T1-contrast Enhanced MRI Generation from Multi-parametric MRI for Glioma Patients with Latent Tumor Conditioning
Zach Eidex, Mojtaba Safari, Richard L.J. Qiu, David S. Yu, Hui-Kuo, Shu, Hui Mao, Xiaofeng Yang

TL;DR
This paper introduces a deep learning framework that generates synthetic T1-contrast MRI images from pre-contrast multi-parametric MRI to reduce reliance on potentially toxic contrast agents in glioma patients.
Contribution
The study develops a novel tumor-aware vision transformer model that accurately predicts T1-contrast MRI from multi-parametric MRI, improving tumor and tissue visualization without contrast agents.
Findings
The proposed TA-ViT model outperforms benchmark models in generating high-quality synthetic T1C images.
Synthetic images closely resemble real T1C MRI with high accuracy in tumor and healthy tissue regions.
The method has potential to enable contrast-agent-free MRI, reducing toxicity risks.
Abstract
Objective: Gadolinium-based contrast agents (GBCAs) are commonly used in MRI scans of patients with gliomas to enhance brain tumor characterization using T1-weighted (T1W) MRI. However, there is growing concern about GBCA toxicity. This study develops a deep-learning framework to generate T1-postcontrast (T1C) from pre-contrast multiparametric MRI. Approach: We propose the tumor-aware vision transformer (TA-ViT) model that predicts high-quality T1C images. The predicted tumor region is significantly improved (P < .001) by conditioning the transformer layers from predicted segmentation maps through adaptive layer norm zero mechanism. The predicted segmentation maps were generated with the multi-parametric residual (MPR) ViT model and transformed into a latent space to produce compressed, feature-rich representations. The TA-ViT model predicted T1C MRI images of 501 glioma cases. Selected…
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Taxonomy
TopicsGlioma Diagnosis and Treatment · Medical Imaging Techniques and Applications · Advanced MRI Techniques and Applications
MethodsAttention Is All You Need · Softmax · Layer Normalization · Linear Layer · Dense Connections · Residual Connection · Multi-Head Attention · Vision Transformer
