Deep-ER: Deep Learning ECCENTRIC Reconstruction for fast high-resolution neurometabolic imaging.

in NeuroImage by Paul Weiser, Georg Langs, Wolfgang Bogner, Stanislav Motyka, Bernhard Strasser, Polina Golland, Nalini Singh, Jorg Dietrich, Erik Uhlmann, Tracy Batchelor, Daniel Cahill, Malte Hoffmann, Antoine Klauser, Ovidiu C Andronesi

TLDR

  • The study presents a Deep Learning reconstruction method for MRSI that accelerates reconstruction time and improves image quality.
  • The method demonstrates 600-fold faster reconstruction than conventional methods and improved spatial-spectral quality and metabolite quantification.
  • The study suggests that the improved performance of Deep-ER can facilitate basic and clinical MRSI applications for neuroscience and precision medicine.

Abstract

Altered neurometabolism is an important pathological mechanism in many neurological diseases and brain cancer, which can be mapped non-invasively by Magnetic Resonance Spectroscopic Imaging (MRSI). Advanced MRSI using non-cartesian compressed-sense acquisition enables fast high-resolution metabolic imaging but has lengthy reconstruction times that limits throughput and needs expert user interaction. Here, we present a robust and efficient Deep Learning reconstruction embedded in a physical model within an end-to-end automated processing pipeline to obtain high-quality metabolic maps. Fast high-resolution whole-brain metabolic imaging was performed at 3.4 mmisotropic resolution with acquisition times between 4:11-9:21 min:s using ECCENTRIC pulse sequence on a 7T MRI scanner. Data were acquired in a high-resolution phantom and 27 human participants, including 22 healthy volunteers and 5 glioma patients. A deep neural network using recurring interlaced convolutional layers with joint dual-space feature representation was developed for deep learning ECCENTRIC reconstruction (Deep-ER). 21 subjects were used for training and 6 subjects for testing. Deep-ER performance was compared to iterative compressed sensing Total Generalized Variation reconstruction using image and spectral quality metrics. Deep-ER demonstrated 600-fold faster reconstruction than conventional methods, providing improved spatial-spectral quality and metabolite quantification with 12%-45% (P<0.05) higher signal-to-noise and 8%-50% (P<0.05) smaller Cramer-Rao lower bounds. Metabolic images clearly visualize glioma tumor heterogeneity and boundary. Deep-ER generalizes reliably to unseen data. Deep-ER provides efficient and robust reconstruction for sparse-sampled MRSI. The accelerated acquisition-reconstruction MRSI is compatible with high-throughput imaging workflow. It is expected that such improved performance will facilitate basic and clinical MRSI applications for neuroscience and precision medicine.

Overview

  • The study aims to develop a robust and efficient Deep Learning reconstruction method for Magnetic Resonance Spectroscopic Imaging (MRSI) to obtain high-quality metabolic maps.
  • The method uses a deep neural network with recurring interlaced convolutional layers and joint dual-space feature representation for efficient reconstruction.
  • The study tests the performance of the Deep Learning reconstruction method against conventional methods using image and spectral quality metrics.

Comparative Analysis & Findings

  • The study shows that the Deep Learning reconstruction method (Deep-ER) outperforms conventional methods in terms of reconstruction time, providing 600-fold faster reconstruction.
  • Deep-ER demonstrates improved spatial-spectral quality and metabolite quantification, with 12%-45% higher signal-to-noise and 8%-50% smaller Cramer-Rao lower bounds compared to conventional methods.
  • The study also shows that Deep-ER generalizes reliably to unseen data and provides efficient and robust reconstruction for sparse-sampled MRSI.

Implications and Future Directions

  • The improved performance of Deep-ER is expected to facilitate basic and clinical MRSI applications for neuroscience and precision medicine.
  • Future studies can explore the application of Deep-ER in different imaging modalities and investigate its potential in clinical settings.
  • The development of advanced imaging protocols and analysis techniques can further improve the accuracy and reliability of Deep-ER in clinical applications.