Accelerating Prostate Diffusion Weighted MRI using Guided Denoising Convolutional Neural Network: Retrospective Feasibility Study
Elena A. Kaye, Emily A. Aherne, Cihan Duzgol, Ida H\"aggstr\"om, Erich, Kobler, Yousef Mazaheri, Maggie M Fung, Zhigang Zhang, Ricardo Otazo, Herbert, A. Vargas, Oguz Akin

TL;DR
This study demonstrates that a guided denoising convolutional neural network can effectively accelerate prostate diffusion-weighted MRI by reducing acquisition time while maintaining image quality and quantitative accuracy.
Contribution
The paper introduces a novel guided DnCNN that uses low b-value images as guidance, improving denoising performance over conventional methods for faster prostate DWI.
Findings
Guided DnCNN outperforms conventional DnCNN in image quality metrics.
Denoised images show high agreement with reference ADC maps.
Feasibility of accelerated prostate DWI with maintained image integrity.
Abstract
Purpose: To investigate feasibility of accelerating prostate diffusion-weighted imaging (DWI) by reducing the number of acquired averages and denoising the resulting image using a proposed guided denoising convolutional neural network (DnCNN). Materials and Methods: Raw data from the prostate DWI scans were retrospectively gathered (between July 2018 and July 2019) from six single-vendor MRI scanners. 118 data sets were used for training and validation (age: 64.3 +- 8 years) and 37 - for testing (age: 65.1 +- 7.3 years). High b-value diffusion-weighted (hb-DW) data were reconstructed into noisy images using two averages and reference images using all sixteen averages. A conventional DnCNN was modified into a guided DnCNN, which uses the low b-value DWI image as a guidance input. Quantitative and qualitative reader evaluations were performed on the denoised hb-DW images. A cumulative…
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Taxonomy
MethodsDiffusion
