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. 2017 Dec 19;17(1):175.
doi: 10.1186/s12911-017-0575-5.

Monitoring prescribing patterns using regression and electronic health records

Affiliations

Monitoring prescribing patterns using regression and electronic health records

Daniel Backenroth et al. BMC Med Inform Decis Mak. .

Abstract

Background: It is beneficial for health care institutions to monitor physician prescribing patterns to ensure that high-quality and cost-effective care is being provided to patients. However, detecting treatment patterns within an institution is challenging, given that medications and conditions are often not explicitly linked in the health record. Here we demonstrate the use of statistical methods together with data from the electronic health care record (EHR) to analyze prescribing patterns at an institution.

Methods: As a demonstration of our method, which is based on regression, we collect EHR data from outpatient notes and use a case/control study design to determine the medications that are associated with hypertension. We also use regression to determine which conditions are associated with a preferential use of one or more classes of hypertension agents. Finally, we compare our method to methods based on tabulation.

Results: Our results show that regression methods provide more reasonable and useful results than tabulation, and successfully distinguish between medications that treat hypertension and medications that do not. These methods also provide insight into in which circumstances certain drugs are preferred over others.

Conclusions: Our method can be used by health care institutions to monitor physician prescribing patterns and ensure the appropriateness of treatment.

Keywords: Electronic health records; Health care quality control; Prescribing patterns.

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Conflict of interest statement

Ethics approval and consent to participate

This study has been approved by the Columbia University Medical Center Institutional Review Board (protocol number AAAD6669). Consent by patients has been waived under HIPAA.

Consent for publication

Not applicable

Competing interests

CF is a consultant for Health Fidelity.

Publisher’s Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Figures

Fig. 1
Fig. 1
Outline of statistical procedure

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