Recurrent neural network‐based simultaneous cardiac T1, T2, and T1ρ mapping

Author:

Tao Yiming1,Lv Zhenfeng1,Liu Wenjian1,Qi Haikun23,Hu Peng23

Affiliation:

1. School of Biomedical Engineering ShanghaiTech University Shanghai China

2. School of Biomedical Engineering & State Key Laboratory of Advanced Medical Materials and Devices ShanghaiTech University Shanghai China

3. Shanghai Clinical Research and Trial Center ShanghaiTech University Shanghai China

Abstract

AbstractThe purpose of the current study was to explore the feasibility of training a deep neural network to accelerate the process of generating T1, T2, and T1ρ maps for a recently proposed free‐breathing cardiac multiparametric mapping technique, where a recurrent neural network (RNN) was utilized to exploit the temporal correlation among the multicontrast images. The RNN‐based model was developed for rapid and accurate T1, T2, and T1ρ estimation. Bloch simulation was performed to simulate a dataset of more than 10 million signals and time correspondences with different noise levels for network training. The proposed RNN‐based method was compared with a dictionary‐matching method and a conventional mapping method to evaluate the model's effectiveness in phantom and in vivo studies at 3 T, respectively. In phantom studies, the RNN‐based method and the dictionary‐matching method achieved similar accuracy and precision in T1, T2, and T1ρ estimations. In in vivo studies, the estimated T1, T2, and T1ρ values obtained by the two methods achieved similar accuracy and precision for 10 healthy volunteers (T1: 1228.70 ± 53.80 vs. 1228.34 ± 52.91 ms, p > 0.1; T2: 40.70 ± 2.89 vs. 41.19 ± 2.91 ms, p > 0.1; T1ρ: 45.09 ± 4.47 vs. 45.23 ± 4.65 ms, p > 0.1). The RNN‐based method can generate cardiac multiparameter quantitative maps simultaneously in just 2 s, achieving 60‐fold acceleration compared with the dictionary‐matching method. The RNN‐accelerated method offers an almost instantaneous approach for reconstructing accurate T1, T2, and T1ρ maps, being much more efficient than the dictionary‐matching method for the free‐breathing multiparametric cardiac mapping technique, which may pave the way for inline mapping in clinical applications.

Funder

National Natural Science Foundation of China

Publisher

Wiley

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Exercise MR of Skeletal Muscles, the Heart, and the Brain;Journal of Magnetic Resonance Imaging;2024-05-10

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