首页> 外文会议>ASME annual dynamic systems and control conference >LEARNING TO PREDICT CORONARY PERFUSION PRESSURE DURING CARDIOPULMONARY RESUSCITATION
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LEARNING TO PREDICT CORONARY PERFUSION PRESSURE DURING CARDIOPULMONARY RESUSCITATION

机译:心肺复苏术中预测冠状动脉灌注压力的学习

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The goal of this work is to advance the capability of automated, mechanical cardiopulmonary resuscitation (CPR) by predicting Coronary Perfusion Pressure (CPP) within 5 mmHg at a given moment in time. We aim to utilize methods from machine learning in order to model the CPP of a porcine patient subjected to automated chest compressions. During preprocessing of the data, we show how data sampling rate, delays and moving average filtering can improve predictions. We demonstrate state of the art modeling performance utilizing a variety of algorithms, and analyze the performance of each algorithm for single-step and long-term predictions. The results indicate that a delayed linear system achieves this target CPP within 0.25 mmHg. For longer time horizons, a more complex model is required. We demonstrate that the Long-short-term-memory (LSTM) network has the best single run performance, while the Sparse Spectrum Gaussian Process (SSGP) has the best average performance.
机译:这项工作的目的是通过在给定的时间预测5 mmHg以内的冠状动脉灌注压力(CPP),提高自动机械心肺复苏(CPR)的能力。我们旨在利用机器学习中的方法来对猪进行自动胸部按压的患者的CPP进行建模。在数据的预处理过程中,我们展示了数据采样率,延迟和移动平均滤波如何改善预测。我们演示了利用各种算法的先进建模性能,并针对单步和长期预测分析了每种算法的性能。结果表明,延迟线性系统可在0.25 mmHg的范围内达到该目标CPP。对于更长的时间范围,需要更复杂的模型。我们证明了长期短期记忆(LSTM)网络具有最佳的单次运行性能,而稀疏频谱高斯过程(SSGP)具有最佳的平均性能。

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