TY - JOUR
T1 - Predicting opioid overdose risk of patients with opioid prescriptions using electronic health records based on temporal deep learning
AU - Dong, Xinyu
AU - Deng, Jianyuan
AU - Hou, Wei
AU - Rashidian, Sina
AU - Rosenthal, Richard N.
AU - Saltz, Mary
AU - Saltz, Joel H.
AU - Wang, Fusheng
N1 - Publisher Copyright:
© 2021 Elsevier Inc.
PY - 2021/4
Y1 - 2021/4
N2 - The US is experiencing an opioid epidemic, and opioid overdose is causing more than 100 deaths per day. Early identification of patients at high risk of Opioid Overdose (OD) can help to make targeted preventative interventions. We aim to build a deep learning model that can predict the patients at high risk for opioid overdose and identify most relevant features. The study included the information of 5,231,614 patients from the Health Facts database with at least one opioid prescription between January 1, 2008 and December 31, 2017. Potential predictors (n = 1185) were extracted to build a feature matrix for prediction. Long Short-Term Memory (LSTM) based models were built to predict overdose risk in the next hospital visit. Prediction performance was compared with other machine learning methods assessed using machine learning metrics. Our sequential deep learning models built upon LSTM outperformed the other methods on opioid overdose prediction. LSTM with attention mechanism achieved the highest F-1 score (F-1 score: 0.7815, AUCROC: 0.8449). The model is also able to reveal top ranked predictive features by permutation important method, including medications and vital signs. This study demonstrates that a temporal deep learning based predictive model can achieve promising results on identifying risk of opioid overdose of patients using the history of electronic health records. It provides an alternative informatics-based approach to improving clinical decision support for possible early detection and intervention to reduce opioid overdose.
AB - The US is experiencing an opioid epidemic, and opioid overdose is causing more than 100 deaths per day. Early identification of patients at high risk of Opioid Overdose (OD) can help to make targeted preventative interventions. We aim to build a deep learning model that can predict the patients at high risk for opioid overdose and identify most relevant features. The study included the information of 5,231,614 patients from the Health Facts database with at least one opioid prescription between January 1, 2008 and December 31, 2017. Potential predictors (n = 1185) were extracted to build a feature matrix for prediction. Long Short-Term Memory (LSTM) based models were built to predict overdose risk in the next hospital visit. Prediction performance was compared with other machine learning methods assessed using machine learning metrics. Our sequential deep learning models built upon LSTM outperformed the other methods on opioid overdose prediction. LSTM with attention mechanism achieved the highest F-1 score (F-1 score: 0.7815, AUCROC: 0.8449). The model is also able to reveal top ranked predictive features by permutation important method, including medications and vital signs. This study demonstrates that a temporal deep learning based predictive model can achieve promising results on identifying risk of opioid overdose of patients using the history of electronic health records. It provides an alternative informatics-based approach to improving clinical decision support for possible early detection and intervention to reduce opioid overdose.
KW - Clinical decision support
KW - Deep learning
KW - Electronic health records
KW - Long short-term memory
KW - Opioid overdose
KW - Opioid poisoning
UR - http://www.scopus.com/inward/record.url?scp=85103668901&partnerID=8YFLogxK
U2 - 10.1016/j.jbi.2021.103725
DO - 10.1016/j.jbi.2021.103725
M3 - Article
C2 - 33711546
AN - SCOPUS:85103668901
SN - 1532-0464
VL - 116
JO - Journal of Biomedical Informatics
JF - Journal of Biomedical Informatics
M1 - 103725
ER -