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Trend Analysis of Telemonitoring for the Prediction of Heart Failure Decompensation Events

机译:遥测对心力衰竭失效事件预测的趋势分析

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This work aims to assess the predictive value of physiological data, daily collected in a telemonitoring study, in the early detection of heart failure decompensation events. The main hypothesis is that physiological time series with similar progression (trends) may have prognostic value in future clinical states (decompensation or normal conditions). The strategy is composed of two main steps: a trend similarity analysis followed by a predictive procedure. Basically, founded on the trend similarity measure, a set of time series presenting a progression similar with the current condition is identified in the historical data set, which is then employed, through a nearest neighbour approach, in the current prediction (decompensation event or normal condition). The proposed strategy is validated using physiological data collected during the myHeart telemonitoring study. The obtained results suggest, in general, that the physiological data have predictive value and, in particular, that the proposed similarity scheme is particularly appropriate to address the early detection of heart failure decompensation.
机译:这项工作旨在评估物理数据的生理数据预测价值,在远程研究中收集的每日收集,在早期检测心力衰竭不偿化事件的早期发现。主要假设是具有相似进展(趋势)的生理时间序列可能对未来的临床状态(不起重要或正常情况)具有预后价值。该策略由两个主要步骤组成:趋势相似性分析随后是预测程序。基本上,在趋势相似度测量上成立,在当前预测中,在历史数据集中识别出呈现与当前条件类似的进展的一组时间序列,然后通过最近的邻近方法在当前预测中(分解事件或正常方法状况)。拟议的策略是使用在Myheart遥测研究中收集的生理数据进行验证。所获得的结果通常建议生理数据具有预测值,特别是所提出的相似性方案特别适合于解决心力衰竭不复杂的早期检测。

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