Beyond Nyquist: A Comparative Analysis of 3D Deep Learning Models Enhancing MRI Resolution

Author:

Chatterjee Soumick123ORCID,Sciarra Alessandro45,Dünnwald Max25,Ashoka Anitha Bhat Talagini26ORCID,Vasudeva Mayura Gurjar Cheepinahalli2,Saravanan Shudarsan2,Sambandham Venkatesh Thirugnana2ORCID,Tummala Pavan2,Oeltze-Jafra Steffen5789,Speck Oliver478ORCID,Nürnberger Andreas128ORCID

Affiliation:

1. Data and Knowledge Engineering Group, Otto von Guericke University Magdeburg, 39106 Magdeburg, Germany

2. Faculty of Computer Science, Otto von Guericke University Magdeburg, 39106 Magdeburg, Germany

3. Genomics Research Centre, Human Technopole, 20157 Milan, Italy

4. Department of Biomedical Magnetic Resonance, Otto von Guericke University Magdeburg, 39106 Magdeburg, Germany

5. MedDigit, Department of Neurology, Medical Faculty, University Hospital Magdeburg, 39120 Magdeburg, Germany

6. Fraunhofer Institute for Digital Media Technology, 98693 Ilmenau, Germany

7. German Centre for Neurodegenerative Diseases, 37075 Magdeburg, Germany

8. Centre for Behavioural Brain Sciences, 39106 Magdeburg, Germany

9. Peter L. Reichertz Institute for Medical Informatics, Hannover Medical School, 30625 Hannover, Germany

Abstract

High-spatial resolution MRI produces abundant structural information, enabling highly accurate clinical diagnosis and image-guided therapeutics. However, the acquisition of high-spatial resolution MRI data typically can come at the expense of less spatial coverage, lower signal-to-noise ratio (SNR), and longer scan time due to physical, physiological and hardware limitations. In order to overcome these limitations, super-resolution MRI deep-learning-based techniques can be utilised. In this work, different state-of-the-art 3D convolution neural network models for super resolution (RRDB, SPSR, UNet, UNet-MSS and ShuffleUNet) were compared for the super-resolution task with the goal of finding the best model in terms of performance and robustness. The public IXI dataset (only structural images) was used. Data were artificially downsampled to obtain lower-resolution spatial MRIs (downsampling factor varying from 8 to 64). When assessing performance using the SSIM metric in the test set, all models performed well. In particular, regardless of the downsampling factor, the UNet consistently obtained the top results. On the other hand, the SPSR model consistently performed worse. In conclusion, UNet and UNet-MSS achieved overall top performances while RRDB performed relatively poorly compared to the other models.

Funder

International Graduate School MEMoRIAL at Otto von Guericke University (OVGU) Magdeburg, Germany

European Structural and Investment Funds

Initial Training Network programme, HiMR

FP7 Marie Curie Actions of the European Commission

NIH

State of Saxony-Anhalt

Publisher

MDPI AG

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