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Prediction of Life-Threatening Heart Arrhythmias Using Obstructive Sleep Apnoea Characteristics

机译:使用阻塞性睡眠呼吸暂停特征预测危及危及危及生命的心律失常

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False alarms ratios of up to 86% in Intensive Care Units (ICU) decrease quality of care, impacting both clinical staff and patients through slowing off response time and noise tribulation. We present a novel algorithm to predict heart arrhythmias in ICUs. We focus on five life-threatening arrhythmias: Asystole, Extreme Bradycardia, Extreme Tachycardia, Ventricular Tachycardia, and Ventricular Fibrillation. The algorithm is based on novel features using only 12 seconds of one ECG channel to predict the arrhythmias. Our new feature sets include different SQI and physiological features and the features used in obstructive sleep apnoea detection. We also proposed a new morphological characteristic to count the abnormal patterns which are common in Ventricular Fibrillation arrhythmia. We evaluate our proposed features by ranking them using 19 different feature selector algorithms. Finally, NN classifiers were trained separately for every type of arrhythmia. Applying the algorithm on 750 data of bedside monitors, we achieved the score of 80.2% & 80.6% respectively in the real-time analysis for 12 and 16 seconds of one ECG channel.
机译:虚假警报率高达86%的重症监护单位(ICU)降低了护理质量,影响临床工作人员和患者通过减缓响应时间和噪音灾难。我们提出了一种新的算法来预测ICU中心脏心律失常。我们专注于五个危及生命的心律失常:asystole,极端性心动过缓,极端心动过速,室性心动过速和心室颤动。该算法基于仅使用12秒的一个ECG信道来预测心律失常的新功能。我们的新功能集包括不同的SQI和生理特征,以及用于阻塞性睡眠APNEA检测的特征。我们还提出了一种新的形态特征,以计算心室颤动心律失常常见的异常模式。我们通过使用19个不同的特征选择器算法进行排序来评估我们提出的功能。最后,NN分类剂分别为每种类型的心律失常进行培训。将算法应用于750个床边监测器数据,我们分别在一个ECG通道的实时分析中实现了80.2%和80.6%的得分。

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