Classifying individuals based on a densely captured sequence of vital signs: An example using repeated blood pressure measurements during hemodialysis treatment.
Electronic Health Records (EHRs) present the opportunity to observe serial measurements on patients. While potentially informative, analyzing these data can be challenging. In this work we present a means to classify individuals based on a series of measurements collected by an EHR. Using patients undergoing hemodialysis, we categorized people based on their intradialytic blood pressure. Our primary criteria were that the classifications were time dependent and independent of other subjects. We fit a curve of intradialytic blood pressure using regression splines and then calculated first and second derivatives to come up with four mutually exclusive classifications at different time points. We show that these classifications relate to near term risk of cardiac events and are moderately stable over a succeeding two-week period. This work has general application for analyzing dense EHR data.
Duke Scholars
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Related Subject Headings
- Statistics as Topic
- Risk Assessment
- Renal Dialysis
- Medical Informatics
- Humans
- Heart Diseases
- Electronic Health Records
- Blood Pressure
- Biomedical Engineering
- 4601 Applied computing
Citation
Published In
DOI
EISSN
Publication Date
Volume
Start / End Page
Location
Related Subject Headings
- Statistics as Topic
- Risk Assessment
- Renal Dialysis
- Medical Informatics
- Humans
- Heart Diseases
- Electronic Health Records
- Blood Pressure
- Biomedical Engineering
- 4601 Applied computing