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Classification of Opioid Usage Through Semi-Supervised Learning for Total Joint Replacement Patients

Authors
Lee, SujeeWei, ShujingWhite, VeronicaBain, Philip A.Baker, ChristineLi, Jingshan
Issue Date
Jan-2021
Publisher
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
Keywords
Surgery; Pain; Semisupervised learning; Hospitals; Machine learning; Predictive models; History; Opioid usage; semi-supervised classification; total knee replacement; total hip replacement; surgery
Citation
IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, v.25, no.1, pp.189 - 200
Journal Title
IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS
Volume
25
Number
1
Start Page
189
End Page
200
URI
http://scholarworks.bwise.kr/ssu/handle/2018.sw.ssu/40923
DOI
10.1109/JBHI.2020.2992973
ISSN
2168-2194
Abstract
Opioid misuse and overdose have become a public health hazard and caused drug addiction and death in the United States due to rapid increase in prescribed and non-prescribed opioid usage. The misuse and overdose are highly related to opioid over-prescription for chronic and acute pain treatment, where a one-size-fits-all prescription plan is often adopted but can lead to substantial leftovers for patients who only consume a few. To reduce over-prescription and opioid overdose, each patients opioid usage pattern should be taken into account. As opioids are often prescribed for patients after total joint replacement surgeries, this study introduces a machine learning model to predict each patients opioid usage level in the first 2 weeks after discharge. Specifically, the electronic health records, patient prescription history, and consumption survey data are collected to investigate the level of short-term opioid usage after joint replacement surgeries. However, there are a considerable number of answers missing in the surveys, which degrades data quality. To overcome this difficulty, a semi-supervised learning model that assigns pseudo labels via Bayesian regression is proposed. Using this model, the missing survey answers of opioids amount taken by the patients are predicted first. Then, based on the prediction, pseudo labels are assigned to those patients to improve classification performance. Extensive experiments indicate that such a semi-supervised learning model has shown a better performance in the resulting patients classification. It is expected that by using such a model the providers can adjust the amount of prescribed opioids to meet each patients actual need, which can benefit the management of opioid prescription and pain intervention.
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