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ORIGINAL RESEARCH article

Front. Comput. Neurosci.
Volume 18 - 2024 | doi: 10.3389/fncom.2024.1365238

Multi-Sequence Generative Adversarial Network: Better Generation for Enhanced Magnetic Resonance Imaging Images Provisionally Accepted

 li leizi1, 2 Yu Jingchun2 Li Yijin2  Wei Jinbo1 Wu Dieen1*  Ye Yufeng1, 3*
  • 1Guangzhou Panyu Central Hospital, South China Normal University-Panyu Central Hospital Joint Laboratory of Basic and Translational Medical Research, China
  • 2School of Life Science, South China Normal University, China
  • 3Medical Imaging Institute of Panyu, China

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MRI is one of the commonly used diagnostic methods in clinical practice, especially in brain diseases.There are many sequences in MRI, but T1CE images can only be obtained by using contrast agents. Many patients (such as cancer patients) must undergo alignment of multiple MRI sequences for diagnosis, especially the contrast-enhanced magnetic resonance sequence. However, some patients such as pregnant women, children, etc. find it difficult to use contrast agents to obtain enhanced sequences, and contrast agents have many adverse reactions, which can pose a significant risk. With the continuous development of deep learning, the emergence of generative adversarial networks makes it possible to extract features from one type of image to generate another type of image. We propose a generative adversarial network model with multimodal inputs and end-to-end decoding based on the pix2pix model. For the pix2pix model, we used four evaluation metrics: NMSE, RMSE, SSIM, and PNSR to assess the effectiveness of our generated model. Through statistical analysis, we compared our proposed new model with pix2pix and found significant differences between the two. Our model outperformed pix2pix, with higher SSIM and PNSR, lower NMSE and RMSE. We also found that the input of T1W images and T2W images had better effects than other combinations, providing new ideas for subsequent work on generating magnetic resonance enhancement sequence images. By using our model, it is possible to generate magnetic resonance enhanced sequence images based on magnetic resonance non-enhanced sequence images. This has significant implications as it can greatly reduce the use of contrast agents to protect populations such as pregnant women and children who are contraindicated for contrast agents. Additionally, contrast agents are relatively expensive, and this generation method may bring about substantial economic benefits.

Keywords: generative adversarial network, Magnetic Resonance Imaging, multimodal, Convolutional Neural Network, contrast-enhanced magnetic resonance sequence

Received: 04 Jan 2024; Accepted: 27 Mar 2024.

Copyright: © 2024 leizi, Jingchun, Yijin, Jinbo, Dieen and Yufeng. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

* Correspondence:
Mx. Wu Dieen, South China Normal University-Panyu Central Hospital Joint Laboratory of Basic and Translational Medical Research, Guangzhou Panyu Central Hospital, Guangzhou, China
Mx. Ye Yufeng, South China Normal University-Panyu Central Hospital Joint Laboratory of Basic and Translational Medical Research, Guangzhou Panyu Central Hospital, Guangzhou, China