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Published in: BMC Medical Research Methodology 1/2023

Open Access 01-12-2023 | Osteoarthrosis | Research

Use of electronic health data to identify patients with moderate-to-severe osteoarthritis of the hip and/or knee and inadequate response to pain medications

Authors: Yi Lu, Michael L. Ganz, Rebecca L. Robinson, Anthony J. Zagar, Sandra Okala, Craig T. Hartrick, Beth Johnston, Patricia Dorling, May Slim, Sheena Thakkar, Ariel Berger

Published in: BMC Medical Research Methodology | Issue 1/2023

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Abstract

Background

No algorithms exist to identify important osteoarthritis (OA) patient subgroups (i.e., moderate-to-severe disease, inadequate response to pain treatments) in electronic healthcare data, possibly due to the complexity in defining these characteristics as well as the lack of relevant measures in these data sources. We developed and validated algorithms intended for use with claims and/or electronic medical records (EMR) to identify these patient subgroups.

Methods

We obtained claims, EMR, and chart data from two integrated delivery networks. Chart data were used to identify the presence or absence of the three relevant OA-related characteristics (OA of the hip and/or knee, moderate-to-severe disease, inadequate/intolerable response to at least two pain-related medications); the resulting classification served as the benchmark for algorithm validation. We developed two sets of case-identification algorithms: one based on a literature review and clinical input (predefined algorithms), and another using machine learning (ML) methods (logistic regression, classification and regression tree, random forest). Patient classifications based on these algorithms were compared and validated against the chart data.

Results

We sampled and analyzed 571 adult patients, of whom 519 had OA of hip and/or knee, 489 had moderate-to-severe OA, and 431 had inadequate response to at least two pain medications. Individual predefined algorithms had high positive predictive values (all PPVs ≥ 0.83) for identifying each of these OA characteristics, but low negative predictive values (all NPVs between 0.16–0.54) and sometimes low sensitivity; their sensitivity and specificity for identifying patients with all three characteristics was 0.95 and 0.26, respectively (NPV 0.65, PPV 0.78, accuracy 0.77). ML-derived algorithms performed better in identifying this patient subgroup (range: sensitivity 0.77–0.86, specificity 0.66–0.75, PPV 0.88–0.92, NPV 0.47–0.62, accuracy 0.75–0.83).

Conclusions

Predefined algorithms adequately identified OA characteristics of interest, but more sophisticated ML-based methods better differentiated between levels of disease severity and identified patients with inadequate response to analgesics. The ML methods performed well, yielding high PPV, NPV, sensitivity, specificity, and accuracy using either claims or EMR data. Use of these algorithms may expand the ability of real-world data to address questions of interest in this underserved patient population.
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Metadata
Title
Use of electronic health data to identify patients with moderate-to-severe osteoarthritis of the hip and/or knee and inadequate response to pain medications
Authors
Yi Lu
Michael L. Ganz
Rebecca L. Robinson
Anthony J. Zagar
Sandra Okala
Craig T. Hartrick
Beth Johnston
Patricia Dorling
May Slim
Sheena Thakkar
Ariel Berger
Publication date
01-12-2023
Publisher
BioMed Central
Published in
BMC Medical Research Methodology / Issue 1/2023
Electronic ISSN: 1471-2288
DOI
https://doi.org/10.1186/s12874-023-01964-y

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