4.1 Article

Comparison of a predictive algorithm with receptionist triage for priority public dental care

Journal

COMMUNITY DENTISTRY AND ORAL EPIDEMIOLOGY
Volume 43, Issue 6, Pages 586-592

Publisher

WILEY
DOI: 10.1111/cdoe.12188

Keywords

dental; prediction model; sensitivity; specificity; triage; validation

Funding

  1. University of Adelaide Post-Graduate Research Scholarship

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ObjectiveTo determine the clinical validity and accuracy of an empirically derived triage model when compared with traditional priority assessment by receptionists. BackgroundThe use of predictive models to support evidence-based delivery of health care is increasing. Predictive models assist in predicting priority of need or treatment planning for patients and facilitate transparent and consistent decision-making. A predictive model for determining priority of need for dental care was evaluated against a reference standard dentist assessment and traditional receptionist assessment. MethodsWe sampled 310 patients seeking dental care. Participants were selected from people requesting care at two community dental clinics and who agreed to answer eight questions. Receptionists recorded their judgements of participant priority into three categories: care needed <48h, 2-7days or 8+ days. The reference standard' priority was determined by dental officers using the same categories. Model coefficients generated a predicted probability of requiring care. Sensitivity (Se), specificity (Sp), and predictive (PPV and NPV) and area under the curve (AUC) values were computed for two thresholds, <48h versus 2+ days and <2-7days versus 8+ days. ResultsAt <48-h threshold, the model PPV was higher and NPV lower than receptionists in predicting patients not needing care. At the 2- to 7-day threshold, the model also performed better than receptionists in predicting those needing care for 2-7days. AUC statistics show the model performed better than the traditional receptionist method. ConclusionsThe predictive model outperformed traditional receptionist screening in predicting priority of care.

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