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Fractal Dimension-based Methodology for Sudden Cardiac Death Prediction

机译:基于分形维数的心脏猝死预测方法

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Sudden cardiac death (SCD) is a disease that can be regarded as one of the principal death causes in the society. Hence, if the SCD event can be predicted in the earliest stage possible, it will allow saving people lives because they will receive timely medical procedures. In this paper, a methodology to predict SCD of an automatic manner using ECG signals, fractal dimension (FD), and artificial neural networks is presented. Three FD methods are investigated, Higuchi fractal dimension, Box dimension, and Katz fractal dimension. The effectiveness of the proposed methodology for predicting a SCD event is demonstrated using a database of 38 patients, 20 with SCD and 18 normal, provided by MIT-BIH (Boston's Beth Israel Hospital). The results show an accuracy of 91.4% 14 minutes prior to SCD event.
机译:心脏猝死(SCD)是可以被视为社会主要死亡原因之一的疾病。因此,如果可以尽早预测出SCD事件,它将可以挽救人们的生命,因为他们将及时获得医疗程序。在本文中,提出了一种使用ECG信号,分形维数(FD)和人工神经网络来自动预测SCD的方法。研究了三种FD方法:Higuchi分形维数,Box维数和Katz分形维数。 MIT-BIH(波士顿贝丝以色列医院)提供的38位患者,20位SCD和18位正常患者的数据库证明了所建议方法预测SCD事件的有效性。结果表明,SCD事件发生前14分钟的准确性为91.4%。

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