A multi-modal integrated deep neural networks for the prediction of cardiovascular disease in type-2 diabetic males

IF 1.7 4区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS Automatika Pub Date : 2023-10-02 DOI:10.1080/00051144.2023.2269515
S. V. Evangelin Sonia, R. Nedunchezhian, M. Rajalakshmi
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Abstract

Heart disease is a leading cause of mortality and illness worldwide. Heart disease identification and prediction may considerably improve patient outcomes. We use deep neural networks (DNNs) and heart rate variability (HRV) data to construct a deep learning strategy for diagnosing cardiovascular abnormalities in diabetic men. The non-invasive HRV test shows how the autonomic nervous system affects heart function. It show promise for diagnosing heart dysfunction. DNNs, noted for their ability to interpret complex data patterns, are useful for prediction and diagnosis. Our unique system, DNHRV (Deep Neural Network with HRV Features), integrates two networks using DNN and DCNN methods (Deep Convolutional Neural Network). Our DNN analyses clinical risk variables using powerful deep learning architecture, while the DCNN trains. We integrate HRV signals, medical pictures, and other clinical parameters with deep neural network computing power in the suggested technique (DNNs). This multimodal technique gives us a complete picture of each patient's cardiovascular health by utilising physiological and imaging-based indicators. Our DNHRV model outperformed earlier models in accuracy, precision, F1-score, and other parameters. Our prediction model was evaluated using SHAREEDB, proving its accuracy and stability. The DNHRV model exceeds state-of-the-art CVD prediction methods by a large margin, with 98.8% accuracy, according to extensive SHAREEDB dataset tests. By highlighting CVD predicting data points, the suggested technique increased interpretability and accuracy.
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多模态集成深度神经网络预测2型糖尿病男性心血管疾病
心脏病是世界范围内导致死亡和疾病的主要原因。心脏病的识别和预测可以显著改善患者的预后。我们使用深度神经网络(dnn)和心率变异性(HRV)数据来构建诊断糖尿病男性心血管异常的深度学习策略。无创HRV测试显示自主神经系统如何影响心脏功能。它有望用于诊断心脏功能障碍。深度神经网络以其解释复杂数据模式的能力而闻名,在预测和诊断方面非常有用。我们独特的系统,DNHRV(深度神经网络与HRV特征),集成了两个网络使用DNN和DCNN方法(深度卷积神经网络)。我们的DNN使用强大的深度学习架构分析临床风险变量,而DCNN则进行训练。在建议的技术(dnn)中,我们将HRV信号、医学图像和其他临床参数与深度神经网络计算能力相结合。这种多模式技术通过利用生理和成像为基础的指标,为我们提供了每个病人心血管健康的完整图像。我们的DNHRV模型在准确性、精密度、f1评分等参数上都优于早期的模型。利用SHAREEDB对我们的预测模型进行了评估,证明了其准确性和稳定性。根据广泛的SHAREEDB数据集测试,DNHRV模型的准确率高达98.8%,大大超过了目前最先进的心血管疾病预测方法。通过突出CVD预测数据点,建议的技术提高了可解释性和准确性。
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来源期刊
Automatika
Automatika AUTOMATION & CONTROL SYSTEMS-ENGINEERING, ELECTRICAL & ELECTRONIC
CiteScore
4.00
自引率
5.30%
发文量
65
审稿时长
4.5 months
期刊介绍: AUTOMATIKA – Journal for Control, Measurement, Electronics, Computing and Communications is an international scientific journal that publishes scientific and professional papers in the field of automatic control, robotics, measurements, electronics, computing, communications and related areas. Click here for full Focus & Scope. AUTOMATIKA is published since 1960, and since 1991 by KoREMA - Croatian Society for Communications, Computing, Electronics, Measurement and Control, Member of IMEKO and IFAC.
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