会议专题

ADA: An Online Trend Pattern Detection System

Pattern recognition has been used extensively in medical information retrieval and data analyses. Specifically,it involves pattern classification, indexing, clustering, anomaly detection and rule detection. Among various patterns, trend is a simple yet powerful pattern that can be associated with many complex clinical symptoms. Detecting adverse clinical trend is thus an important proactive approach to critical clinical situation managements. In this paper, we propose an online trend pattern detection system, the Anaesthetic Data Analyser (ADA), as a platform to monitor trend patterns of physiological data collected during anaesthesia. ADA differentiates from current approaches by looking at trends rather than a single data value against a preset threshold. Our online trend pattern detection and trend query processing algorithms also make ADA support real time trend monitoring efficiently. Experiments on physiological data collected from patients demonstrate the efficiency and effectiveness of the ADA system and our algorithms.

Pattern Recognition Anaesthetic Data

Qing Zhang Chaoyi Pang Qing Xie Yanchun Zhang

Simon Mcbride.David Hansen The Australian e-Health Research Centre Brisbane.Australia School of Engineering and Science Victoria University, Australia

国际会议

The 2nd International Conference on Software Engineering and Data Mining(IEEE 第二届国际软件工程和数据挖掘学术大会 SEDM 2010)

成都

英文

328-332

2010-06-23(万方平台首次上网日期,不代表论文的发表时间)