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Artificial Bees Colony Optimized Neural Network Model for ECG Signals Classification

机译:心电信号分类的人工蜂群优化神经网络模型

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The ECG signal is a representation of bioelectrical activity of the heart's pumping action. The doctor regularly uses a temporal recording of ECG and waveforms characteristics to study and diagnose the overall heart functioning. In some heart diseases, the correct diagnosis in an early time is essential for the patient survival. This need leads to the necessity to automate normal beat signals discrimination from abnormal beat signals. In our study, we have chosen the Multilayer Perceptron (MLP) as a classifier for this type of signals into two categories: normal (N) and pathological (V). To train this network, we used the database "MIT BIH arrhythmia database." This training is improved using a novel swarm optimization algorithm called Artificial Bees Colony (ABC) inspired from the foraging intelligence of honey bees. The (ABC) has the advantage of using fewer control parameters compared to other swarm optimization Algorithms. We propose several algorithms to filter, detect R peaks and extract the features of cardiac cycles to get it ready to be classified.
机译:ECG信号代表心脏泵血动作的生物电活动。医生定期使用心电图和波形特征的时间记录来研究和诊断整体心脏功能。在某些心脏病中,早期正确诊断对于患者生存至关重要。这种需要导致有必要使正常拍子信号与异常拍子信号区分开来。在我们的研究中,我们选择了多层感知器(MLP)作为此类信号的分类器,分为两类:正常(N)和病理性(V)。为了训练该网络,我们使用了数据库“ MIT BIH心律失常数据库”。这项训练使用了一种新的群体优化算法,即人工蜜蜂殖民地(ABC),该算法受到蜜蜂觅食情报的启发而得到改进。与其他群优化算法相比,(ABC)具有使用较少控制参数的优势。我们提出了几种算法来过滤,检测R峰并提取心动周期的特征以使其易于分类。

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