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The use of EIT in the detection of regional lung dysfunction in prematurely born neonates

机译:EIT在检测早产新生儿区域性肺功能障碍中的应用

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This research describes the progress of work in developing a system for automated detection of regional lung dysfunction in prematurely born neonates. EIT boundary measurements, observed at each lung region, are treated as a time series. The SPIRIT algorithm is used to extract local (regional) and global patterns from the datasets of healthy and ill neonates. The SAX technique is used to derive a symbolic representation of the global pattern signal. Current results are promising and demonstrate the possibility of characterise EIT boundary signals by 'words'. Such a representation can then be used to train a discrete Hidden Markov Model (HMM) to automatically detect and characterise regional lung function.
机译:这项研究描述了开发自动检测早产新生儿区域性肺功能不全系统的工作进展。在每个肺区域观察到的EIT边界测量值被视为一个时间序列。 SPIRIT算法用于从健康和患病新生儿的数据集中提取局部(区域)和全局模式。 SAX技术用于导出全局模式信号的符号表示。目前的结果是有希望的,并证明了用“字”表征EIT边界信号的可能性。然后,可以使用这种表示来训练离散的隐马尔可夫模型(HMM),以自动检测和表征区域肺功能。

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