Deep Learning based Multi-modal Computing with Feature Disentanglement for MRI Image Synthesis
Yuchen Fei, Bo Zhan, Mei Hong, Xi Wu, Jiliu Zhou, Yan Wang

TL;DR
This paper introduces a deep learning model for MRI image synthesis that disentangles features into shared and modality-specific spaces, improving prediction accuracy and aiding clinical diagnosis.
Contribution
The work proposes a novel multi-modal MRI synthesis approach with feature disentanglement and adaptive fusion, outperforming existing methods in accuracy.
Findings
Significant improvement in PSNR from 23.68 to 24.8 over benchmark methods.
Outperforms state-of-the-art medical image synthesis techniques.
Effective in clinical MRI sequence prediction.
Abstract
Purpose: Different Magnetic resonance imaging (MRI) modalities of the same anatomical structure are required to present different pathological information from the physical level for diagnostic needs. However, it is often difficult to obtain full-sequence MRI images of patients owing to limitations such as time consumption and high cost. The purpose of this work is to develop an algorithm for target MRI sequences prediction with high accuracy, and provide more information for clinical diagnosis. Methods: We propose a deep learning based multi-modal computing model for MRI synthesis with feature disentanglement strategy. To take full advantage of the complementary information provided by different modalities, multi-modal MRI sequences are utilized as input. Notably, the proposed approach decomposes each input modality into modality-invariant space with shared information and…
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Taxonomy
MethodsInstance Normalization · Adaptive Instance Normalization
