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118 Demographics and Real World Healthcare Cost and Utilization for Patients With Probable Tardive Dyskinesia

Published online by Cambridge University Press:  15 June 2018

Michael Polson
Affiliation:
Senior Director, Health Economics and Outcomes Research, Magellan Rx Management, Scottsdale, AZ
Chuck Yonan
Affiliation:
Senior Director, Health Economics and Outcomes Research, Neurocrine Biosciences, Inc., San Diego, CA
Ted Williams
Affiliation:
Senior Clinical Project Manager, Health Economics and Outcomes Research, Magellan Rx Management, Scottsdale, AZ
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Abstract

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Background

Tardive dyskinesia (TD) is a movement disorder associated with prolonged exposure to antipsychotics. The current study was designed to describe demographics and comorbidities for patients with a dyskinesia diagnosis as probable TD (cohort 1), patients likely to have undiagnosed/uncoded TD (cohort 2), and a control population.

Methods

This retrospective study analyzed Medicaid claims data from July 2013-March 2017. For a pool of patients with a history of 3 months or more of taking an antipsychotic, three cohorts were evaluated: cohort 1 (ICD-9/10 codes for dyskinesia); cohort 2 (propensity score matching to cohort 1); and cohort 3 (patients withschizophrenia, major depressive disorder [MDD], and/or bipolar disorder [BD] and history of ≤2 antipsychotic medications). Outcomes included patient characteristics, Charlson Comorbity Index (CCI) and healthcare utilization (pre-and post [12-month] period).

Results

Cohort sizes and characteristics were: cohort 1 (n=1,887; female, 68%; mean age, 42 years; MDD, 17%; BD, 48%); cohort 2 (n=1,572; female, 58%; mean age, 39 years; MDD, 22%; BD, 48%); cohort 3 (n=25,949; female, 67%; mean age, 40 years; MDD, 11%; BD, 49%). Cohorts 1 and 2 had higher comorbidity burden than cohort 3 (mean pre-index CCIs: 0.68, 0.79, and 0.47, respectively; p<0.001 for each cohort). After 12 months, mean per member per year healthcare costs were higher in cohort 1 and2 compared to cohort 3 ($21,293, $18,988, and $11,522, respectively), as were mean claims per member per year (185, 138, and 109, respectively).

Conclusion

In the study population, patients likely suffering from TD, ICD-9/10 code-confirmed or unconfirmed, have a higher overall comorbidity burden and healthcareutilization than those who probably do not have TD.

Funding Acknowledgements

This study was funded by Neurocrine Biosciences, Inc.

Type
Abstracts
Copyright
© Cambridge University Press 2018