Chengyue Wu

Assistant Professor


Curriculum vitae



Imaging Physics

The University of Texas MD Anderson Cancer Center



in silico MRI validation framework


Quantitative evaluation of an image processing method to perform as designed is central to both its utility and its ability to guide the data acquisition process. Unfortunately, these tasks can be quite challenging due to the difficulty of experimentally obtaining the “ground truth” data to which the output of a given processing method must be compared. One way to address this issue is via “digital phantoms”, which are numerical models that provide known biophysical properties of a particular object of interest. 

In this project, we established an in silico validation framework for dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) acquisition and analysis methods that employs a novel dynamic digital phantom. The phantom provides a spatiotemporally-resolved representation of blood-interstitial flow and contrast agent delivery, where the former is solved by a 1D-3D coupled computational fluid dynamic system, and the latter described by an advection-diffusion equation. Furthermore, we establish a virtual simulator which takes as input the digital phantom, and produces realistic DCE-MRI data with controllable acquisition parameters.

We used this developed framework to assess the performance of the standard-of-care high-spatial resolution acquisition, as well as the ultra-fast acquisition. The results indicate that our in silico framework can generate virtual MR images that capture effects of acquisition parameters on the ability of generated images to capture morphological or pharmacokinetic features. This validation framework is not only useful for investigations of perfusion-based MRI techniques, but also for the systematic evaluation and optimization new MRI acquisition, reconstruction, and image processing techniques.

Publications


An in silico validation framework for quantitative DCE-MRI techniques based on a dynamic digital phantom


Chengyue Wu, D. Hormuth, T. Easley, V. Eijkhout, F. Pineda, G. Karczmar, T. Yankeelov

Medical Image Anal., 2021


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