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用于改善心脏病诊断中心脏图像分类的深度卷积生成对抗网络

Deep Convolutional Generative Adversarial Network for Improved Cardiac Image Classification in Heart Disease Diagnosis.

作者信息

S Gurusubramani, B Latha

机构信息

Department of Computer Science and Engineering, Sri Sairam Engineering College, Anna University, Chennai, India.

出版信息

J Imaging Inform Med. 2024 Dec 9. doi: 10.1007/s10278-024-01343-z.

DOI:10.1007/s10278-024-01343-z
PMID:39653875
Abstract

Heart disease is a fatal disease that causes significant mortality rates worldwide. The accurate and early detection of heart diseases is the most challenging task to save valuable lives. To avoid these issues, the Deep Convolutional Generative Adversarial Network (DCGAN) model is proposed that generates synthetic cardiac images. Here, two types of heart disease datasets such as the Sunnybrook Cardiac Dataset (SCD) and the Automated Cardiac Diagnosis Challenge (ACDC) dataset are selected to choose real cardiac images for implementation. The quality and consistency of the cardiac images are enhanced by preprocessed real cardiac images. In the DCGAN model, the generator is used for converting real cardiac images into synthetic images and the discriminator is responsible for differentiating real and synthetic cardiac images by binary classification decisions. To enhance the model's robustness and generalization ability, diverse augmentation techniques are implemented. The VGG16 model is applied in this paper for the image classification task and fine-tuned its parameters to optimize model convergence. For experimental validation, some of the significance metrics such as accuracy, precision, diagnostic time, peak signal-to-noise ratio (PSNR), structural similarity index (SSIM), false positive rate (FPR), false negative rate (FNR), and mean squared error (MSE) are utilized. The extensive experimental evaluations are carried out based on this metrics and attained a performance rate of the proposed method as 98.83%, 1.17%, 3.2%, 41.78, 4.52, 0.932, and 1.6 s from accuracy, FPR, FNR, PSNR, MSE, SSIM, and diagnostic time, respectively. The experimental evaluation results demonstrate that the proposed heart disease diagnosis model attains superior performances than state-of-the-art methods.

摘要

心脏病是一种致命疾病,在全球范围内导致了很高的死亡率。准确且早期地检测心脏病是挽救宝贵生命最具挑战性的任务。为了避免这些问题,提出了深度卷积生成对抗网络(DCGAN)模型来生成合成心脏图像。在此,选择了两种类型的心脏病数据集,如桑尼布鲁克心脏数据集(SCD)和自动心脏诊断挑战赛(ACDC)数据集,以选取真实心脏图像用于实施。通过对真实心脏图像进行预处理来提高心脏图像的质量和一致性。在DCGAN模型中,生成器用于将真实心脏图像转换为合成图像,而判别器负责通过二元分类决策来区分真实和合成心脏图像。为了提高模型的鲁棒性和泛化能力,实施了多种增强技术。本文将VGG16模型应用于图像分类任务,并对其参数进行微调以优化模型收敛。为了进行实验验证,使用了一些重要指标,如准确率、精确率、诊断时间、峰值信噪比(PSNR)、结构相似性指数(SSIM)、误报率(FPR)、漏报率(FNR)和均方误差(MSE)。基于这些指标进行了广泛的实验评估,所提方法在准确率(98.83%)、FPR(1.17%)、FNR(3.2%)、PSNR(41.78)、MSE(4.52)、SSIM(0.932)和诊断时间(1.6秒)方面分别达到了相应的性能率。实验评估结果表明,所提出的心脏病诊断模型比现有方法具有更优的性能。

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Med-cDiff: Conditional Medical Image Generation with Diffusion Models.Med-cDiff:基于扩散模型的条件医学图像生成
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