Cape Town - 2026 ISMRM-ISMRT Annual Meeting and Exhibition
9 May 2026 – 14 May 2026 · Cape Town, South Africa
370-06-046 ISMRM Abstract

Deep Learning-Based Synthesis of Post-Contrast Cardiac T1 and Extracellular Volume for Identification of Fabry Disease

Accepted
Hsin-Tzu Huang 1, Ming-Ting Wu2, Teng-Yi Huang3, Hsu-Hsia Peng1
1Department of Biomedical Engineering and Environmental Sciences, National Tsing Hua University, Hsinchu, Taiwan
2Department of Radiology, Kaohsiung Veterans General Hospital, Kaohsiung, Taiwan
3Department of Electrical Engineering, National Taiwan University of Science and Technology, Taipei, Taiwan
Presenting Author: Hsin-Tzu Huang

Synopsis

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References

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