Arrhythmogenic right ventricular cardiomyopathy (ARVC) is an inherited heart muscle disease that appears between the second and forth decade of a patient's life, being responsible for 20% of sudden cardiac deaths before the age of 35. The effective and punctual diagnosis of this disease based on Electrocardiograms (ECGs) could have a vital role in reducing premature cardiovascular mortality. In our analysis, we firstly outline the digitalization process of paper - based ECG signals enhanced by a spatial filter aiming to eliminate dark regions in the dataset's images that do not correspond to ECG waveform, producing undesirable noise. Next, we propose the utilization of a low - complexity convolutional neural network for the detection of an arrhythmogenic heart disease, that has not been studied through the usage of deep learning methodology to date, achieving high classification accuracy, namely 99.98% training and 98.6% testing accuracy, on a disease the major identification criterion of which are infinitesimal millivolt variations in the ECG's morphology, in contrast with other arrhythmogenic abnormalities. Finally, by performing spectral analysis we investigate significant differentiations in the field of frequencies between normal ECGs and ECGs corresponding to patients suffering from ARVC. In 16 out of the 18 frequencies where we encounter statistically significant differentiations, the normal ECGs are characterized by greater normalized amplitudes compared to the abnormal ones. The overall research carried out in this article highlights the importance of integrating mathematical methods into the examination and effective diagnosis of various diseases, aiming to a substantial contribution to their successful treatment.
翻译:心血管心血管病(ARVC)是一种遗传性心脏肌肉疾病,在患者生命的第二个和下一个十年之间出现,在35岁之前造成20%的突发心血管死亡,根据心电图(ECGs)对这一疾病进行有效和准时的诊断,在降低过早心血管死亡率方面可以发挥重要作用。在我们的分析中,我们首先概述了基于纸张的基于ECG信号的数字化过程,该过程通过空间过滤器得到加强,目的是消除与ECG波形不相符的数据集中的黑暗区域,从而产生不可取的噪音。接下来,我们建议利用一种低-复杂神经神经神经网络,以检测35岁之前的突发心血管疾病。迄今为止,通过采用深入的学习方法,没有对这种疾病进行有效和准时的诊断,即99.98%的培训,98.6%的测试准确性,基于一种疾病的主要识别标准,即ECG的形态变化是极小的,而这种图像与ECG的波状形成相反,产生不理想的噪音。最后,我们建议使用一种低复杂的神经神经网络网络网络网络网络网络网络网络网络网络,以检测18个正常的频率进行显著的分化分析。