TY - JOUR
T1 - SuperOrder
T2 - Provider order recommendation system for outpatient clinics
AU - Sung, Yi Shan
AU - Dravenstott, Ronald W.
AU - Darer, Jonathan D.
AU - Devapriya, Priyantha D.
AU - Kumara, Soundar
N1 - Publisher Copyright:
© The Author(s) 2019.
PY - 2020/6/1
Y1 - 2020/6/1
N2 - This study aims at developing SuperOrder, an order recommendation system for outpatient clinics. Using the electronic health record data available at midnight, SuperOrder predicts the order contents for each upcoming appointment on a daily basis. A two-level prediction framework is proposed. At the base-level, the predictions are produced by aggregating three machine learning methods. The meta-level predictions are generated by integrating the base-level predictions with the order co-occurrence network. We used the retrospective data between 1 April 2014 and 31 March 2015 in pulmonary clinics from five hospital sites within a large rural health care facility in Pennsylvania to test the feasibility. With a decrease of 6 per cent in the precision, the improvement of the recall at the meta-level is approximately 20 per cent from the base-level. This demonstrates that the proposed order co-occurrence network helps in increasing the performance of order predictions. The implementation will bring a more effective and efficient way to place outpatient orders.
AB - This study aims at developing SuperOrder, an order recommendation system for outpatient clinics. Using the electronic health record data available at midnight, SuperOrder predicts the order contents for each upcoming appointment on a daily basis. A two-level prediction framework is proposed. At the base-level, the predictions are produced by aggregating three machine learning methods. The meta-level predictions are generated by integrating the base-level predictions with the order co-occurrence network. We used the retrospective data between 1 April 2014 and 31 March 2015 in pulmonary clinics from five hospital sites within a large rural health care facility in Pennsylvania to test the feasibility. With a decrease of 6 per cent in the precision, the improvement of the recall at the meta-level is approximately 20 per cent from the base-level. This demonstrates that the proposed order co-occurrence network helps in increasing the performance of order predictions. The implementation will bring a more effective and efficient way to place outpatient orders.
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U2 - 10.1177/1460458219857383
DO - 10.1177/1460458219857383
M3 - Article
C2 - 31266390
AN - SCOPUS:85068590919
SN - 1460-4582
VL - 26
SP - 999
EP - 1016
JO - Health informatics journal
JF - Health informatics journal
IS - 2
ER -