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Real-time discrimination of multiple cardiac arrhythmias for wearable systems based on neural networks

机译:基于神经网络的可穿戴系统多个心律失常的实时判别

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This paper aims at developing a wearable system able to recognize the most significant cardiac arrhythmias through an efficient algorithm, in terms of low computational cost and memory usage, implementable in a portable, real-rime hardware. In addition, it must respect the specifications of good specificity and sensitivity, in order to permit a positive clinical validation. The hardware is constituted of a general propose microcontroller, which is able to acquire electro-cardiogram signal (ECU), perform analog to digital conversion and extract QRS complex. The algorithm classifies QRS complexes as normal or pathologic by means of selected features obtained from Discrete Fourier Transform OFT). Furthermore, a spatial wavelet pre-filter is also investigated to obtain an enhanced QRS complex discrimination. In particular, pattern recognition of QRS complex is performed from binding minimal architecture of neural network as Kohonen Self Organizing Map (KSOM). Experimental results were validated by means of MIT-BIH Arrhythmias Database obtaining specificity and sensitivity up to 98%.
机译:本文旨在开发一种可穿戴系统,该系统能够以低计算成本和内存使用率通过有效的算法识别最严重的心律不齐,并且可以在便携式实境硬件中实现。此外,它必须遵守良好特异性和敏感性的规范,以便进行积极的临床验证。硬件由通用的微控制器构成,该微控制器能够获取心电图信号(ECU),执行模数转换并提取QRS复数。该算法通过从离散傅里叶变换OFT获得的选定特征将QRS复杂体分类为正常或病理。此外,还研究了空间小波预滤波器以获得增强的QRS复数判别力。特别地,QRS复合体的模式识别是通过将神经网络的最小结构绑定为Kohonen自组织图(KSOM)来执行的。通过MIT-BIH心律失常数据库验证了实验结果,其特异性和敏感性高达98%。

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