Volume 45, Issue 11 p. 5218-5233
Research Article

Comparative study of algorithms for synthetic CT generation from MRI: Consequences for MRI-guided radiation planning in the pelvic region

Hossein Arabi

Hossein Arabi

Division of Nuclear Medicine and Molecular Imaging, Geneva University Hospital, Geneva, CH-1211 Switzerland

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Jason A. Dowling

Jason A. Dowling

CSIRO Australian e-Health Research Centre, Herston, QLD, Australia

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Ninon Burgos

Ninon Burgos

Inria Paris, Aramis Project-Team, Institut du Cerveau et de la Moelle épinière, ICM, Inserm U 1127, CNRS, UMR 7225, Sorbonne Université, Paris, F-75013 France

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Xiao Han

Xiao Han

Elekta Inc., Maryland Heights, MO, 63043 USA

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Peter B. Greer

Peter B. Greer

Calvary Mater Newcastle Hospital, Waratah, NSW, Australia

University of Newcastle, Callaghan, NSW, Australia

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Nikolaos Koutsouvelis

Nikolaos Koutsouvelis

Division of Radiation Oncology, Geneva University Hospital, Geneva, CH-1211 Switzerland

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Habib Zaidi

Corresponding Author

Habib Zaidi

Division of Nuclear Medicine and Molecular Imaging, Geneva University Hospital, Geneva, CH-1211 Switzerland

Geneva University Neurocenter, University of Geneva, Geneva, 1205 Switzerland

Department of Nuclear Medicine and Molecular Imaging, University of Groningen, Groningen, the Netherlands

Department of Nuclear Medicine, University of Southern Denmark, Odense, DK-500 Denmark

Author to whom correspondence should be addressed. Electronic mail: [email protected];

Telephone: +41 22 372 7258; Fax: +41 22 372 7169.

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First published: 14 September 2018
Citations: 83

Abstract

Purpose

Magnetic resonance imaging (MRI)-guided radiation therapy (RT) treatment planning is limited by the fact that the electron density distribution required for dose calculation is not readily provided by MR imaging. We compare a selection of novel synthetic CT generation algorithms recently reported in the literature, including segmentation-based, atlas-based and machine learning techniques, using the same cohort of patients and quantitative evaluation metrics.

Methods

Six MRI-guided synthetic CT generation algorithms were evaluated: one segmentation technique into a single tissue class (water-only), four atlas-based techniques, namely, median value of atlas images (ALMedian)1, atlas-based local weighted voting (ALWV)2, bone enhanced atlas-based local weighted voting (ALWV-Bone)3, iterative atlas-based local weighted voting (ALWV-Iter)4, and a machine learning technique using deep convolution neural network (DCNN)5.

Results

Organ auto-contouring from MR images was evaluated for bladder, rectum, bones, and body boundary. Overall, DCNN exhibited higher segmentation accuracy resulting in Dice indices (DSC) of 0.93 ± 0.17, 0.90 ± 0.04, and 0.93 ± 0.02 for bladder, rectum, and bones, respectively. On the other hand, ALMedian showed the lowest accuracy with DSC of 0.82 ± 0.20, 0.81 ± 0.08, and 0.88 ± 0.04, respectively. DCNN reached the best performance in terms of accurate derivation of synthetic CT values within each organ, with a mean absolute error within the body contour of 32.7 ± 7.9 HU, followed by the advanced atlas-based methods (ALWV: 40.5 ± 8.2 HU, ALWV-Iter: 42.4 ± 8.1 HU, ALWV-Bone: 44.0 ± 8.9 HU). ALMedian led to the highest error (52.1 ± 11.1 HU). Considering the dosimetric evaluation results, ALWV-Iter, ALWV, DCNN and ALWV-Bone led to similar mean dose estimation within each organ at risk and target volume with less than 1% dose discrepancy. However, the two-dimensional gamma analysis demonstrated higher pass rates for ALWV-Bone, DCNN, ALMedian and ALWV-Iter at 1%/1 mm criterion with 94.99 ± 5.15%, 94.59 ± 5.65%, 93.68 ± 5.53% and 93.10 ± 5.99% success, respectively, while ALWV and water-only resulted in 86.91 ± 13.50% and 80.77 ± 12.10%, respectively.

Conclusions

Overall, machine learning and advanced atlas-based methods exhibited promising performance by achieving reliable organ segmentation and synthetic CT generation. DCNN appears to have slightly better performance by achieving accurate automated organ segmentation and relatively small dosimetric errors (followed closely by advanced atlas-based methods, which in some cases achieved similar performance). However, the DCNN approach showed higher vulnerability to anatomical variation, where a greater number of outliers was observed with this method. Considering the dosimetric results obtained from the evaluated methods, the challenge of electron density estimation from MR images can be resolved with a clinically tolerable error.