Publication | Open Access
Predicting Patients with High Risk of Becoming High-Cost Healthcare Users in Ontario(Canada)
73
Citations
12
References
2014
Year
Primary CareHealthcare ResourcesHealthcare CostsPublic HealthHealth Services ResearchHigh RiskHealth PolicyDisease Risk AssessmentHealth Care AnalyticsHealth InsuranceOutcomes ResearchEconomic EvaluationHealthcare ValueEpidemiologyHealth Care DeliveryNursingHealth EconomicsLogistic RegressionHealth Care CostMedicine
Literature and original analysis of healthcare costs have shown that a small proportion of patients consume the majority of healthcare resources. A proactive approach is to target interventions towards those patients who are at risk of becoming high-cost users (HCUs). This approach requires identifying high-risk patients accurately before substantial avoidable costs have been incurred and health status has deteriorated further. We developed a predictive model to identify patients at risk of becoming HCUs in Ontario. HCUs were defined as the top 5% of patients incurring the highest costs. Information was collected on various demographic and utilization characteristics. The modelling technique used was logistic regression. If the top 5% of patients at risk of becoming HCUs are followed, the sensitivity is 42.2% and specificity is 97%. Alternatives for implementation of the model include collaboration between different levels of healthcare services for personalized healthcare interventions and interventions addressing needs of patient cohorts with high-cost conditions.
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