个人信息Personal Information
教授
博士生导师
硕士生导师
主要任职:Director of Institute of Systems Engineering
其他任职:大连市数据科学与知识管理重点实验室主任
性别:男
毕业院校:大连理工大学
学位:博士
所在单位:系统工程研究所
学科:管理科学与工程. 系统工程
办公地点:经济管理学院D337室
联系方式:0411-84708007
电子邮箱:dlutguo@dlut.edu.cn
Data-driven automatic treatment regimen development and recommendation
点击次数:
论文类型:会议论文
发表时间:2016-08-13
发表刊物:Proceedings of the ACM SIGKDD International Conference on Knowledge Discovery and Data Mining
收录刊物:EI、Scopus
卷号:13-17-August-2016
页面范围:1865-1874
摘要:The analysis of large-scale ElectricalMedical Records (EMRs) has the potential to develop and optimize clinical treatment regimens. A treatment regimen usually includes a series of doctor orders containing rich temporal and heterogeneous information. However, in many existing studies, a doctor order is simplified as an event code and a treatment record is simplified as a code sequence. Thus, the information inherent in doctor orders is not fully used for in-depth analysis. In this paper, we aim at exploiting the rich information in doctor orders and developing data-driven approaches for improving clinical treatments. To this end, we first propose a novel method to measure the similarities between treatment records with consideration of sequential and multifaceted information in doctor orders. Then, we propose an efficient density-based clustering algorithm to summarize large-scale treatment records, and extract a semantic representation of each treatment cluster. Finally, we develop a unified framework to evaluate the discovered treatment regimens, and find the most effective treatment regimen for new patients. In the empirical study, we validate our methods with EMRs of 27,678 patients from 14 hospitals. The results show that: 1) Our method can successfully extract typical treatment regimens from large-scale treatment records. The extracted treatment regimens are intuitive and provide managerial implications for treatment regimen design and optimization. 2) By recommending the most effective treatment regimens, the total cure rate in our data improves from 19.89% to 21.28%, and the effective rate increases up to 98.29%. © 2016 ACM.