Magnetic Resonance Imaging
Volume 28, Issue 9 , Pages 1361-1373, November 2010

Magnetic resonance image enhancement using stochastic resonance in Fourier domain☆☆

Received 23 March 2009; received in revised form 18 January 2010; accepted 25 June 2010. published online 27 August 2010.

Abstract 

Objective

In general, low-field MRI scanners such as the 0.5- and 1-T ones produce images that are poor in quality. The motivation of this study was to lessen the noise and enhance the signal such that the image quality is improved. Here, we propose a new approach using stochastic resonance (SR)-based transform in Fourier space for the enhancement of magnetic resonance images of brain lesions, by utilizing an optimized level of Gaussian fluctuation that maximizes signal-to-noise ratio (SNR).

Materials and Methods

We acquired the T1-weighted MR image of the brain in DICOM format. We processed the original MR image using the proposed SR procedure. We then tested our approach on about 60 patients of different age groups with different lesions, such as arteriovenous malformation, benign lesion and malignant tumor, and illustrated the image enhancement by using just-noticeable difference visually as well as by utilizing the relative enhancement factor quantitatively.

Results

Our method can restore the original image from noisy image and optimally enhance the edges or boundaries of the tissues, clarify indistinct structural brain lesions without producing ringing artifacts, as well as delineate the edematous area, active tumor zone, lesion heterogeneity or morphology, and vascular abnormality. The proposed technique improves the enhancement factor better than the conventional techniques like the Wiener- and wavelet-based procedures.

Conclusions

The proposed method can readily enhance the image fusing a unique constructive interaction of noise and signal, and enables improved diagnosis over conventional methods. The approach well illustrates the novel potential of using a small amount of Gaussian noise to improve the image quality.

Keywords: Stochastic resonance, Noise, Image enhancement, Brownian motion, Brain tumor, MRI, k-Space

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 Conflict of interest: The authors declare that they do not have any financial or commercial stake in the matter.

☆☆ This work is supported by grants from the Ministry of Defense, Government of India, New Delhi (Defense Research and Development Organization: Life Sciences Research Board).

PII: S0730-725X(10)00171-2

doi:10.1016/j.mri.2010.06.014

Magnetic Resonance Imaging
Volume 28, Issue 9 , Pages 1361-1373, November 2010