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Domain Mapping and Deep Learning from Multiple MRI Clinical Datasets for Prediction of Molecular Subtypes in Low Grade Gliomas.

Publication ,  Journal Article
Ali, MB; Gu, IY-H; Berger, MS; Pallud, J; Southwell, D; Widhalm, G; Roux, A; Vecchio, TG; Jakola, AS
Published in: Brain Sci
July 18, 2020

Brain tumors, such as low grade gliomas (LGG), are molecularly classified which require the surgical collection of tissue samples. The pre-surgical or non-operative identification of LGG molecular type could improve patient counseling and treatment decisions. However, radiographic approaches to LGG molecular classification are currently lacking, as clinicians are unable to reliably predict LGG molecular type using magnetic resonance imaging (MRI) studies. Machine learning approaches may improve the prediction of LGG molecular classification through MRI, however, the development of these techniques requires large annotated data sets. Merging clinical data from different hospitals to increase case numbers is needed, but the use of different scanners and settings can affect the results and simply combining them into a large dataset often have a significant negative impact on performance. This calls for efficient domain adaption methods. Despite some previous studies on domain adaptations, mapping MR images from different datasets to a common domain without affecting subtitle molecular-biomarker information has not been reported yet. In this paper, we propose an effective domain adaptation method based on Cycle Generative Adversarial Network (CycleGAN). The dataset is further enlarged by augmenting more MRIs using another GAN approach. Further, to tackle the issue of brain tumor segmentation that requires time and anatomical expertise to put exact boundary around the tumor, we have used a tight bounding box as a strategy. Finally, an efficient deep feature learning method, multi-stream convolutional autoencoder (CAE) and feature fusion, is proposed for the prediction of molecular subtypes (1p/19q-codeletion and IDH mutation). The experiments were conducted on a total of 161 patients consisting of FLAIR and T1 weighted with contrast enhanced (T1ce) MRIs from two different institutions in the USA and France. The proposed scheme is shown to achieve the test accuracy of 74 . 81 % on 1p/19q codeletion and 81 . 19 % on IDH mutation, with marked improvement over the results obtained without domain mapping. This approach is also shown to have comparable performance to several state-of-the-art methods.

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Published In

Brain Sci

DOI

ISSN

2076-3425

Publication Date

July 18, 2020

Volume

10

Issue

7

Location

Switzerland

Related Subject Headings

  • 5202 Biological psychology
  • 5201 Applied and developmental psychology
  • 3209 Neurosciences
  • 1702 Cognitive Sciences
  • 1701 Psychology
  • 1109 Neurosciences
 

Citation

APA
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ICMJE
MLA
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Ali, M. B., Gu, I.-H., Berger, M. S., Pallud, J., Southwell, D., Widhalm, G., … Jakola, A. S. (2020). Domain Mapping and Deep Learning from Multiple MRI Clinical Datasets for Prediction of Molecular Subtypes in Low Grade Gliomas. Brain Sci, 10(7). https://doi.org/10.3390/brainsci10070463
Ali, Muhaddisa Barat, Irene Yu-Hua Gu, Mitchel S. Berger, Johan Pallud, Derek Southwell, Georg Widhalm, Alexandre Roux, Tomás Gomez Vecchio, and Asgeir Store Jakola. “Domain Mapping and Deep Learning from Multiple MRI Clinical Datasets for Prediction of Molecular Subtypes in Low Grade Gliomas.Brain Sci 10, no. 7 (July 18, 2020). https://doi.org/10.3390/brainsci10070463.
Ali MB, Gu IY-H, Berger MS, Pallud J, Southwell D, Widhalm G, et al. Domain Mapping and Deep Learning from Multiple MRI Clinical Datasets for Prediction of Molecular Subtypes in Low Grade Gliomas. Brain Sci. 2020 Jul 18;10(7).
Ali, Muhaddisa Barat, et al. “Domain Mapping and Deep Learning from Multiple MRI Clinical Datasets for Prediction of Molecular Subtypes in Low Grade Gliomas.Brain Sci, vol. 10, no. 7, July 2020. Pubmed, doi:10.3390/brainsci10070463.
Ali MB, Gu IY-H, Berger MS, Pallud J, Southwell D, Widhalm G, Roux A, Vecchio TG, Jakola AS. Domain Mapping and Deep Learning from Multiple MRI Clinical Datasets for Prediction of Molecular Subtypes in Low Grade Gliomas. Brain Sci. 2020 Jul 18;10(7).

Published In

Brain Sci

DOI

ISSN

2076-3425

Publication Date

July 18, 2020

Volume

10

Issue

7

Location

Switzerland

Related Subject Headings

  • 5202 Biological psychology
  • 5201 Applied and developmental psychology
  • 3209 Neurosciences
  • 1702 Cognitive Sciences
  • 1701 Psychology
  • 1109 Neurosciences