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Predicting Healthcare Costs Using Classifiers

C.R. Stephens1,2, H. Waelbroeck1,3, S. Talley1, R. Cruz1, and A.S. Ash4,5

1Adaptive Technologies Inc., 6424 West Chisum Trail, Glendale, AZ 85310

2Instituto de Ciencias Nucleares, UNAM, A. Postal 70-543 México D.F. 04510

3eXa Inc., 51 East 42nd Street, Suite 602, New York, NY 10017

4Boston University School of Medicine

5DxCG Inc., Boston MA

Abstract. In the battle to control escalating health care costs, predictive models are increasingly employed to better allocate health care resources and to identify the “best” cases for preventive case management. In this investigation we predicted the top 0.5% most costly cases for year N+1, given a population in year N, with data for the period 1997-2001 taken from the MEDSTAT Marketscan Research Database for a cohort of privately insured individuals diagnosed with diabetes. We considered two performance metrics: i) classification accuracy, i.e. the proportion of correctly classified persons in the top 0.5% and ii) the total number of dollars associated with the predicted top 0.5% of most costly cases.

LNCS 3103, p. 1330 f.

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