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Comparing Different Settings of Parameters Needed for Pre-processing of ECG Signals used for Blood Pressure Classification

机译:比较用于血压分类的ECG信号预处理所需的参数的不同设置

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Because a real-time monitoring using electrocardiogram (ECG) signals is a challenging task, the preprocessing techniques used for ECG signal analysis are crucial for obtaining information that is further used for some more complex analysis, such as predictive analyses. We compared different settings of parameters needed for pre-processing of ECG signals in order to estimate the valuable information that can be further used for blood pressure classification. Two parameters were involved in the comparison: i) the signal length used for ECG segmentation; and ii) the cut-off frequency used for baseline removal. The first parameter is the parameter used for obtaining ECG segments that are further used, and the second one is the frequency used for baseline removal. Thirty different combinations, each a combination of a signal length and a cut-off frequency, were evaluated using a dataset that contains data from five commercially available ECG sensors. For signal lengths: 10 s, 20 s, and 30 s, were used for data segmentation, while the cut-off frequency for baseline removal starts from 0.05 Hz, till 0.50 Hz, with a step length of 0.05 Hz. The evaluation of these combinations was done in combination with complexity analysis used for features extraction that are further used for blood pressure classification. Experimental results, obtained using a data-driven approach by comparing the combinations using the results obtained from the classification for 17 performance measures, showed that a signal length of 30 s carries the most information in a combination with cut-off frequency between 0.10 Hz and 0.20 Hz. Results contribute to the arguments published in the literature discussing the optimal ECG sample lengths needed for building predictive models, as well as the lower frequencies where the ECG components overlap with the baseline wander noise.
机译:由于使用心电图(ECG)信号的实时监测是一个具有挑战性的任务,所以用于ECG信号分析的预处理技术对于获得进一步用于一些更复杂分析的信息来说是至关重要的,例如预测分析。我们比较了ECG信号预处理所需的参数的不同设置,以估计可以进一步用于血压分类的有价值的信息。比较中涉及两个参数:i)用于心电图分割的信号长度;并且ii)用于基线去除的截止频率。第一参数是用于获得进一步使用的ECG段的参数,第二个参数是用于基线去除的频率。使用包含来自五个商业上可获得的ECG传感器的数据的数据集来评估三十个不同的组合,每个信号长度和截止频率的组合。对于信号长度:10 s,20 s和30秒用于数据分割,而基线去除的截止频率从0.05Hz,直至0.50Hz开始,步长为0.05Hz。这些组合的评价与用于特征萃取的复杂性分析组合进行,所述特征进一步用于血压分类。通过使用从分类的分类获得的结果比较组合使用数据驱动方法获得的实验结果,显示了30 s的信号长度在0.10Hz之间的截止频率的组合中携带最多的信息。 0.20 Hz。结果有助于文献中发布的参数,讨论构建预测模型所需的最佳ECG采样长度,以及ECG组件与基线漫游噪声重叠的较低频率。

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