Development and assessment of an abbreviated medication regimen complexity index (the A-MRCI)

Author:

Scrivens Rebekah P12,Liu Ina12,Niznik Joshua D34,Colmenares Evan W14,Vest Mary-Haston12,Jacobson Jennifer2,Deyo Zachariah M15

Affiliation:

1. Department of Pharmacy, UNC Health , Chapel Hill, NC

2. UNC Eshelman School of Pharmacy , Chapel Hill, NC , USA

3. Division of Geriatrics and Center for Aging and Health, UNC School of Medicine , Chapel Hill, NC

4. Division of Pharmaceutical Outcomes and Policy, UNC Eshelman School of Pharmacy , Chapel Hill, NC , USA

5. PACE Division, UNC Eshelman School of Pharmacy , Chapel Hill, NC , USA

Abstract

Abstract Purpose Adaptation of the Medication Regimen Complexity Index (MRCI) for automation in an electronic medical record has the potential to improve medication optimization and patient outcomes. The purpose of this study was to develop and evaluate an abbreviated medication regimen complexity index (A-MRCI) and compare its associations with patient-level factors to those of the MRCI. Methods The MRCI was modified via several rounds of review with an expert panel of clinical pharmacists and outcomes researchers. Medication data from 138 electronic health records were abstracted to calculate MRCI and A-MRCI scores for dosage form, dosing frequency, and additional directions. Comparison between indices was performed using inferential statistics for a 1-month sample of patients admitted to a cardiology or advanced heart failure service in 2017. Results A-MRCI scores were higher than MRCI scores (mean difference of 3.97, P < 0.0005; 95% CI, 2.21-5.71). A significant association was observed between the A-MRCI score and both length of stay (P = 0.0005) and polypharmacy (P < 0.0005), whereas an association between MRCI score and the patient-level factors examined was not demonstrated. Conclusion On average, A-MRCI scores were higher and more likely to be associated with several patient-level factors. Internal analyses show the potential for integration into an electronic health record for automation. However, further exploration of the A-MRCI in a larger external validation sample is warranted.

Publisher

Oxford University Press (OUP)

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