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Abstract #4208

Validation of deep-learning accelerated quantitative susceptibility imaging for application in deep brain nuclei

Ying Zhou1,2, Shan Xu1, Lingyun Liu1, Yongquan Ye3, Jianzhong Sun1, and Peiyu Huang1
1Department of Radiology, Second Affiliated Hospital, Zhejiang University School of Medicine, Hangzhou, China, 2Department of Radiology, Taizhou Central Hospital, Taizhou, China, 3UIH America, Houston, TX, United States

Synopsis

Keywords: Aging, Quantitative Susceptibility mapping, Parkinson's disease, Aging, Deep-learning

Motivation: Quantitative susceptibility imaging (QSM) has demonstrated its potential in clinical applications. In patients with Parkinson’s disease, stroke, etc., a shorter acquisition time is desired.

Goal(s): Here we aim to validate the accuracy of a deep learning (DL) based method for accelerating QSM in human volunteers.

Approach: We enrolled 59 participants from communities and acquired both routine QSM and DL-QSM images. We measured iron deposition in deep brain nucleus and studied the influence of different acceleration factors (3,4, and 5).

Results: Results showed that susceptibility values from DL-QSM are highly consistent with routine parallel imaging accelerated images, and they also correlated well with age.

Impact: As we validated the reliability and accuracy of deep-learning accelerated quantitative susceptibility imaging, future clinical studies can use this method on patients who cannot tolerate long scan time.

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Keywords