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MRI-based treatment planning for liver stereotactic body radiotherapy: validation of a deep learning-based synthetic CT generation method.

Publication ,  Journal Article
Liu, Y; Lei, Y; Wang, T; Kayode, O; Tian, S; Liu, T; Patel, P; Curran, WJ; Ren, L; Yang, X
Published in: Br J Radiol
August 2019

OBJECTIVE: The purpose of this work is to develop and validate a learning-based method to derive electron density from routine anatomical MRI for potential MRI-based SBRT treatment planning. METHODS: We proposed to integrate dense block into cycle generative adversarial network (GAN) to effectively capture the relationship between the CT and MRI for CT synthesis. A cohort of 21 patients with co-registered CT and MR pairs were used to evaluate our proposed method by the leave-one-out cross-validation. Mean absolute error, peak signal-to-noise ratio and normalized cross-correlation were used to quantify the imaging differences between the synthetic CT (sCT) and CT. The accuracy of Hounsfield unit (HU) values in sCT for dose calculation was evaluated by comparing the dose distribution in sCT-based and CT-based treatment planning. Clinically relevant dose-volume histogram metrics were then extracted from the sCT-based and CT-based plans for quantitative comparison. RESULTS: The mean absolute error, peak signal-to-noise ratio and normalized cross-correlation of the sCT were 72.87 ± 18.16 HU, 22.65 ± 3.63 dB and 0.92 ± 0.04, respectively. No significant differences were observed in the majority of the planning target volume and organ at risk dose-volume histogram metrics ( p  >  0.05). The average pass rate of γ analysis was over 99% with 1%/1 mm acceptance criteria on the coronal plane that intersects with isocenter. CONCLUSION: The image similarity and dosimetric agreement between sCT and original CT warrant further development of an MRI-only workflow for liver stereotactic body radiation therapy. ADVANCES IN KNOWLEDGE: This work is the first deep-learning-based approach to generating abdominal sCT through dense-cycle-GAN. This method can successfully generate the small bony structures such as the rib bones and is able to predict the HU values for dose calculation with comparable accuracy to reference CT images.

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Published In

Br J Radiol

DOI

EISSN

1748-880X

Publication Date

August 2019

Volume

92

Issue

1100

Start / End Page

20190067

Location

England

Related Subject Headings

  • Tomography, X-Ray Computed
  • Radiotherapy, Intensity-Modulated
  • Radiotherapy Planning, Computer-Assisted
  • Radiosurgery
  • Nuclear Medicine & Medical Imaging
  • Magnetic Resonance Imaging
  • Liver Neoplasms
  • Liver
  • Humans
  • Deep Learning
 

Citation

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Liu, Y., Lei, Y., Wang, T., Kayode, O., Tian, S., Liu, T., … Yang, X. (2019). MRI-based treatment planning for liver stereotactic body radiotherapy: validation of a deep learning-based synthetic CT generation method. Br J Radiol, 92(1100), 20190067. https://doi.org/10.1259/bjr.20190067
Liu, Yingzi, Yang Lei, Tonghe Wang, Oluwatosin Kayode, Sibo Tian, Tian Liu, Pretesh Patel, Walter J. Curran, Lei Ren, and Xiaofeng Yang. “MRI-based treatment planning for liver stereotactic body radiotherapy: validation of a deep learning-based synthetic CT generation method.Br J Radiol 92, no. 1100 (August 2019): 20190067. https://doi.org/10.1259/bjr.20190067.
Liu Y, Lei Y, Wang T, Kayode O, Tian S, Liu T, et al. MRI-based treatment planning for liver stereotactic body radiotherapy: validation of a deep learning-based synthetic CT generation method. Br J Radiol. 2019 Aug;92(1100):20190067.
Liu, Yingzi, et al. “MRI-based treatment planning for liver stereotactic body radiotherapy: validation of a deep learning-based synthetic CT generation method.Br J Radiol, vol. 92, no. 1100, Aug. 2019, p. 20190067. Pubmed, doi:10.1259/bjr.20190067.
Liu Y, Lei Y, Wang T, Kayode O, Tian S, Liu T, Patel P, Curran WJ, Ren L, Yang X. MRI-based treatment planning for liver stereotactic body radiotherapy: validation of a deep learning-based synthetic CT generation method. Br J Radiol. 2019 Aug;92(1100):20190067.

Published In

Br J Radiol

DOI

EISSN

1748-880X

Publication Date

August 2019

Volume

92

Issue

1100

Start / End Page

20190067

Location

England

Related Subject Headings

  • Tomography, X-Ray Computed
  • Radiotherapy, Intensity-Modulated
  • Radiotherapy Planning, Computer-Assisted
  • Radiosurgery
  • Nuclear Medicine & Medical Imaging
  • Magnetic Resonance Imaging
  • Liver Neoplasms
  • Liver
  • Humans
  • Deep Learning