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Abstract #1654

Principal component analysis for model-free denoising of multi b-value diffusion-weighted images

Oliver J Gurney-Champion1, David J Collins2, Mihaela Rata2, Andreas Wetscherek1, Uwe Oelfke1, Kevin J Harrington3, and Matthew R Orton2

1Joint department of physics, Institute of Cancer Research and The Royal Marsden NHS Foundation Trust, London, United Kingdom, 2CRUK Cancer Imaging Centre, Institute of Cancer Research and The Royal Marsden NHS Foundation Trust, London, United Kingdom, 3Division of Radiotherapy & Imaging, Institute of Cancer Research and The Royal Marsden NHS Foundation Trust, London, United Kingdom

We introduce principal component analyses (PCA) as a denoising technique for diffusion-weighted MRI (DWI) that is independent of the diffusion attenuation model. PCA denoises DWI data using only informative components while removing noisy ones. We show that it outperforms model-based denoising in simulations as well as in vivo. In simulations, PCA-denoising resulted in smaller systematic errors, while random errors were similar. In vivo, PCA-denoising rendered less noisy images and when motion was present, PCA recovered certain structures that were obscured by motion in model-based denoising. In conclusion, PCA-denoising is a powerful model-free tool for denoising DWI data.

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