Identifying Risk of Opioid Use Disorder for Patients Taking Opioid
Medications with Deep Learning
- URL: http://arxiv.org/abs/2010.04589v1
- Date: Fri, 9 Oct 2020 14:18:07 GMT
- Title: Identifying Risk of Opioid Use Disorder for Patients Taking Opioid
Medications with Deep Learning
- Authors: Xinyu Dong, Jianyuan Deng, Sina Rashidian, Kayley Abell-Hart, Wei Hou,
Richard N Rosenthal, Mary Saltz, Joel Saltz, Fusheng Wang
- Abstract summary: The U.S. is experiencing an opioid epidemic, and there were more than 10 million opioid misusers aged 12 or older each year.
Identifying patients at high risk of Opioid Use Disorder (OUD) can help to make early clinical interventions to reduce the risk of OUD.
Our goal is to predict OUD patients among opioid prescription users through analyzing electronic health records with machine learning and deep learning methods.
- Score: 3.2663488776173573
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The United States is experiencing an opioid epidemic, and there were more
than 10 million opioid misusers aged 12 or older each year. Identifying
patients at high risk of Opioid Use Disorder (OUD) can help to make early
clinical interventions to reduce the risk of OUD. Our goal is to predict OUD
patients among opioid prescription users through analyzing electronic health
records with machine learning and deep learning methods. This will help us to
better understand the diagnoses of OUD, providing new insights on opioid
epidemic. Electronic health records of patients who have been prescribed with
medications containing active opioid ingredients were extracted from Cerner
Health Facts database between January 1, 2008 and December 31, 2017. Long
Short-Term Memory (LSTM) models were applied to predict opioid use disorder
risk in the future based on recent five encounters, and compared to Logistic
Regression, Random Forest, Decision Tree and Dense Neural Network. Prediction
performance was assessed using F-1 score, precision, recall, and AUROC. Our
temporal deep learning model provided promising prediction results which
outperformed other methods, with a F1 score of 0.8023 and AUCROC of 0.9369. The
model can identify OUD related medications and vital signs as important
features for the prediction. LSTM based temporal deep learning model is
effective on predicting opioid use disorder using a patient past history of
electronic health records, with minimal domain knowledge. It has potential to
improve clinical decision support for early intervention and prevention to
combat the opioid epidemic.
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