A System for Mining Temporal Physiological Data Streams for Advanced Prognostic Decision Support

Jimeng Sun, D. Sow, Jianying Hu, S. Ebadollahi
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引用次数: 46

Abstract

We present a mining system that can predict the future health status of the patient using the temporal trajectories of health status of a set of similar patients. The main novelties of this system are its use of stream processing technology for handling the incoming physiological time series data and incorporating domain knowledge in learning the similarity metric between patients represented by their temporal data. The proposed approach and system were tested using the MIMIC II database, which consists of physiological waveforms, and accompanying clinical data obtained for ICU patients. The study was carried out on 1500 patients from this database. In the experiments we report the efficiency and throughput of the stream processing unit for feature extraction, the effectiveness of the supervised similarity measure both in the context of classification and retrieval tasks compared to unsupervised approaches, and the accuracy of the temporal projections of the patient data.
一种用于高级预测决策支持的时间生理数据流挖掘系统
我们提出了一个挖掘系统,该系统可以使用一组相似患者的健康状态的时间轨迹来预测患者的未来健康状况。该系统的主要新颖之处在于它使用流处理技术来处理传入的生理时间序列数据,并结合领域知识来学习由其时间数据表示的患者之间的相似性度量。所提出的方法和系统使用MIMIC II数据库进行了测试,该数据库由生理波形组成,并附带了ICU患者的临床数据。这项研究是在这个数据库中的1500名患者中进行的。在实验中,我们报告了流处理单元用于特征提取的效率和吞吐量,与无监督方法相比,监督相似度度量在分类和检索任务中的有效性,以及患者数据时间预测的准确性。
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