Mahajan Ruhi, Kamaleswaran Rishikesan, Akbilgic Oguz
Zywie, Inc., Johns Creek, Georgia.
Department of Biomedical Informatics, Emory University, Atlanta, Georgia.
Cardiovasc Digit Health J. 2020 Aug 26;1(1):37-44. doi: 10.1016/j.cvdhj.2020.04.001. eCollection 2020 Jul-Aug.
Atrial fibrillation (AF) is one of the most common cardiovascular problems, and its asymptomatic tendency makes AF detection challenging. Machine and deep learning methods are commonly used in AF detection.
The purpose of this study was to evaluate the information provided by convolutional neural network (CNN) and random forest (RF) machine learning models for AF classification.
We manually extracted 166 time-frequency domains and linear and nonlinear features to classify single-lead electrocardiograms (ECGs) as normal, AF, other, or noisy sinus rhythms. We selected a subset of 56 robust features using a genetic algorithm that was used in the RF model. In a separate study, a 1-dimensional, 12-layer CNN was designed on the raw ECG rhythms. Four features from the output layer and 128 features from the fully connected layer of CNN were explored independently for classification. The models were trained and internally validated on 8,528 ECGs and externally validated on a hidden dataset containing 3,658 ECGs. Next,we analyzed the correlation between engineered and CNN-learned features.
An RF classifier trained with 56-engineered features resulted in an F score of 0.91, 0.78, and 0.72 for normal, AF, and other rhythms, respectively. However, an ensemble of support vector machine and the CNN model resulted in an F score of 0.92, 0.87, and 0.80, respectively.
We explored various features and machine learning models to identify AF rhythms using short (9-61 seconds) single-lead ECG recordings. Our results showed that the proposed CNN model abstracted distinctive features for AF classification.
心房颤动(AF)是最常见的心血管问题之一,其无症状倾向使得房颤检测具有挑战性。机器学习和深度学习方法常用于房颤检测。
本研究的目的是评估卷积神经网络(CNN)和随机森林(RF)机器学习模型为房颤分类提供的信息。
我们手动提取了166个时频域以及线性和非线性特征,以将单导联心电图(ECG)分类为正常、房颤、其他或嘈杂的窦性心律。我们使用遗传算法选择了56个稳健特征的子集,该子集用于RF模型。在另一项研究中,基于原始心电图节律设计了一个1维12层的CNN。分别探索了来自输出层的4个特征和来自CNN全连接层的128个特征用于分类。这些模型在8528份心电图上进行训练和内部验证,并在包含3658份心电图的隐藏数据集上进行外部验证。接下来,我们分析了工程特征与CNN学习特征之间的相关性。
使用56个工程特征训练的RF分类器对正常、房颤和其他节律的F分数分别为0.91、0.78和0.72。然而,支持向量机和CNN模型的集成分别产生了0.92、0.87和0.80的F分数。
我们探索了各种特征和机器学习模型,以使用短(9 - 61秒)单导联心电图记录识别房颤节律。我们的结果表明,所提出的CNN模型提取了用于房颤分类的独特特征。