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Stacking segment-based CNN with SVM for recognition of atrial fibrillation from single-lead ECG recordings

机译:基于SVM的基于段的CNN,用于识别单引线ECG录制的心房颤动

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Background and objective: Atrial fibrillation (AF) is the most common form of cardiac rhythm disorder. Early detection of AF can result in a lower risk of stroke, heart failure, systemic thromboembolism, and coronary artery disease. AF detection however is challenging due to the need for specialised equipment and professional technicians. Hand-held electrocardiogram (ECG) devices, including wearables, are now available and provide a potential mechanism for detecting AF. We wished to identify AF from short single-lead ECG recordings using a machine learning method. Methods: We predicted AF from ECG signals by stacking a support vector machine (SVM) on statistical features of segment-based recognition units produced by a convolutional neural network. We used the ECG dataset from the PhysioNet/Computing in Cardiology Challenge 2017, which contained 8528 ECG recordings, to validate our method. Results: ECG recordings were categorised into four classes with an average F1 score of 84.19% under fivefold cross-validations. Conclusions: Our model performed better than other state-of-the-art methods applied to the same dataset using the same metric. This stacking method can be generalised for other problems related to medical signals as it does not require expertise in analysing ECG data.
机译:背景和目的:心房颤动(AF)是最常见的心脏节律障碍形式。 AF的早期检测可能导致中风,心力衰竭,全身血栓栓塞和冠状动脉疾病的风险较低。然而,由于需要专业设备和专业技术人员,AF检测是挑战。现在可以提供手持心电图(ECG)设备,包括可穿戴物,并提供检测AF的潜在机制。我们希望使用机器学习方法识别短的单引主ECG录制。方法:通过堆叠由卷积神经网络产生的基于分段的识别单元的统计特征,通过堆叠支持向量机(SVM)来预测来自ECG信号的AF。我们使用了来自PhysioMet / Computing的ECG数据集2017年,其中包含了8528个ECG录制,验证了我们的方法。结果:ECG录音分为四类,平均F1分数为54.19%,在五倍交叉验证下84.19%。结论:我们的模型比使用相同度量的相同数据集更好地表现优于应用于相同数据集的最先进的方法。对于与医疗信号相关的其他问题,可以推广该堆叠方法,因为它在分析ECG数据时不需要专业知识。

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