Choi Sanghoon, Choi Kyungmin, Yun Hong Kyun, Kim Su Hyeon, Choi Hyeon-Hwa, Park Yi-Seul, Joo Segyeong
Department of Biomedical Engineering, University of Ulsan College of Medicine, Seoul, Republic of Korea.
Asan Medical Institute of Convergence Science and Technology, Asan Medical Center, Seoul, Republic of Korea.
Heliyon. 2023 Dec 12;10(1):e23597. doi: 10.1016/j.heliyon.2023.e23597. eCollection 2024 Jan 15.
Early detection of atrial fibrillation (AF) is crucial for its effective management and prevention. Various methods for detecting AF using deep learning (DL) based on supervised learning with a large labeled dataset have a remarkable performance. However, supervised learning has several problems, as it is time-consuming for labeling and has a data dependency problem. Moreover, most of the DL methods do not provide any clinical evidence to physicians regarding the analysis of electrocardiography (ECG) for classification or detection of AF. To address these limitations, in this study, we proposed a novel AF diagnosis system using unsupervised learning for anomaly detection with three segments, PreQ, QRS, and PostS, based on the normal ECG. Two independent datasets, PTB-XL and China, were used in three experiments. We used a long short-term memory (LSTM)-based autoencoder to train the segments of the normal ECG. Based on the threshold of anomaly scores using mean squared error (MSE), it distinguished between normal and AF segments. In Experiment A, the best score was that of PreQ, which detected AF with an AUROC score of 0.96. In Experiment B and C for cross validation of each dataset, the best scores were also of PreQ, with AUROC scores of 0.9 and 0.95, respectively. To verify the significance of the anomaly score in distinguishing between AF and normal segments, we utilized an XG-Boosted model after generating anomaly scores in the three segments. The XG-Boosted model achieved an AUROC score of 0.98 and an F1 score of 0.94. AF detection using DL has been controversial among many physicians. However, our study differentiates itself from previous studies in that we can demonstrate evidence that distinguishes AF from normal segments based on the anomaly score.
早期检测心房颤动(AF)对于其有效管理和预防至关重要。基于具有大量标记数据集的监督学习,使用深度学习(DL)检测AF的各种方法具有显著性能。然而,监督学习存在几个问题,因为标记耗时且存在数据依赖问题。此外,大多数DL方法在用于AF分类或检测的心电图(ECG)分析方面未向医生提供任何临床证据。为了解决这些局限性,在本研究中,我们提出了一种新颖的AF诊断系统,该系统使用无监督学习进行异常检测,基于正常ECG将其分为三个部分:PreQ、QRS和PostS。在三个实验中使用了两个独立的数据集,即PTB-XL和中国数据集。我们使用基于长短期记忆(LSTM)的自动编码器来训练正常ECG的各个部分。基于使用均方误差(MSE)的异常分数阈值,它区分正常和AF部分。在实验A中,最佳分数是PreQ的分数,其检测AF的AUROC分数为0.96。在每个数据集的交叉验证实验B和C中,最佳分数也都是PreQ的分数,分别为0.9和0.95。为了验证异常分数在区分AF和正常部分方面的重要性,我们在三个部分生成异常分数后使用了XG-Boosted模型。XG-Boosted模型的AUROC分数为0.98,F1分数为0.94。使用DL进行AF检测在许多医生中一直存在争议。然而,我们的研究与先前的研究不同之处在于,我们可以基于异常分数展示区分AF和正常部分的证据。