CoNeS: Conditional neural fields with shift modulation for multi-sequence MRI translation
Yunjie Chen, Marius Staring, Olaf M. Neve, Stephan R. Romeijn, Erik F., Hensen, Berit M. Verbist, Jelmer M. Wolterink, Qian Tao

TL;DR
This paper introduces CoNeS, a neural field model using shift modulation to improve multi-sequence MRI translation, outperforming CNN-based methods and overcoming spectral bias, with potential clinical application benefits.
Contribution
We propose CoNeS, a neural field model with shift modulation that enhances MRI translation quality and spectral properties over CNN-based approaches.
Findings
Outperforms state-of-the-art CNN methods in MRI translation.
Successfully overcomes spectral bias in neural network models.
Improves downstream segmentation tasks with synthesized images.
Abstract
Multi-sequence magnetic resonance imaging (MRI) has found wide applications in both modern clinical studies and deep learning research. However, in clinical practice, it frequently occurs that one or more of the MRI sequences are missing due to different image acquisition protocols or contrast agent contraindications of patients, limiting the utilization of deep learning models trained on multi-sequence data. One promising approach is to leverage generative models to synthesize the missing sequences, which can serve as a surrogate acquisition. State-of-the-art methods tackling this problem are based on convolutional neural networks (CNN) which usually suffer from spectral biases, resulting in poor reconstruction of high-frequency fine details. In this paper, we propose Conditional Neural fields with Shift modulation (CoNeS), a model that takes voxel coordinates as input and learns a…
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Taxonomy
TopicsMeningioma and schwannoma management · Model Reduction and Neural Networks · Glioma Diagnosis and Treatment
