Magnetic resonance imaging-based bone imaging of the lower limb: Strategies for generating high-resolution synthetic computed tomography

Publication date

2024-04

Authors

Florkow, Mateusz C
Nguyen, H. Chien
Sakkers, RalphISNI 0000000393122439
Weinans, HarrieORCID 0000-0002-2275-6170ISNI 0000000393288658
Jansen, Mylène PORCID 0000-0003-1929-6350
Custers, Roel J H
van Stralen, Marijn
Seevinck, Peter R.ISNI 0000000390489892

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Document Type

Article

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cc_by_nc_nd

Abstract

This study aims at assessing approaches for generating high-resolution magnetic resonance imaging- (MRI-) based synthetic computed tomography (sCT) images suitable for orthopedic care using a deep learning model trained on low-resolution computed tomography (CT) data. To that end, paired MRI and CT data of three anatomical regions were used: high-resolution knee and ankle data, and low-resolution hip data. Four experiments were conducted to investigate the impact of low-resolution training CT data on sCT generation and to find ways to train models on low-resolution data while providing high-resolution sCT images. Experiments included resampling of the training data or augmentation of the low-resolution data with high-resolution data. Training sCT generation models using low-resolution CT data resulted in blurry sCT images. By resampling the MRI/CT pairs before the training, models generated sharper images, presumably through an increase in the MRI/CT mutual information. Alternatively, augmenting the low-resolution with high-resolution data improved sCT in terms of mean absolute error proportionally to the amount of high-resolution data. Overall, the morphological accuracy was satisfactory as assessed by an average intermodal distance between joint centers ranging from 0.7 to 1.2 mm and by an average intermodal root-mean-squared distances between bone surfaces under 0.7 mm. Average dice scores ranged from 79.8% to 87.3% for bony structures. To conclude, this paper proposed approaches to generate high-resolution sCT suitable for orthopedic care using low-resolution data. This can generalize the use of sCT for imaging the musculoskeletal system, paving the way for an MR-only imaging with simplified logistics and no ionizing radiation.

Keywords

bone imaging, deep learning, lower limb, magnetic resonance imaging, synthetic computed tomography, Orthopedics and Sports Medicine, Journal Article

Citation

Florkow, M C, Nguyen, C H, Sakkers, R J B, Weinans, H, Jansen, M P, Custers, R J H, van Stralen, M & Seevinck, P R 2024, 'Magnetic resonance imaging-based bone imaging of the lower limb : Strategies for generating high-resolution synthetic computed tomography', Journal of Orthopaedic Research, vol. 42, no. 4, pp. 843-854. https://doi.org/10.1002/jor.25707