IEEE Access (Jan 2024)

MRI Denoising Using Pixel-Wise Threshold Selection

  • Nimesh Srivastava,
  • Gyana Ranjan Sahoo,
  • Henning U. Voss,
  • Sumit N. Niogi,
  • Jack H. Freed,
  • Madhur Srivastava

DOI
https://doi.org/10.1109/ACCESS.2024.3449811
Journal volume & issue
Vol. 12
pp. 135730 – 135745

Abstract

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Magnetic resonance imaging (MRI) has emerged as a promising technique for non-invasive medical imaging. The primary challenge in MRI is the trade-off between image visual quality and acquisition time. Current MRI image denoising algorithms employ global thresholding to denoise the whole image, which leads to inadequate denoising or image distortion. This study introduces a novel pixel-wise (localized) thresholding approach of singular vectors, obtained from singular value decomposition, to denoise magnetic resonance (MR) images. The pixel-wise thresholding of singular vectors is performed using separate singular values as thresholds at each pixel, which is advantageous given the spatial noise variation throughout the image. The method presented is validated on MR images of a standard phantom approved by the magnetic resonance accreditation program (MRAP). The denoised images display superior visual quality and recover minute structural information otherwise suppressed in the noisy image. The increase in peak-signal-to-noise-ratio (PSNR) and contrast-to-noise-ratio (CNR) values of $\ge 18\%$ and $\ge 200\%$ of the denoised images, respectively, imply efficient noise removal and visual quality enhancement. The structural similarity index (SSIM) of $\ge 0.95$ for denoised images indicates that the crucial structural information is recovered through the presented method. A comparison with the standard filtering methods widely used for MRI denoising establishes the superior performance of the presented method. The presented pixel-wise denoising technique reduces the scan time by 2-3 times and has the potential to be integrated into any MRI system to obtain faster and better quality images.

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