Deep learning segmentation of orbital fat to calibrate conventional MRI for longitudinal studies.

Neuroimage

McConnell Brain Imaging Centre, Montreal Neurological Institute and Hospital, 3801 Rue University, Montreal, QC, H3A 2B4, Canada. Electronic address:

Published: March 2020

AI Article Synopsis

  • Conventional MRI has consistent image contrast, but absolute intensity can vary across scans, making quantitative analysis challenging, especially in diseases like multiple sclerosis where both white and gray matter are affected.
  • The study introduces a new method called "image calibration," which aims to eliminate technical artifacts while maintaining important biological differences by using fat segmentation from the eye orbit as a reference tissue.
  • The deep learning approach used for segmentation shows high accuracy compared to human experts and results in better consistency with semi-quantitative imaging than traditional normalization methods, facilitating easier tracking of disease changes over time.

Article Abstract

In conventional non-quantitative magnetic resonance imaging, image contrast is consistent within images, but absolute intensity can vary arbitrarily between scans. For quantitative analysis of intensity data, images are typically normalized to a consistent reference. The most convenient reference is a tissue that is always present in the image, and is unlikely to be affected by pathological processes. In multiple sclerosis neuroimaging, both the white and gray matter are affected, so normalization techniques that depend on brain tissue may introduce bias or remove biological changes of interest. We introduce a complementary procedure, image "calibration," the goal of which is to remove technical intensity artifacts while preserving biological differences. We demonstrate a deep learning approach to segmenting fat from within the orbit of the eyes on T-weighted images at 1.5 and 3 ​T to use as a reference tissue, and use it to calibrate 1018 scans from 256 participants in a study of pediatric-onset multiple sclerosis. The machine segmentations agreed with the adjudicating expert (DF) segmentations better than did those of other expert humans, and calibration resulted in better agreement with semi-quantitative magnetization transfer ratio imaging than did normalization with the WhiteStripe algorithm. We suggest that our method addresses two key priorities in the field: (1) it provides a robust option for serial calibration of conventional scans, allowing comparison of disease change in persons imaged at multiple time points in their disease; and (ii) the technique is fast, as the deep learning segmentation takes only 0.5 ​s/scan, which is feasible for both large and small datasets.

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Source
http://dx.doi.org/10.1016/j.neuroimage.2019.116442DOI Listing

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