TY - JOUR
T1 - Trajectory analysis for postoperative pain using electronic health records
T2 - A nonparametric method with robust linear regression and K-medians cluster analysis
AU - Weng, Yingjie
AU - Tian, Lu
AU - Tedesco, Dario
AU - Desai, Karishma
AU - Asch, Steven M.
AU - Carroll, Ian
AU - Curtin, Catherine
AU - McDonald, Kathryn M.
AU - Hernandez-Boussard, Tina
N1 - Funding Information:
The author(s) disclosed receipt of the following financial support for the research, authorship, and/or publication of this article: This project was supported by Grant No. R01HS024096 from the Agency for Healthcare Research and Quality. The content is solely the responsibility of the authors and does not necessarily represent the official views of the Agency for Healthcare Research and Quality.
Publisher Copyright:
© The Author(s) 2019.
PY - 2020/6/1
Y1 - 2020/6/1
N2 - Postoperative pain scores are widely monitored and collected in the electronic health record, yet current methods fail to fully leverage the data with fast implementation. A robust linear regression was fitted to describe the association between the log-scaled pain score and time from discharge after total knee replacement. The estimated trajectories were used for a subsequent K-medians cluster analysis to categorize the longitudinal pain score patterns into distinct clusters. For each cluster, a mixture regression model estimated the association between pain score and time to discharge adjusting for confounding. The fitted regression model generated the pain trajectory pattern for given cluster. Finally, regression analyses examined the association between pain trajectories and patient outcomes. A total of 3442 surgeries were identified with a median of 22 pain scores at an academic hospital during 2009–2016. Four pain trajectory patterns were identified and one was associated with higher rates of outcomes. In conclusion, we described a novel approach with fast implementation to model patients’ pain experience using electronic health records. In the era of big data science, clinical research should be learning from all available data regarding a patient’s episode of care instead of focusing on the “average” patient outcomes.
AB - Postoperative pain scores are widely monitored and collected in the electronic health record, yet current methods fail to fully leverage the data with fast implementation. A robust linear regression was fitted to describe the association between the log-scaled pain score and time from discharge after total knee replacement. The estimated trajectories were used for a subsequent K-medians cluster analysis to categorize the longitudinal pain score patterns into distinct clusters. For each cluster, a mixture regression model estimated the association between pain score and time to discharge adjusting for confounding. The fitted regression model generated the pain trajectory pattern for given cluster. Finally, regression analyses examined the association between pain trajectories and patient outcomes. A total of 3442 surgeries were identified with a median of 22 pain scores at an academic hospital during 2009–2016. Four pain trajectory patterns were identified and one was associated with higher rates of outcomes. In conclusion, we described a novel approach with fast implementation to model patients’ pain experience using electronic health records. In the era of big data science, clinical research should be learning from all available data regarding a patient’s episode of care instead of focusing on the “average” patient outcomes.
KW - K-medians cluster analysis
KW - electronic health records
KW - pain scores
KW - robust linear regression
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U2 - 10.1177/1460458219881339
DO - 10.1177/1460458219881339
M3 - Article
C2 - 31621460
AN - SCOPUS:85074424926
SN - 1460-4582
VL - 26
SP - 1404
EP - 1418
JO - Health informatics journal
JF - Health informatics journal
IS - 2
ER -