Since the early days of medical practice, assessing tissue stiffness has been a key component in evaluating tissue health. To estimate this parameter quantitatively and non-invasively, a variety of elastography techniques have been developed. Among them, methods based on the estimation of local shear wave speed have yielded highly promising results in ultrasound, MRI, and optical imaging modalities. In this paper, we introduce a proof-of-concept study that combines a deep learning approach with noise correlation elastography to estimate mechanical properties from a diffuse shear wave field. While the focus of this work is limited to stiffness estimation, the proposed framework can be extended to other mechanical parameters, such as anisotropy or viscoelasticity.
Legrand et al. (Wed,) studied this question.