Hybrid Pattern Extraction with Deep Learning-Based Heart Disease Diagnosis Using Echocardiogram Images

Nagashetteppa Biradar
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Abstract

Echocardiography represents a noninvasive diagnostic approach that offers information concerning hemodynamics and cardiac function. It is a familiar cardiovascular diagnostic test apart from chest X-ray and echocardiography. The medical knowledge is enhanced by the Artificial Intelligence (AI) approaches like deep learning and machine learning because of the increase in the complexity as well as the volume of the data that in turn unlocks the clinically significant information. Similarly, the usage of developing information as well as communication technologies is becoming important for generating a persistent healthcare service via which the chronic disease and elderly patients get their medical facility at their home that in turn enhances the life quality and avoids hospitalizations. The main intention of this paper is to design and develop a novel heart disease diagnosis using speckle-noise reduction and deep learning-based feature learning and classification. The datasets gathered from the hospital are composed of both the images and the video frames. Since echocardiogram images suffer from speckle noise, the initial process is the speckle-noise reduction technique. Then, the pattern extraction is performed by combining the Local Binary Pattern (LBP), and Weber Local Descriptor (WLD) referred to as the hybrid pattern extraction. The deep feature learning is conducted by the optimized Convolutional Neural Network (CNN), in which the features are extracted from the max-pooling layer, and the fully connected layer is replaced by the optimized Recurrent Neural Network (RNN) for handling the diagnosis of heart disease, thus proposed model is termed as CRNN. The novel Adaptive Electric Fish Optimization (A-EFO) is used for performing feature learning and classification. In the final step, the best accuracy is achieved with the introduced model, while a comparative analysis is accomplished over the traditional models. From the experimental analysis, FDR of A-EFO-CRNN at 75% learning percentage is 21.05%, 15%, 48.89%, and 71.95% progressed than CRNN, CNN, RNN, and NN, respectively. Thus, the performance of the A-EFO-CRNN is enriched than the existing heuristic-oriented and classifiers in terms of the image dataset.
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基于超声心动图图像的基于深度学习的心脏病诊断混合模式提取
超声心动图是一种无创诊断方法,可提供有关血流动力学和心功能的信息。它是除胸部x线和超声心动图外常见的心血管诊断检查。医学知识通过深度学习和机器学习等人工智能(AI)方法得到增强,因为复杂性和数据量的增加反过来又解锁了临床重要信息。同样,发展中的信息和通信技术的使用对于提供持久的保健服务也变得越来越重要,慢性病患者和老年患者通过这种服务可以在家中获得医疗设施,从而提高生活质量并避免住院治疗。本文的主要目的是设计和开发一种基于斑点噪声降噪和基于深度学习的特征学习和分类的新型心脏病诊断方法。从医院收集的数据集由图像和视频帧组成。由于超声心动图图像存在散斑噪声,因此首先采用散斑降噪技术。然后,结合局部二值模式(LBP)和韦伯局部描述符(WLD)进行模式提取,即混合模式提取。通过优化后的卷积神经网络(CNN)进行深度特征学习,从最大池化层中提取特征,并将全连接层替换为优化后的递归神经网络(RNN)来处理心脏病的诊断,因此提出的模型称为CRNN。采用自适应电鱼优化算法(A-EFO)进行特征学习和分类。在最后一步,采用所引入的模型获得了最好的精度,并与传统模型进行了对比分析。从实验分析来看,在75%学习率下,A-EFO-CRNN的FDR分别比CRNN、CNN、RNN和NN进步21.05%、15%、48.89%和71.95%。因此,在图像数据集方面,A-EFO-CRNN的性能比现有的启发式导向分类器和分类器更丰富。
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