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Temporal Pattern Mining for Multivarite Clinical Decision Support

机译:用于多变量临床决策支持的时间模式挖掘

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Multivariate temporal data are collections of contiguous data values that reflect complex temporal changes over a given duration. Technological advances have resulted in significant amounts of such data in high-throughput disciplines, including EEG and iEEG data for effective and efficient healthcare informatics, and decision support. Most data analytics and data-mining algorithms are effective in capturing global trends, but fail to capture localized behavioral changes in large temporal data sets. We present a two-step algorithmic methodology to uncover temporal patterns and exploiting them for an efficient and accurate decision support system. This methodology aids the discovery of previously unknown, nontrivial, and potentially useful temporal patterns for enhanced patient-specific clinical decision support with high degrees of sensitivity and specificity. Classification results on multivariate time series iEEG data for epileptic seizure detection also demonstrate the efficacy and accuracy of the technique to uncover interesting and effective domain class-specific temporal patterns.
机译:多变量时间数据是连续数据值的集合,其反映给定持续时间的复杂时间变化。技术进步导致高吞吐量的大量此类数据,包括脑电图和IEEG数据,以获得有效和有效的医疗信息管理,以及决策支持。大多数数据分析和数据挖掘算法对于捕获全局趋势而有效,但不能捕获大型时间数据集中的本地化行为变化。我们提出了一种两步的算法方法,可以发现时间模式并利用它们以获得高效和准确的决策支持系统。该方法有助于发现以前具有高敏感性和特异性的增强患者特异性临床决策支持的先前未知,非潜在的时间模式。对多变量时间序列的分类结果癫痫癫痫发作检测的IEEG数据还证明了揭示有趣和有效的域类别的时间模式的技术的功效和准确性。

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