Ensemble Learning for Interpretable Concept Drift and Its Application to Drug Recommendation

Yunjuan Peng, Qi Qiu, Dalin Zhang, Tianyu Yang, Hailong Zhang
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引用次数: 1

Abstract

During the COVID-19 epidemic, the online prescription pattern of Internet healthcare provides guarantee for the patients with chronic diseases and reduces the risk of cross-infection, but it also raises the burden of decision-making for doctors. Online drug recommendation system can effectively assist doctors by analysing the electronic medical records (EMR) of patients. Unlike commercial recommendations, the accuracy of drug recommendations should be very high due to their relevance to patient health. Besides, concept drift may occur in the drug treatment data streams, handling drift and location drift causes is critical to the accuracy and reliability of the recommended results. This paper proposes a multi-model fusion online drug recommendation system based on the association of drug and pathological features with online-nearline-offline architecture. The system transforms drug recommendation into pattern classification and adopts interpretable concept drift detection and adaptive ensemble classification algorithms. We apply the system to the Percutaneous Coronary Intervention (PCI) treatment process. The experiment results show our system performs nearly as good as doctors, the accuracy is close to 100%
可解释概念漂移的集成学习及其在药物推荐中的应用
在新冠疫情期间,互联网医疗的在线处方模式为慢性病患者提供了保障,降低了交叉感染的风险,但也增加了医生的决策负担。在线药物推荐系统可以通过分析患者的电子病历,有效地辅助医生。与商业推荐不同,药物推荐的准确性应该非常高,因为它们与患者健康相关。此外,药物治疗数据流中可能出现概念漂移,处理漂移和定位漂移原因对推荐结果的准确性和可靠性至关重要。本文提出了一种基于药物与病理特征关联的多模型融合在线推荐系统。该系统将药物推荐转化为模式分类,采用可解释概念漂移检测和自适应集成分类算法。我们将该系统应用于经皮冠状动脉介入治疗(PCI)过程。实验结果表明,该系统的准确率接近100%,接近医生的水平
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