Frontiers in Cardiovascular Medicine (Aug 2024)

Cardiac ultrasound simulation for autonomous ultrasound navigation

  • Abdoul Aziz Amadou,
  • Abdoul Aziz Amadou,
  • Laura Peralta,
  • Paul Dryburgh,
  • Paul Klein,
  • Kaloian Petkov,
  • R. James Housden,
  • Vivek Singh,
  • Rui Liao,
  • Young-Ho Kim,
  • Florin C. Ghesu,
  • Tommaso Mansi,
  • Ronak Rajani,
  • Alistair Young,
  • Kawal Rhode

DOI
https://doi.org/10.3389/fcvm.2024.1384421
Journal volume & issue
Vol. 11

Abstract

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IntroductionUltrasound is well-established as an imaging modality for diagnostic and interventional purposes. However, the image quality varies with operator skills as acquiring and interpreting ultrasound images requires extensive training due to the imaging artefacts, the range of acquisition parameters and the variability of patient anatomies. Automating the image acquisition task could improve acquisition reproducibility and quality but training such an algorithm requires large amounts of navigation data, not saved in routine examinations.MethodsWe propose a method to generate large amounts of ultrasound images from other modalities and from arbitrary positions, such that this pipeline can later be used by learning algorithms for navigation. We present a novel simulation pipeline which uses segmentations from other modalities, an optimized volumetric data representation and GPU-accelerated Monte Carlo path tracing to generate view-dependent and patient-specific ultrasound images.ResultsWe extensively validate the correctness of our pipeline with a phantom experiment, where structures' sizes, contrast and speckle noise properties are assessed. Furthermore, we demonstrate its usability to train neural networks for navigation in an echocardiography view classification experiment by generating synthetic images from more than 1,000 patients. Networks pre-trained with our simulations achieve significantly superior performance in settings where large real datasets are not available, especially for under-represented classes.DiscussionThe proposed approach allows for fast and accurate patient-specific ultrasound image generation, and its usability for training networks for navigation-related tasks is demonstrated.

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