Meidcal image processing: denoising dynamic perfusion MRI (DCE-MRI) data using AI
Loading...
Date
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
IISER Mohali
Abstract
Dynamic Contrast-Enhanced MRI (DCE-MRI) has been established as a non-invasive imaging
technique which is extensively used to quantitatively evaluate tumour biology in many
physiological and pathological cases. The dynamic scans are then used to quantify the
permeability of the contrast agent to the Blood-Brain Barrier (BBB) by extracting the
pharmacokinetic parameters. However, the DCE-MRI concentration curves (C(t)) are prone to
Gaussian and Rician noise. In this study, an attempt is based to understand the variation of
different Tracer Kinetic Parameters (TKP) at various noise levels. Further, state of the art deep
learning-based denoising systems were trained to capture the different noise levels and
characteristic shapes of the C(t) in an attempt to reduce the noise found in the real dataset. For
training as clean signals (ground truth) are not available, the Generalized Tracer Kinetic Model
(GTKM) with non-linear dynamics was used to generate pragmatic training data. The results
of this study reveal the dependence of TKP on noise levels. It was also found that deep
denoising systems were able to bring down the inherent noise in the C(t) curves from the Gray
Matter and White Matter in the real dataset. This is validated by the improved Signal to Noise
Ratio (SNR) and increase in the similarity index of the concentration curves of neighbouring
voxels.