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Denoising of magnetic resonance imaging using Bayes shrinkage based fused wavelet transform and autoencoder based deep learning approach

机译:基于呼应的融合小波变换和基于自动化的深度学习方法的磁共振成像去噪

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摘要

Denoising of medical images is of great concern as it plays a significant role in performance of computer aided diagnosis (CAD) systems. In real life scenarios, various conditions like vibration of magnetic coils due to rapid pulses of electricity contribute to noise during the procurement of medical images such as magnetic resonance imaging (MRI), computed tomography (CT), and ultrasound. The use of imaging modality depends on the type of disease and its severity, and MRI is the commonly employed imaging modality for diagnosis of second most common dreadful cancers in men known as prostate cancer. However, MRI is prone to certain noises as Gaussian and Rician making denoising one of the important steps in the CAD system. Traditional approaches used for denoising of MRI were prone to certain issues such as loss of data due to compression and preservation of edge details. Hence, this paper presents Bayes shrinkage based fused wavelet transform (BSbFWT) and Block based autoencoder network (BBAuto-Net) for removal of noise from MRI. Further, the performance analysis of the denoising approaches are performed using different metrics. Thus, the values of peak signal to noise ratio (PSNR), mean squared error (MSE), structural similarity index metric (SSIM) and mean absolute error (MAE) for proposed BB-Autonet is found to be 28.029, 89.354, 0.581 and 21.802 for combined Gaussian and Rician noise. Whereas, the values of PSNR, MSE, SSIM and MAE for proposed BSbFWT are found to be 29.028, 81.33, 0.747 and 21.962 for combined Gaussian and Rician noise.
机译:由于在计算机辅助诊断(CAD)系统的性能方面发挥着重要作用,因此对医学图像的去噪具有很大的关注。在现实生活中,由于电力快速电力脉冲导致的各种条件,如磁线圈的振动导致在诸如磁共振成像(MRI),计算机断层扫描(CT)和超声波的医学图像期间有助于噪声。使用成像模态取决于疾病的类型及其严重程度,MRI是常用的成像模型,用于诊断为称为前列腺癌的男性的第二个最常见的可怕癌症。然而,MRI容易出现某些噪音,作为高斯和RICIAN,使CAD系统中的一个重要步骤成为一个。用于去噪的传统方法易于某些问题,例如由于压缩和保存边缘细节导致的数据丢失。因此,本文介绍了基于融合小波变换(BSBFWT)和基于块的自动化器网络(BBAuto-Net)的贝叶斯收缩,用于从MRI中移除噪声。此外,使用不同的指标进行去噪方法的性能分析。因此,发现所提出的BB AutoNet的峰值信号与噪声比(PSNR),均值相似度指数度量(SSIM),结构相似度指数度量(SSIM)和平均误差(MAE)的值为28.029,89.354,0.581和21.802合并高斯和瑞典噪音。虽然,用于提出的BSBFWT的PSNR,MSE,SSIM和MAE的值为29.028,81.33,0.747和21.962,用于组合高斯和瑞典噪音。

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