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FD‐Net: An unsupervised deep forward‐distortion model for susceptibility artifact correction in EPI

Abdallah Zaid Alkilani, Tolga Çukur, Emine Ülkü Sarıtaş

2023Magnetic Resonance in Medicine14 citationsDOIOpen Access PDF

Abstract

PURPOSE: To introduce an unsupervised deep-learning method for fast and effective correction of susceptibility artifacts in reversed phase-encode (PE) image pairs acquired with echo planar imaging (EPI). METHODS: Recent learning-based correction approaches in EPI estimate a displacement field, unwarp the reversed-PE image pair with the estimated field, and average the unwarped pair to yield a corrected image. Unsupervised learning in these unwarping-based methods is commonly attained via a similarity constraint between the unwarped images in reversed-PE directions, neglecting consistency to the acquired EPI images. This work introduces a novel unsupervised deep Forward-Distortion Network (FD-Net) that predicts both the susceptibility-induced displacement field and the underlying anatomically correct image. Unlike previous methods, FD-Net enforces the forward-distortions of the correct image in both PE directions to be consistent with the acquired reversed-PE image pair. FD-Net further leverages a multiresolution architecture to maintain high local and global performance. RESULTS: FD-Net performs competitively with a gold-standard reference method (TOPUP) in image quality, while enabling a leap in computational efficiency. Furthermore, FD-Net outperforms recent unwarping-based methods for unsupervised correction in terms of both image and field quality. CONCLUSION: The unsupervised FD-Net method introduces a deep forward-distortion approach to enable fast, high-fidelity correction of susceptibility artifacts in EPI by maintaining consistency to measured data. Therefore, it holds great promise for improving the anatomical accuracy of EPI imaging.

Topics & Concepts

Artifact (error)Distortion (music)Artificial intelligenceComputer sciencePattern recognition (psychology)TelecommunicationsAmplifierBandwidth (computing)Advanced MRI Techniques and ApplicationsUltrasound Imaging and ElastographyNuclear Physics and Applications
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