Kudo Sota, Chen Zheng, Zhou Xue, Izu Leighton T, Chen-Izu Ye, Zhu Xin, Tamura Toshiyo, Kanaya Shigehiko, Huang Ming
Computational Systems Biology Lab, Graduate School of Science and Technology, Nara Institute of Science and Technology, Ikoma, Japan.
ISIR, Osaka University, Osaka, Japan.
Front Physiol. 2023 Jan 19;14:1084837. doi: 10.3389/fphys.2023.1084837. eCollection 2023.
Photoplethysmography (PPG) signal is potentially suitable in atrial fibrillation (AF) detection for its convenience in use and similarity in physiological origin to electrocardiogram (ECG). There are a few preceding studies that have shown the possibility of using the peak-to-peak interval of the PPG signal (PPIp) in AF detection. However, as a generalized model, the accuracy of an AF detector should be pursued on the one hand; on the other hand, its generalizability should be paid attention to in view of the individual differences in PPG manifestation of even the same arrhythmia and the existence of sub-types. Moreover, a binary classifier for atrial fibrillation and normal sinus rhythm is not convincing enough for the similarity between AF and ectopic beats. In this study, we project the atrial fibrillation detection as a multiple-class classification and try to propose a training pipeline that is advantageous both to the accuracy and generalizability of the classifier by designing and determining the configurable options of the pipeline, in terms of input format, deep learning model (with hyperparameter optimization), and scheme of transfer learning. With a rigorous comparison of the possible combinations of the configurable components in the pipeline, we confirmed that first-order difference of heartbeat sequence as the input format, a 2-layer -1-layer hybrid model as the learning model and the whole model fine-tuning as the implementing scheme of transfer learning is the best combination for the pipeline (F1 value: 0.80, overall accuracy: 0.87).
光电容积脉搏波描记法(PPG)信号因其使用方便且生理起源与心电图(ECG)相似,在心房颤动(AF)检测中具有潜在适用性。先前有一些研究表明,在AF检测中使用PPG信号的峰峰值间隔(PPIp)具有可能性。然而,作为一个通用模型,一方面应追求AF检测器的准确性;另一方面,鉴于即使是相同心律失常的PPG表现存在个体差异以及亚型的存在,其通用性也应受到关注。此外,用于心房颤动和正常窦性心律的二分类器对于AF与异位搏动之间的相似性来说说服力不足。在本研究中,我们将心房颤动检测项目作为多分类分类,并试图通过设计和确定管道的可配置选项,在输入格式、深度学习模型(进行超参数优化)和迁移学习方案方面,提出一种对分类器的准确性和通用性都有利的训练管道。通过对管道中可配置组件的可能组合进行严格比较,我们确认心跳序列的一阶差分作为输入格式、2层-1层混合模型作为学习模型以及整个模型微调作为迁移学习的实施方案是该管道的最佳组合(F1值:0.80,总体准确率:0.87)。