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Exploring missing data prediction in medical monitoring: A performance analysis approach

机译:探索医疗监控中的缺失数据预测:一种性能分析方法

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Medical monitoring represents one of the most critical components in existing healthcare system. The accurate and reliable acquisition of various physiological data can help physicians and patients to properly detect and identify potential health risks. However, this process suffers from severe limitations in terms of missing or degraded data, which may lead to a rather high false alarm rate and potentially compromised diagnostic results. In this paper, we investigated three different approaches for missing data prediction in clinical settings: mean imputation, Gaussian Process Regression (GPR), and Kalman Filter (KF). Experimental results show that, the heart rate (HR) signals largely rely on most recent data and missing data prediction will be less effective for further prediction.
机译:医疗监控代表了现有医疗保健系统中最关键的组成部分之一。准确,可靠地获取各种生理数据可以帮助医生和患者正确检测和识别潜在的健康风险。但是,此过程在数据丢失或降级方面受到严重限制,这可能导致相当高的误报率和潜在的诊断结果受损。在本文中,我们研究了三种在临床环境中进行数据丢失预测的不同方法:均值插补,高斯过程回归(GPR)和卡尔曼滤波(KF)。实验结果表明,心率(HR)信号在很大程度上依赖于最新数据,而丢失数据的预测对于进一步的预测将不太有效。

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