IEEE Trans Neural Netw Learn Syst. 2023 Nov;34(11):9363-9374. doi: 10.1109/TNNLS.2022.3158867. Epub 2023 Oct 27.
Although numerous R-peak detectors have been proposed in the literature, their robustness and performance levels may significantly deteriorate in low-quality and noisy signals acquired from mobile electrocardiogram (ECG) sensors, such as Holter monitors. Recently, this issue has been addressed by deep 1-D convolutional neural networks (CNNs) that have achieved state-of-the-art performance levels in Holter monitors; however, they pose a high complexity level that requires special parallelized hardware setup for real-time processing. On the other hand, their performance deteriorates when a compact network configuration is used instead. This is an expected outcome as recent studies have demonstrated that the learning performance of CNNs is limited due to their strictly homogenous configuration with the sole linear neuron model. This has been addressed by operational neural networks (ONNs) with their heterogenous network configuration encapsulating neurons with various nonlinear operators. In this study, to further boost the peak detection performance along with an elegant computational efficiency, we propose 1-D Self-Organized ONNs (Self-ONNs) with generative neurons. The most crucial advantage of 1-D Self-ONNs over the ONNs is their self-organization capability that voids the need to search for the best operator set per neuron since each generative neuron has the ability to create the optimal operator during training. The experimental results over the China Physiological Signal Challenge-2020 (CPSC) dataset with more than one million ECG beats show that the proposed 1-D Self-ONNs can significantly surpass the state-of-the-art deep CNN with less computational complexity. Results demonstrate that the proposed solution achieves a 99.10% F1-score, 99.79% sensitivity, and 98.42% positive predictivity in the CPSC dataset, which is the best R-peak detection performance ever achieved.
尽管文献中已经提出了许多 R 波检测器,但它们在从移动心电图 (ECG) 传感器(如 Holter 监测器)获取的低质量和噪声信号中的鲁棒性和性能水平可能会显著下降。最近,这个问题已经通过深度一维卷积神经网络 (CNN) 得到了解决,这些网络在 Holter 监测器中达到了最先进的性能水平;然而,它们的复杂性很高,需要特殊的并行硬件设置来进行实时处理。另一方面,当使用紧凑的网络配置时,它们的性能会下降。这是一个预期的结果,因为最近的研究表明,CNN 的学习性能受到限制,因为它们的配置严格同质,只有线性神经元模型。这已经通过具有异构网络配置的运算神经网络 (ONNs) 得到了解决,该网络配置封装了具有各种非线性算子的神经元。在这项研究中,为了进一步提高峰值检测性能并实现优雅的计算效率,我们提出了具有生成神经元的一维自组织 ONNs (Self-ONNs)。1-D Self-ONNs 相对于 ONNs 的最关键优势是它们的自组织能力,这避免了需要为每个神经元搜索最佳算子集,因为每个生成神经元在训练期间都有能力创建最佳算子。在超过一百万个 ECG 节拍的中国生理信号挑战赛-2020 (CPSC) 数据集上的实验结果表明,所提出的 1-D Self-ONNs 可以显著超过最先进的深度 CNN,同时具有较少的计算复杂度。结果表明,所提出的解决方案在 CPSC 数据集上实现了 99.10%的 F1 分数、99.79%的灵敏度和 98.42%的阳性预测率,这是迄今为止实现的最佳 R 波检测性能。