Optimisation of quantitative brain diffusion-relaxation MRI acquisition protocols with physics-informed machine learning
Title | Optimisation of quantitative brain diffusion-relaxation MRI acquisition protocols with physics-informed machine learning |
Publication Type | Journal Article |
Year of Publication | 2024 |
Authors | Planchuelo-Gómez, Á., M. Descoteaux, H. Larochelle, J. Hutter, D. K. Jones, and C. M. W. Tax |
Journal | Medical Image Analysis |
Volume | 94 |
Pagination | 103134 |
ISSN | 1361-8415 |
Keywords | Brain, Diffusion-relaxation, Quantitative MRI, machine learning |
Abstract | Diffusion-relaxation MRI aims to extract quantitative measures that characterise microstructural tissue properties such as orientation, size, and shape, but long acquisition times are typically required. This work proposes a physics-informed learning framework to extract an optimal subset of diffusion-relaxation MRI measurements for enabling shorter acquisition times, predict non-measured signals, and estimate quantitative parameters. In vivo and synthetic brain 5D-Diffusion-T1-T2*-weighted MRI data obtained from five healthy subjects were used for training and validation, and from a sixth participant for testing. One fully data-driven and two physics-informed machine learning methods were implemented and compared to two manual selection procedures and CramérRao lower bound optimisation. The physics-informed approaches could identify measurement-subsets that yielded more consistently accurate parameter estimates in simulations than other approaches, with similar signal prediction error. Five-fold shorter protocols yielded error distributions of estimated quantitative parameters with very small effect sizes compared to estimates from the full protocol. Selected subsets commonly included a denser sampling of the shortest and longest inversion time, lowest echo time, and high b-value. The proposed framework combining machine learning and MRI physics offers a promising approach to develop shorter imaging protocols without compromising the quality of parameter estimates and signal predictions. |
URL | https://www.sciencedirect.com/science/article/pii/S1361841524000598 |
DOI | 10.1016/j.media.2024.103134 |