Chemical Shift Encoding based Double Bonds Quantification in Triglycerides using Deep Image Prior
Chaoxing Huang, Ziqiang Yu, Zijian Gao, Qiuyi Shen, Queenie Chan,, Vincent Wai-Sun Wong, Winnie Chiu-Wing Chu, Weitian Chen

TL;DR
This paper introduces a novel deep learning approach using Deep Image Prior for quantifying double bonds in triglycerides from MRI data without training, validated through phantom and in-vivo experiments showing high accuracy.
Contribution
The study presents a training-free deep learning method for double bonds quantification in triglycerides using DIP, improving accuracy and clinical applicability.
Findings
High correlation (r=0.96) with reference standards in phantom experiments.
Reliable quantification in low-fat signal conditions.
Consistent in-vivo results matching previous studies.
Abstract
Fatty acid can potentially serve as biomarker for evaluating metabolic disorder and inflammation condition, and quantifying the double bonds is the key for revealing fatty acid information. This study presents an assessment of a deep learning approach utilizing Deep Image Prior (DIP) for the quantification of double bonds and methylene-interrupted double bonds of triglyceride derived from chemical-shift encoded multi-echo gradient echo images, all achieved without the necessity for network training. The methodology implemented a cost function grounded in signal constraints to continually refine the neural network's parameters on a single slice of images through iterative processes. Validation procedures encompassed both phantom experiments and in-vivo scans. The outcomes evidenced a concordance between the quantified values and the established reference standards, notably exemplified by…
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Taxonomy
TopicsComputational Drug Discovery Methods
