基于卷积神经网络和多层感知器的智能深度模型,用于对糖尿病患者的心脏异常情况进行分类。

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL Physical and Engineering Sciences in Medicine Pub Date : 2024-09-01 Epub Date: 2024-06-20 DOI:10.1007/s13246-024-01444-7
Monika Saraswat, A K Wadhwani, Sulochana Wadhwani
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引用次数: 0

摘要

心电图是医学领域的重要工具,用于记录一段时间内的心跳信号,帮助识别各种心脏疾病。通常,解读心电图需要专业知识。然而,本文探索应用机器学习算法和深度学习算法,在没有专家干预的情况下自主识别糖尿病患者的心脏疾病。本研究引入了两种模型:MLP 模型能有效区分有心脏病和无心脏病的个体,准确率很高。随后,深度 CNN 模型进一步完善了对特定心脏病的识别。PTB-Diagnostic ECG 数据集通常用于生物医学信号处理和机器学习领域,特别是与心电图(ECG)分析相关的任务。该数据集包含各种心电图记录,全面反映了心脏状况。所提出的模型在 MLP 中有两个带权重和偏置的隐藏层,在 CNN 中有三个隐藏层,有助于将心电图数据映射到不同的疾病类别。实验结果表明,基于 MLP 和深度 CNN 的模型准确率分别高达 90.0% 和 98.35%,灵敏度分别为 97.8%、95.77%,特异度分别为 88.9%、96.3%,F1-Score 分别为 93.13%、95.84%。这些结果凸显了深度学习方法在通过心电图分析自动诊断心脏疾病方面的功效,展示了准确、高效的医疗解决方案的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Intelligent deep model based on convolutional neural network's and multi-layer perceptron to classify cardiac abnormality in diabetic patients.

The ECG is a crucial tool in the medical field for recording the heartbeat signal over time, aiding in the identification of various cardiac diseases. Commonly, the interpretation of ECGs necessitates specialized knowledge. However, this paper explores the application of machine learning algorithms and deep learning algorithm to autonomously identify cardiac diseases in diabetic patients in the absence of expert intervention. Two models are introduced in this study: The MLP model effectively distinguishes between individuals with heart diseases and those without, achieving a high level of accuracy. Subsequently, the deep CNN model further refines the identification of specific cardiac conditions. The PTB-Diagnostic ECG dataset commonly used in the field of biomedical signal processing and machine learning, particularly for tasks related to electrocardiogram (ECG) analysis. a widely recognized dataset in the field, is employed for training, testing, and validation of both the MLP and CNN models. This dataset comprises a diverse range of ECG recordings, providing a comprehensive representation of cardiac conditions. The proposed models feature two hidden layers with weights and biases in the MLP, and a three-layer CNN, facilitating the mapping of ECG data to different disease classes. The experimental results demonstrate that the MLP and deep CNN based models attain accuracy levels of up to 90.0% and 98.35%, and sensitivity 97.8%, 95.77%, specificity 88.9%, 96.3% F1-Score 93.13%, 95.84% respectively. These outcomes underscore the efficacy of deep learning approaches in automating the diagnosis of cardiac diseases through ECG analysis, showcasing the potential for accurate and efficient healthcare solutions.

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