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Probabilistic data fusion model for heart beat detection from multimodal physiological data

机译:用于从多模态生理数据检测心跳的概率数据融合模型

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Probabilistic data fusion model for heart beat detection from multimodal physiological data Authors: TEHSEEN ZIA, ZULQARNIAN ARIF Abstract: Automatic detection of heart beats constitutes the basis for electrocardiogram (ECG) analysis and mainly relies on detecting QRS complexes. Detection is typically performed by analyzing the ECG signal. However, when signal quality is low, it often leads to the triggering of false alarms. A contemporary approach to reduce false alarm rate is to use multimodal data such as arterial blood pressure (ABP) or photoplethysmogram (PPG) signals. To leverage the correlated temporal nature of these signals, a probabilistic data fusion model for heart beat detection is proposed. A hidden Markov model is used to decode waveforms into segments. A Bayesian network is employed for capturing intersegmental coupling between waveforms and detecting heart beats. The performance of the proposed system was evaluated on a dataset provided by PhysioNet Challenge 2014: Robust Detection of Heart Beats in Multimodal Data. The proposed method is comparatively analyzed with a baseline hidden Markov model method for ECG and an improvement of 9% in sensitivity and 26% in positive predictivity is observed. The efficiency of the proposed model is also compared with related data fusion methods and a comparable performance is found. The robustness of the method is analyzed by inducting Gaussian noise into the dataset. A performance gain of 31% both in sensitivity and positive predictivity is obtained in the worst case where both ECG and ABP are noisy with -6 dB signal-to-noise ratio.
机译:用于从多模态生理数据检测心跳的概率数据融合模型作者:TEHSEEN ZIA,ZULQARNIAN ARIF摘要:心跳的自动检测构成心电图(ECG)分析的基础,并且主要依赖于检测QRS络合物。通常通过分析ECG信号进行检测。但是,当信号质量较低时,通常会导致错误警报的触发。减少误报率的现代方法是使用多模式数据,例如动脉血压(ABP)或光体积描记图(PPG)信号。为了利用这些信号的相关时间特性,提出了一种用于心跳检测的概率数据融合模型。隐藏的马尔可夫模型用于将波形解码为片段。贝叶斯网络用于捕获波形之间的段间耦合并检测心跳。拟议系统的性能在PhysioNet Challenge 2014提供的数据集上进行了评估:多模态数据中的心跳的鲁棒检测。通过基线隐马尔可夫模型方法对心电图进行了比较分析,发现灵敏度提高了9%,阳性预测率提高了26%。还将提出的模型的效率与相关的数据融合方法进行了比较,并发现了可比的性能。通过将高斯噪声引入数据集中来分析该方法的鲁棒性。在最坏的情况下,ECG和ABP都具有-6 dB信噪比的噪声,在灵敏度和积极预测性方面都可获得31%的性能提升。

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