Comprehensive Cardiac Ischemia Classification Using Hybrid CNN-Based Models

Abdelmalek Makhir, My Hachem El Yousfi Alaoui, Larbi Belarbi
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Abstract

This study addresses the critical issue of classifying cardiac ischemia, a disease with significant global health implications that contributes to the global mortality rate. In our study, we tackle the classification of ischemia using six diverse electrocardiogram (ECG) datasets and a convolutional neural network (CNN) as the primary methodology. We combined six separate datasets to gain a more comprehensive understanding of cardiac electrical activity, utilizing 12 leads to obtain a broader perspective. A discrete wavelet transform (DWT) preprocessing was used to eliminate irrelevant information from the signals, aiming to improve classification results. Focusing on accuracy and minimizing false negatives (FN) in ischemia detection, we enhance our study by incorporating various machine learning models into our base model. These models include multilayer perceptron (MLP), support vector machines (SVM), random forest (RF), long short-term memory (LSTM), and bidirectional LSTM (BiLSTM), allowing us to leverage the strengths of each algorithm. The CNN-BiLSTM model achieved the highest accuracy of 99.23% and demonstrated good sensitivity of 98.53%, effectively reducing false negative cases in the overall tests. The CNN-BiLSTM model demonstrated the ability to effectively identify abnormalities, misclassifying only 25 out of 1,673 ischemic cases in the test set as normal. This is due to the BiLSTM’s efficiency in capturing long-range dependencies and sequential patterns, making it suitable for tasks involving time-series data such as ECG signals. In addition, CNNs are well-suited for hierarchical feature learning and complex pattern recognition in ECG data.
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利用基于混合 CNN 的模型进行综合心肌缺血分类
心肌缺血是一种对全球健康具有重大影响的疾病,也是导致全球死亡率的原因之一。在我们的研究中,我们使用六种不同的心电图(ECG)数据集和卷积神经网络(CNN)作为主要方法来解决缺血分类问题。我们将六个独立的数据集结合起来,以便更全面地了解心电活动,同时利用 12 个导联获得更广阔的视角。我们使用离散小波变换(DWT)预处理来消除信号中的无关信息,以改善分类结果。为了提高缺血检测的准确性并最大限度地减少假阴性(FN),我们在基础模型中加入了各种机器学习模型,从而加强了我们的研究。这些模型包括多层感知器(MLP)、支持向量机(SVM)、随机森林(RF)、长短期记忆(LSTM)和双向 LSTM(BiLSTM),使我们能够充分利用每种算法的优势。CNN-BiLSTM 模型的准确率最高,达到 99.23%,灵敏度也很高,为 98.53%,有效减少了整体测试中的假阴性案例。CNN-BiLSTM 模型表现出了有效识别异常的能力,在测试集中的 1,673 个缺血病例中,只有 25 个被误分类为正常病例。这归功于 BiLSTM 在捕捉长程依赖性和序列模式方面的高效率,使其适用于涉及时间序列数据(如心电信号)的任务。此外,CNN 非常适合心电图数据中的分层特征学习和复杂模式识别。
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