| Literature DB >> 34474216 |
Naresh Nandakumar1, Komal Manzoor2, Shruti Agarwal2, Jay J Pillai2, Sachin K Gujar2, Haris I Sair2, Archana Venkataraman3.
Abstract
Localizing the eloquent cortex is a crucial part of presurgical planning. While invasive mapping is the gold standard, there is increasing interest in using noninvasive fMRI to shorten and improve the process. However, many surgical patients cannot adequately perform task-based fMRI protocols. Resting-state fMRI has emerged as an alternative modality, but automated eloquent cortex localization remains an open challenge. In this paper, we develop a novel deep learning architecture to simultaneously identify language and primary motor cortex from rs-fMRI connectivity. Our approach uses the representational power of convolutional neural networks alongside the generalization power of multi-task learning to find a shared representation between the eloquent subnetworks. We validate our method on data from the publicly available Human Connectome Project and on a brain tumor dataset acquired at the Johns Hopkins Hospital. We compare our method against feature-based machine learning approaches and a fully-connected deep learning model that does not account for the shared network organization of the data. Our model achieves significantly better performance than competing baselines. We also assess the generalizability and robustness of our method. Our results clearly demonstrate the advantages of our graph convolution architecture combined with multi-task learning and highlight the promise of using rs-fMRI as a presurgical mapping tool.Entities:
Keywords: Convolutional neural networks; Eloquent cortex localization; Multi-task learning; Resting-state fMRI
Mesh:
Year: 2021 PMID: 34474216 PMCID: PMC9245684 DOI: 10.1016/j.media.2021.102203
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 13.828