Application of Data-Driven computing to patient-specific prediction of the viscoelastic response of human brain under transcranial ultrasound stimulation
Abstract
We present a class of model-free Data-Driven solvers that effectively enable the utilization of in situ and in vivo imaging data directly in full-scale calculations of the mechanical response of the human brain to sonic and ultrasonic stimulation, entirely bypassing the need for analytical modeling or regression of the data. The well-posedness of the approach and its convergence with respect to data are proven analytically. We demonstrate the approach, including its ability to make detailed spatially resolved patient-specific predictions of wave patterns, using public-domain MRI images, MRE data and commercially available solid-mechanics software.
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Acknowledgement
This project was supported by U.S. National Institutes of Health Grant No. 1RF1MH117080 and by the German Research Foundation (Deutsche Forschungsgemeinschaft; DFG) within the Priority Program 2311, Grant Number 465194077.
Contributions
HS and MO were both involved in conceptualization, investigation, analysis, and writing. HS was involved in simulations.
Conflict of Interest
The authors declare no competing interests.
Additional details
- ISSN
- 1617-7940
- National Institutes of Health
- 1RF1MH117080
- Deutsche Forschungsgemeinschaft
- 2311 -- 465194077
- Duke University
- Caltech groups
- GALCIT