Original article
Automated Diabetes Case Identification Using Electronic Health Record Data at a Tertiary Care Facility

https://doi.org/10.1016/j.mayocpiqo.2017.04.005Get rights and content
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Abstract

Objective

To develop and validate a phenotyping algorithm for the identification of patients with type 1 and type 2 diabetes mellitus (DM) preoperatively using routinely available clinical data from electronic health records.

Patients and Methods

We used first-order logic rules (if-then-else rules) to imply the presence or absence of DM types 1 and 2. The “if” clause of each rule is a conjunction of logical and, or predicates that provides evidence toward or against the presence of DM. The rule includes International Classification of Diseases, Ninth Revision, Clinical Modification diagnostic codes, outpatient prescription information, laboratory values, and positive annotation of DM in patients’ clinical notes. This study was conducted from March 2, 2015, through February 10, 2016. The performance of our rule-based approach and similar approaches proposed by other institutions was evaluated with a reference standard created by an expert reviewer and implemented for routine clinical care at an academic medical center.

Results

A total of 4208 surgical patients (mean age, 52 years; males, 48%) were analyzed to develop the phenotyping algorithm. Expert review identified 685 patients (16.28% of the full cohort) as having DM. Our proposed method identified 684 patients (16.25%) as having DM. The algorithm performed well—99.70% sensitivity, 99.97% specificity—and compared favorably with previous approaches.

Conclusion

Among patients undergoing surgery, determination of DM can be made with high accuracy using simple, computationally efficient rules. Knowledge of patients’ DM status before surgery may alter physicians’ care plan and reduce postsurgical complications. Nevertheless, future efforts are necessary to determine the effect of first-order logic rules on clinical processes and patient outcomes.

Abbreviations and Acronyms

CCW
Chronic Condition Data Warehouse
DDC
Durham Diabetes Coalition
DM
diabetes mellitus
eMERGE
Electronic Medical Records and Genomics
EHR
electronic health record
HbA1c
hemoglobin A1c
HbA1c of NYC
Hemoglobin A1c of New York City
ICD-9-CM
International Classification of Diseases, Ninth Revision, Clinical Modification
MICS
Mayo Integrated Clinical Systems
NLP
natural language processing
SUPREME-DM
Surveillance, Prevention, and Management of Diabetes Mellitus
T1DM
type 1 diabetes mellitus
T2DM
type 2 diabetes mellitus

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Grant Support: The work was supported in part by the Mayo Clinic Robert D. and Patricia E. Kern Center for the Science of Health Care Delivery and a grant from the National Institutes of Health (NIH) (grant number R01 GM105688-01). The content is solely the responsibility of the authors and does not necessarily represent the official views of the NIH. The funding sources for this work had no role in the study design; in the collection, analysis, and interpretation of data; in the writing of the report; or in the decision to submit the article for publication.

Potential Competing Interests: The authors report no competing interests.