Literature DB >> 28466088

Combining Contrast Mining with Logistic Regression To Predict Healthcare Utilization in a Managed Care Population.

Lincoln Sheets1, Gregory F Petroski, Yan Zhuang, Michael A Phinney, Bin Ge, Jerry C Parker, Chi-Ren Shyu.   

Abstract

BACKGROUND: Because 5% of patients incur 50% of healthcare expenses, population health managers need to be able to focus preventive and longitudinal care on those patients who are at highest risk of increased utilization. Predictive analytics can be used to identify these patients and to better manage their care. Data mining permits the development of models that surpass the size restrictions of traditional statistical methods and take advantage of the rich data available in the electronic health record (EHR), without limiting predictions to specific chronic conditions.
OBJECTIVE: The objective was to demonstrate the usefulness of unrestricted EHR data for predictive analytics in managed healthcare.
METHODS: In a population of 9,568 Medicare and Medicaid beneficiaries, patients in the highest 5% of charges were compared to equal numbers of patients with the lowest charges. Contrast mining was used to discover the combinations of clinical attributes frequently associated with high utilization and infrequently associated with low utilization. The attributes found in these combinations were then tested by multiple logistic regression, and the discrimination of the model was evaluated by the c-statistic.
RESULTS: Of 19,014 potential EHR patient attributes, 67 were found in combinations frequently associated with high utilization, but not with low utilization (support>20%). Eleven of these attributes were significantly associated with high utilization (p<0.05). A prediction model composed of these eleven attributes had a discrimination of 84%.
CONCLUSIONS: EHR mining reduced an unusably high number of patient attributes to a manageable set of potential healthcare utilization predictors, without conjecturing on which attributes would be useful. Treating these results as hypotheses to be tested by conventional methods yielded a highly accurate predictive model. This novel, two-step methodology can assist population health managers to focus preventive and longitudinal care on those patients who are at highest risk for increased utilization.

Entities:  

Keywords:  Data mining; clinical decision support; data reuse; practice management; prediction models

Mesh:

Year:  2017        PMID: 28466088      PMCID: PMC6241738          DOI: 10.4338/ACI-2016-05-RA-0078

Source DB:  PubMed          Journal:  Appl Clin Inform        ISSN: 1869-0327            Impact factor:   2.342


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