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Deep Learning Techniques on Sparself Sampled Multichannel Data-Identify Deterioration in ICU Patients

机译:对ICU患者的备用素采样多通道数据识别恶化的深度学习技术

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The focus of this paper is to recognize periods of time deviating from the norm using sparsely sampled multichannel signals. The case in question being the ICU, our domain of interest is patient deterioration. In many cases the recording and analyzing of frequently sampled streaming data that can carry more information is not always an option, while at the same time the availability for data recorded at large time intervals is a common occurrence. To address this issue, we examine whether Deep-learning methods can provide efficient results regarding the recognition of different states during the hospitalization, by utilizing hourly multichannel physiological recordings.
机译:本文的重点是识别使用稀疏采样的多通道信号偏离规范的时间段。有问题是ICU的情况,我们的兴趣领域是患者恶化。在许多情况下,记录和分析可以携带更多信息的频繁采样的流数据并不总是一个选项,而同时以大时间间隔记录的数据的可用性是常见的。为了解决这个问题,我们通过利用每小时多通道生理记录,检查深度学习方法是否可以提供关于在住院期间识别不同状态的有效结果。

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