| Literature DB >> 34411708 |
Sarah Mullin1, Jaroslaw Zola2, Robert Lee3, Jinwei Hu2, Brianne MacKenzie2, Arlen Brickman2, Gabriel Anaya2, Shyamashree Sinha2, Angie Li2, Peter L Elkin4.
Abstract
Identification of patient subtypes from retrospective Electronic Health Record (EHR) data is fraught with inherent modeling issues, such as missing data and variable length time intervals, and the results obtained are highly dependent on data pre-processing strategies. As we move towards personalized medicine, assessing accurate patient subtypes will be a key factor in creating patient specific treatment plans. Partitioning longitudinal trajectories from irregularly spaced and variable length time intervals is a well-established, but open problem. In this work, we present and compare k-means approaches for subtyping opioid use trajectories from EHR data. We then interpret the resulting subtypes using decision trees, examining how each subtype is influenced by opioid medication features and patient diagnoses, procedures, and demographics. Finally, we discuss how the subtypes can be incorporated in static machine learning models as features in predicting opioid overdose and adverse events. The proposed methods are general, and can be extended to other EHR prescription dosage trajectories.Entities:
Keywords: Electronic health records; Longitudinal k-means clustering; Opioids; Patient subtypes; Trajectory analysis
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Year: 2021 PMID: 34411708 PMCID: PMC9035269 DOI: 10.1016/j.jbi.2021.103889
Source DB: PubMed Journal: J Biomed Inform ISSN: 1532-0464 Impact factor: 8.000