Monte Carlo-based Noise Compensation in Coil Intensity Corrected Endorectal MRI
Dorothy Lui, Amen Modhafar, Masoom Haider, and Alexander Wong

TL;DR
This paper introduces a Monte Carlo-based noise compensation method for coil intensity corrected endorectal MRI, significantly enhancing image quality by reducing noise and preserving details, especially when raw data is unavailable.
Contribution
A novel Monte Carlo-based noise compensation approach tailored for coil intensity corrected endorectal MRI, addressing non-stationary noise variations without requiring raw data.
Findings
Average SNR improvement of 11.7 dB over uncorrected MRI
Average CNR improvement of 11.2 dB over uncorrected MRI
Strong performance compared to existing methods
Abstract
Background: Prostate cancer is one of the most common forms of cancer found in males making early diagnosis important. Magnetic resonance imaging (MRI) has been useful in visualizing and localizing tumor candidates and with the use of endorectal coils (ERC), the signal-to-noise ratio (SNR) can be improved. The coils introduce intensity inhomogeneities and the surface coil intensity correction built into MRI scanners is used to reduce these inhomogeneities. However, the correction typically performed at the MRI scanner level leads to noise amplification and noise level variations. Methods: In this study, we introduce a new Monte Carlo-based noise compensation approach for coil intensity corrected endorectal MRI which allows for effective noise compensation and preservation of details within the prostate. The approach accounts for the ERC SNR profile via a spatially-adaptive noise model…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Prostate Cancer Diagnosis and Treatment · Radiomics and Machine Learning in Medical Imaging
