DeepFittingNet: A deep neural network-based approach for simplifying cardiac T1 and T2 estimation with improved robustness

Rui Guo, Dongyue Si, Yingwei Fan, Xiaofeng Qian, Haina Zhang, Haiyan Ding*, Xiaoying Tang

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

3 Citations (Scopus)

Abstract

Purpose: To develop and evaluate a deep neural network (DeepFittingNet) for T1/T2 estimation of the most commonly used cardiovascular MR mapping sequences to simplify data processing and improve robustness. Theory and Methods: DeepFittingNet is a 1D neural network composed of a recurrent neural network (RNN) and a fully connected (FCNN) neural network, in which RNN adapts to the different number of input signals from various sequences and FCNN subsequently predicts A, B, and Tx of a three-parameter model. DeepFittingNet was trained using Bloch-equation simulations of MOLLI and saturation-recovery single-shot acquisition (SASHA) T1 mapping sequences, and T2-prepared balanced SSFP (T2-prep bSSFP) T2 mapping sequence, with reference values from the curve-fitting method. Several imaging confounders were simulated to improve robustness. The trained DeepFittingNet was tested using phantom and in-vivo signals, and compared to the curve-fitting algorithm. Results: In testing, DeepFittingNet performed T1/T2 estimation of four sequences with improved robustness in inversion-recovery T1 estimation. The mean bias in phantom T1 and T2 between the curve-fitting and DeepFittingNet was smaller than 30 and 1 ms, respectively. Excellent agreements between both methods was found in the left ventricle and septum T1/T2 with a mean bias <6 ms. There was no significant difference in the SD of both the left ventricle and septum T1/T2 between the two methods. Conclusion: DeepFittingNet trained with simulations of MOLLI, SASHA, and T2-prep bSSFP performed T1/T2 estimation tasks for all these most used sequences. Compared with the curve-fitting algorithm, DeepFittingNet improved the robustness for inversion-recovery T1 estimation and had comparable performance in terms of accuracy and precision.

Original languageEnglish
Pages (from-to)1979-1989
Number of pages11
JournalMagnetic Resonance in Medicine
Volume90
Issue number5
DOIs
Publication statusPublished - Nov 2023

Keywords

  • curve-fitting algorithm
  • map reconstruction
  • myocardial T and T mapping
  • neural network

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