A New Deep Learning Method for Accurate Cardiac Heart Failure Prediction from RR Interval Measurements

Mishahira N, Gayathri Geetha Nair, Mohammad Talal Houkan, K. K. Sadasivuni, M. Geetha, S. Al-Máadeed, Asiya Albusaidi, Nandhini Subramanian, H. Yalcin, H. Ouakad, I. Bahadur
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Abstract

cardiovascular diseases are the major cause of death worldwide. Early detection of heart failure will assist patients and medical professionals in taking better precautions to reduce risks. The objective of this study is to find a technique that can reliably forecast the risk of cardiovascular illnesses. With the help of the training data we offer, deep learning algorithms like Multi-Layer Perceptron (MLP), Convolutional Neural Network (CNN), and Recurrent Neural Network (RNN) make these predictions. Prediction accuracy will be reduced by a lack of medical data. As a part of our study, we examined DNN architectures to forecast cardiac failure. Over the training data, existing deep learning methods were employed. A new deep learning method that can predict heart failure using RR interval measurements is developed by comparing the accuracy performance of the proposed and existing models. The Physiobank NSR-RR and CHF-RR databases were used to compile the findings. The new model, which was based on experimental findings using these two free RR interval databases, attained a 94% accuracy rate compared to the existing model's 93.1% accuracy rate.
一种新的深度学习方法从RR间隔测量中准确预测心力衰竭
心血管疾病是全世界死亡的主要原因。早期发现心力衰竭将有助于患者和医疗专业人员采取更好的预防措施,以减少风险。这项研究的目的是找到一种能够可靠地预测心血管疾病风险的技术。在我们提供的训练数据的帮助下,多层感知器(MLP)、卷积神经网络(CNN)和循环神经网络(RNN)等深度学习算法可以做出这些预测。由于缺乏医疗数据,预测的准确性将会降低。作为我们研究的一部分,我们研究了DNN架构来预测心力衰竭。对于训练数据,使用现有的深度学习方法。通过比较所提出的模型和现有模型的准确性,开发了一种新的深度学习方法,可以使用RR间隔测量来预测心力衰竭。使用Physiobank NSR-RR和CHF-RR数据库汇编研究结果。基于这两个免费RR区间数据库的实验结果,新模型的准确率达到了94%,而现有模型的准确率为93.1%。
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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