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Department of Electrical Engineering and Computer Science
Multimodal Biomedical Imaging and System Laboratory
1. Journal Articles
Machine Learning-Enhanced Skull-Universal Acoustic Hologram for Efficient Transcranial Ultrasound Neuromodulation Across Varied Rodent Skulls
Lee, Moon Hwan
;
Lee, Kyungsu
;
Yoo, Youngseung
;
Cho, HyungJoon
;
Chung, Euiheon
;
Hwang, Jae Youn
Department of Electrical Engineering and Computer Science
Multimodal Biomedical Imaging and System Laboratory
1. Journal Articles
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Title
Machine Learning-Enhanced Skull-Universal Acoustic Hologram for Efficient Transcranial Ultrasound Neuromodulation Across Varied Rodent Skulls
Issued Date
2025-01
Citation
Lee, Moon Hwan. (2025-01). Machine Learning-Enhanced Skull-Universal Acoustic Hologram for Efficient Transcranial Ultrasound Neuromodulation Across Varied Rodent Skulls. IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control, 72(1), 127–140. doi: 10.1109/TUFFC.2024.3506913
Type
Article
Author Keywords
transcranial
;
machine learning
;
rodent
;
ultrasound neuromodulation
;
acoustic hologram
ISSN
0885-3010
Abstract
Ultrasound neuromodulation (UNM) has gained significant interest in brain science due to its non-invasive nature, precision, and deep brain stimulation capabilities. However, the skull poses challenges along the acoustic path, leading to beam distortion and necessitating effective acoustic aberration correction. Acoustic holograms used with single-element ultrasound transducers offer a promising solution by enabling both aberration correction and multi-focal stimulation. A major limitation, however, is that hologram lenses designed for specific skulls may not perform well on other skulls, requiring multiple custom lenses for scaled studies. To address this, we introduce the Skull-Universal Acoustic Hologram (SUAH), which enables efficient transcranial UNM across various skull types. Our hologram generation framework integrates a physics-based acoustic hologram, differentiable acoustic simulation in heterogeneous media, and a gradient accumulation technique. SUAH, trained on a range of rodent skull shapes, demonstrated remarkable generalizability and robustness, even outperforming the Skull-Specific Acoustic Hologram (SSAH). Through comprehensive analyses, we showed that SUAH performs exceptionally well - even when trained on smaller datasets - significantly outperforming training based on individual skulls. In conclusion, SUAH shows promise as a scalable, versatile, and accurate tool for ultrasound neuromodulation, representing a significant advancement over conventional single-skull hologram lenses. Its ability to adapt to different skull types without the need for multiple custom lenses has the potential to greatly facilitate research in ultrasound neuromodulation. © IEEE.
URI
http://hdl.handle.net/20.500.11750/57327
DOI
10.1109/TUFFC.2024.3506913
Publisher
Institute of Electrical and Electronics Engineers
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