Diffusion-weighted MRI with deep learning for visualizing treatment results of MR-guided HIFU ablation of uterine fibroids

Derk J. Slotman, Lambertus W. Bartels, Aylene Zijlstra, Inez M. Verpalen, Jochen A. C. van Osch, Ingrid M. Nijholt, Edwin Heijman, Miranda van ‘t Veer-ten Kate, Erwin de Boer, Rolf D. van den Hoed, Martijn Froeling, Martijn F. Boomsma

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3 Citations (Scopus)

Abstract

Objectives: No method is available to determine the non-perfused volume (NPV) repeatedly during magnetic resonance–guided high-intensity focused ultrasound (MR-HIFU) ablations of uterine fibroids, as repeated acquisition of contrast-enhanced T1-weighted (CE-T1w) scans is inhibited by safety concerns. The objective of this study was to develop and test a deep learning–based method for translation of diffusion-weighted imaging (DWI) into synthetic CE-T1w scans, for monitoring MR-HIFU treatment progression. Methods: The algorithm was retrospectively trained and validated on data from 33 and 20 patients respectively who underwent an MR-HIFU treatment of uterine fibroids between June 2017 and January 2019. Postablation synthetic CE-T1w images were generated by a deep learning network trained on paired DWI and reference CE-T1w scans acquired during the treatment procedure. Quantitative analysis included calculation of the Dice coefficient of NPVs delineated on synthetic and reference CE-T1w scans. Four MR-HIFU radiologists assessed the outcome of MR-HIFU treatments and NPV ratio based on the synthetic and reference CE-T1w scans. Results: Dice coefficient of NPVs was 71% (± 22%). The mean difference in NPV ratio was 1.4% (± 22%) and not statistically significant (p = 0.79). Absolute agreement of the radiologists on technical treatment success on synthetic and reference CE-T1w scans was 83%. NPV ratio estimations on synthetic and reference CE-T1w scans were not significantly different (p = 0.27). Conclusions: Deep learning–based synthetic CE-T1w scans derived from intraprocedural DWI allow gadolinium-free visualization of the predicted NPV, and can potentially be used for repeated gadolinium-free monitoring of treatment progression during MR-HIFU therapy for uterine fibroids. Key Points: • Synthetic CE-T1w scans can be derived from diffusion-weighted imaging using deep learning. • Synthetic CE-T1w scans may be used for visualization of the NPV without using a contrast agent directly after MR-HIFU ablations of uterine fibroids.
Original languageEnglish
JournalEuropean Radiology
Early online date2022
DOIs
Publication statusE-pub ahead of print - 2022

Keywords

  • Deep learning
  • Diffusion magnetic resonance imaging
  • High-intensity focused ultrasound ablation
  • Leiomyoma

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