AI Article Synopsis

  • The study addresses the challenge of low anisotropic resolution in neonatal brain MRI analysis by proposing a method that combines high-resolution reconstruction and image segmentation simultaneously using generative adversarial networks.
  • The paper details the architecture and implementation of the network, with additional resources available on GitHub, and demonstrates its effectiveness in analyzing cortical structures from neonatal MR images.
  • The results show strong performance metrics and usability for medical applications, with the software being freely available for anyone to use on their own MR image datasets.

Article Abstract

Background And Objective: One of the main issues in the analysis of clinical neonatal brain MRI is the low anisotropic resolution of the data. In most MRI analysis pipelines, data are first re-sampled using interpolation or single image super-resolution techniques and then segmented using (semi-)automated approaches. In other words, image reconstruction and segmentation are then performed separately. In this article, we propose a methodology and a software solution for carrying out simultaneously high-resolution reconstruction and segmentation of brain MRI data.

Methods: Our strategy mainly relies on generative adversarial networks. The network architecture is described in detail. We provide information about its implementation, focusing on the most crucial technical points (whereas complementary details are given in a dedicated GitHub repository). We illustrate the behavior of the proposed method for cortex analysis from neonatal MR images.

Results: The results of the method, evaluated quantitatively (Dice, peak signal-to-noise ratio, structural similarity, number of connected components) and qualitatively on a research dataset (dHCP) and a clinical one (Epirmex), emphasize the relevance of the approach, and its ability to take advantage of data-augmentation strategies.

Conclusions: Results emphasize the potential of our proposed method/software with respect to practical medical applications. The method is provided as a freely available software tool, which allows one to carry out his/her own experiments, and involve the method for the super-resolution reconstruction and segmentation of arbitrary cerebral structures from any MR image dataset.

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Source
http://dx.doi.org/10.1016/j.compbiomed.2020.103755DOI Listing

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