with 10 facilities. We sought to identify critical variables through logistic regression, artificial neural network, and naïve Bayes classifier models to predict missed appointments. We used 10-fold cross-validation to assess the models’ ability to identify patients missing their appointments. Results: Following data preprocessing and cleaning, the final dataset included 73811 unique appointments with 12,392 missed appointments. Predictors of missed appointments versus attended appointments included lead time (time between scheduling and the appointment), patient prior missed appointments, cell phone ownership, tobacco use and the number of days since last appointment. Models had a relatively high area under the curve for all 3 models (e.g., 0.86 for naïve Bayes classifier). Discussion: Patient appointment adherence varies across clinics within a healthcare system. Data analytics results demonstrate the value of existing clinical and operational data to address important operational and management issues. Conclusion: EHR data including patient and scheduling information predicted the missed appointments of underserved populations in urban CHCs. Our application of predictive modeling techniques helped prioritize the design and implementation of interventions that may improve efficiency in community health centers for more timely access to care. CHCs would benefit from investing in the technical resources needed to make these data readily available as a means to inform important operational and policy questions.
dc.format.extent215013271881169-215013271881169
dc.language.isoen
dc.relation.haspartJournal of Primary Care and Community Health
dc.relation.isreferencedbySAGE Publications
dc.rightsCC BY-NC
dc.rights.urihttp://creativecommons.org/licenses/by-nc/4.0/
dc.subjectaccess to care
dc.subjectappointment non-adherence
dc.subjectcommunity health centers
dc.subjectelectronic health records
dc.subjectpredictive modeling
dc.subjectAdolescent
dc.subjectAdult
dc.subjectAppointments and Schedules
dc.subjectBayes Theorem
dc.subjectCell Phone
dc.subjectChild
dc.subjectChild, Preschool
dc.subjectCommunity Health Centers
dc.subjectData Science
dc.subjectElectronic Health Records
dc.subjectFemale
dc.subjectHumans
dc.subjectInfant
dc.subjectLogistic Models
dc.subjectMale
dc.subjectMedically Underserved Area
dc.subjectMiddle Aged
dc.subjectNeural Networks, Computer
dc.subjectNo-Show Patients
dc.subjectPrimary Health Care
dc.subjectSmoking
dc.subjectSocioeconomic Factors
dc.subjectTime Factors
dc.subjectYoung Adult
dc.titleData Analytics and Modeling for Appointment No-show in Community Health Centers
dc.typeArticle
dc.type.genreJournal Article
dc.relation.doi10.1177/2150132718811692
dc.ada.noteFor Americans with Disabilities Act (ADA) accommodation, including help with reading this content, please contact scholarshare@temple.edu
dc.creator.orcidWu, Huanmei|0000-0003-0346-6044
dc.date.updated2020-12-11T21:42:00Z
refterms.dateFOA2020-12-11T21:42:04Z


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