Vozzi Federico, Pedrelli Luca, Dimitri Giovanna Maria, Micheli Alessio, Persiani Elisa, Piacenti Marcello, Rossi Andrea, Solarino Gianluca, Pieragnoli Paolo, Checchi Luca, Zucchelli Giulio, Mazzocchetti Lorenzo, De Lucia Raffaele, Nesti Martina, Notarstefano Pasquale, Morales Maria Aurora
Institute of Clinical Physiology, IFC-CNR, Pisa, Italy.
Department of Computer Science, University of Pisa, Pisa, Italy.
Heliyon. 2024 Feb 1;10(3):e25404. doi: 10.1016/j.heliyon.2024.e25404. eCollection 2024 Feb 15.
Artificial Intelligence (AI) applications and Machine Learning (ML) methods have gained much attention in recent years for their ability to automatically detect patterns in data without being explicitly taught rules. Specific features characterise the ECGs of patients with Brugada Syndrome (BrS); however, there is still ambiguity regarding the correct diagnosis of BrS and its differentiation from other pathologies. This work presents an application of Echo State Networks (ESN) in the Recurrent Neural Networks (RNN) class for diagnosing BrS from the ECG time series. 12-lead ECGs were obtained from patients with a definite clinical diagnosis of spontaneous BrS Type 1 pattern (Group A), patients who underwent provocative pharmacological testing to induce BrS type 1 pattern, which resulted in positive (Group B) or negative (Group C), and control subjects (Group D). One extracted beat in the V2 lead was used as input, and the dataset was used to train and evaluate the ESN model using a double cross-validation approach. ESN performance was compared with that of 4 cardiologists trained in electrophysiology. The model performance was assessed in the dataset, with a correct global diagnosis observed in 91.5 % of cases compared to clinicians (88.0 %). High specificity (94.5 %), sensitivity (87.0 %) and AUC (94.7 %) for BrS recognition by ESN were observed in Groups A + B vs. C + D. Our results show that this ML model can discriminate Type 1 BrS ECGs with high accuracy comparable to expert clinicians. Future availability of larger datasets may improve the model performance and increase the potential of the ESN as a clinical support system tool for daily clinical practice.
近年来,人工智能(AI)应用和机器学习(ML)方法因其能够在无需明确规则指导的情况下自动检测数据模式的能力而备受关注。布加综合征(BrS)患者的心电图具有特定特征;然而,BrS的正确诊断及其与其他病理情况的区分仍存在模糊性。这项工作展示了回声状态网络(ESN)在递归神经网络(RNN)类别中的应用,用于从心电图时间序列诊断BrS。从明确临床诊断为自发性1型BrS模式的患者(A组)、接受激发性药物测试以诱发1型BrS模式且结果为阳性(B组)或阴性(C组)的患者以及对照受试者(D组)中获取12导联心电图。将V2导联中提取的一个心搏用作输入,并使用双重交叉验证方法将数据集用于训练和评估ESN模型。将ESN的性能与4名接受过电生理培训的心脏病专家的性能进行比较。在数据集中评估模型性能,与临床医生(88.0%)相比,在91.5%的病例中观察到正确的总体诊断。在A + B组与C + D组中,ESN对BrS识别的特异性(94.5%)、敏感性(87.0%)和AUC(94.7%)较高。我们的结果表明,这种ML模型能够以与专家临床医生相当的高精度区分1型BrS心电图。未来更大数据集的可用性可能会提高模型性能,并增加ESN作为日常临床实践临床支持系统工具的潜力。