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A Classification and Prediction Hybrid Model Construction with the IQPSO-SVM Algorithm for Atrial Fibrillation Arrhythmia

机译:一种对心房颤动心律失常IQPSO-SVM算法的分类和预测混合模型结构

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摘要

Atrial fibrillation (AF) is the most common cardiovascular disease (CVD), and most existing algorithms are usually designed for the diagnosis (i.e., feature classification) or prediction of AF. Artificial intelligence (AI) algorithms integrate the diagnosis of AF electrocardiogram (ECG) and predict the possibility that AF will occur in the future. In this paper, we utilized the MIT-BIH AF Database (AFDB), which is composed of data from normal people and patients with AF and onset characteristics, and the AFPDB database (i.e., PAF Prediction Challenge Database), which consists of data from patients with Paroxysmal AF (PAF; the records contain the ECG preceding an episode of PAF), and subjects who do not have documented AF. We extracted the respective characteristics of the databases and used them in modeling diagnosis and prediction. In the aspect of model construction, we regarded diagnosis and prediction as two classification problems, adopted the traditional support vector machine (SVM) algorithm, and combined them. The improved quantum particle swarm optimization support vector machine (IQPSO-SVM) algorithm was used to speed the training time. During the verification process, the clinical FZU-FPH database created by Fuzhou University and Fujian Provincial Hospital was used for hybrid model testing. The data were obtained from the Holter monitor of the hospital and encrypted. We proposed an algorithm for transforming the PDF ECG waveform images of hospital examination reports into digital data. For the diagnosis model and prediction model trained using the training set of the AFDB and AFPDB databases, the sensitivity, specificity, and accuracy measures were 99.2% and 99.2%, 99.2% and 93.3%, and 91.7% and 92.5% for the test set of the AFDB and AFPDB databases, respectively. Moreover, the sensitivity, specificity, and accuracy were 94.2%, 79.7%, and 87.0%, respectively, when tested using the FZU-FPH database with 138 samples of the ECG composed of two labels. The composite classification and prediction model using a new water-fall ensemble method had a total accuracy of approximately 91% for the test set of the FZU-FPH database with 80 samples with 120 segments of ECG with three labels.
机译:心房颤动(AF)是最常见的心血管疾病(CVD),并且大多数现有算法通常用于诊断(即特征分类)或AF的预测。人工智能(AI)算法集成了AF心电图(ECG)的诊断,并预测了AF将来会发生的可能性。在本文中,我们利用了MIT-BIH AF数据库(AFDB),该数据库(AFDB)由来自普通人物和AF和发病特征的患者的数据以及AFPDB数据库(即PAF预测挑战数据库)组成,该数据库包括来自数据库的数据患有阵发性AF的患者(PAF;记录包含PAF集中的ECG),并且没有记录的受试者。我们提取了数据库的相应特征,并使用它们在诊断和预测建模中。在模型结构的方面,我们认为诊断和预测作为两个分类问题,采用传统的支持向量机(SVM)算法,并组合它们。改进的量子粒子群优化支持向量机(IQPSO-SVM)算法用于加速训练时间。在核查过程中,福州大学和福建省医院创建的临床FPU-FPH数据库用于混合模型测试。数据是从医院的HOLTER监视器获得并加密。我们提出了一种将医院检查报告的PDF ECG波形图像转换为数字数据的算法。对于使用AFDB和AFPDB数据库的训练训练的诊断模型和预测模型,测试集的灵敏度,特异性和准确度为99.2%和99.2%,99.2%和93.3%,91.7%和92.5%分别为AFDB和AFPDB数据库。此外,当使用具有由两个标签组成的138个样品的FZU-FPH-FPH数据库测试时,敏感性,特异性和准确性分别为94.2%,79.7%和87.0%。复合分类和预测模型使用新的水落合并方法的总精度约为50个样本的FZU-FPH数据库的测试组的总精度,具有120个带有三个标签的ECG。

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