Publications by authors named "Tobias Wuerfl"

Diffusion-weighted imaging (DWI) is a magnetic resonance imaging (MRI) technique that provides information about the Brownian motion of water molecules within biological tissues. DWI plays a crucial role in stroke imaging and oncology, but its diagnostic value can be compromised by the inherently low signal-to-noise ratio (SNR). Conventional supervised deep learning-based denoising techniques encounter challenges in this domain as they necessitate noise-free target images for training.

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Thermal noise caused by the imaged object is an intrinsic limitation in magnetic resonance imaging (MRI), resulting in an impaired clinical value of the acquisitions. Recently, deep learning (DL)-based denoising methods achieved promising results by extracting complex feature representations from large data sets. Most approaches are trained in a supervised manner by directly mapping noisy to noise-free ground-truth data and, therefore, require extensive paired data sets, which can be expensive or infeasible to obtain for medical imaging applications.

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Synopsis of recent research by authors named "Tobias Wuerfl"

  • - Tobias Wuerfl's recent research focuses on enhancing diffusion-weighted MRI, specifically addressing the challenges posed by low signal-to-noise ratios (SNR) in medical imaging applications like oncology and stroke diagnosis.
  • - His work includes developing self-supervised denoising techniques that do not rely on noise-free target images, improving the use of deep learning methods in MRI denoising while minimizing the need for extensive paired datasets.
  • - Wuerfl's findings, showcased in articles published in "Scientific Reports," leverage novel approaches such as Stein's unbiased risk estimator and spatially resolved noise maps to optimize MRI imaging quality and clinical usability.