English

Data-driven methods for quantitative imaging

Optimization and Control 2024-04-12 v1

Abstract

In the field of quantitative imaging, the image information at a pixel or voxel in an underlying domain entails crucial information about the imaged matter. This is particularly important in medical imaging applications, such as quantitative Magnetic Resonance Imaging (qMRI), where quantitative maps of biophysical parameters can characterize the imaged tissue and thus lead to more accurate diagnoses. Such quantitative values can also be useful in subsequent, automatized classification tasks in order to discriminate normal from abnormal tissue, for instance. The accurate reconstruction of these quantitative maps is typically achieved by solving two coupled inverse problems which involve a (forward) measurement operator, typically ill-posed, and a physical process that links the wanted quantitative parameters to the reconstructed qualitative image, given some underlying measurement data. In this review, by considering qMRI as a prototypical application, we provide a mathematically-oriented overview on how data-driven approaches can be employed in these inverse problems eventually improving the reconstruction of the associated quantitative maps.

Keywords

Cite

@article{arxiv.2404.07886,
  title  = {Data-driven methods for quantitative imaging},
  author = {Guozhi Dong and Moritz Flaschel and Michael Hintermüller and Kostas Papafitsoros and Clemens Sirotenko and Karsten Tabelow},
  journal= {arXiv preprint arXiv:2404.07886},
  year   = {2024}
}