MhURI: A supervised segmentation approach to leverage salient brain tissues in magnetic resonance images Journal Article


Authors: Ghosal, P.; Chowdhury, T.; Kumar, A.; Bhadra, A. K.; Chakraborty, J.; Nandi, D.
Article Title: MhURI: A supervised segmentation approach to leverage salient brain tissues in magnetic resonance images
Abstract: Background and objectives: Accurate segmentation of critical tissues from a brain MRI is pivotal for characterization and quantitative pattern analysis of the human brain and thereby, identifies the earliest signs of various neurodegenerative diseases. To date, in most cases, it is done manually by the radiologists. The overwhelming workload in some of the thickly populated nations may cause exhaustion leading to interruption for the doctors, which may pose a continuing threat to patient safety. A novel fusion method called U-Net inception based on 3D convolutions and transition layers is proposed to address this issue. Methods: A 3D deep learning method called Multi headed U-Net with Residual Inception (MhURI) accompanied by Morphological Gradient channel for brain tissue segmentation is proposed, which incorporates Residual Inception 2-Residual (RI2R) module as the basic building block. The model exploits the benefits of morphological pre-processing for structural enhancement of MR images. A multi-path data encoding pipeline is introduced on top of the U-Net backbone, which encapsulates initial global features and captures the information from each MRI modality. Results: The proposed model has accomplished encouraging outcomes, which appreciates the adequacy in terms of some of the established quality metrices when compared with some of the state-of-the-art methods while evaluating with respect to two popular publicly available data sets. Conclusion: The model is entirely automatic and able to segment gray matter (GM), white matter (WM), and cerebrospinal fluid (CSF) from brain MRI effectively with sufficient accuracy. Hence, it may be considered to be a potential computer-aided diagnostic (CAD) tool for radiologists and other medical practitioners in their clinical diagnosis workflow. © 2020 Elsevier B.V.
Keywords: magnetic resonance imaging; histology; image enhancement; brain; cerebrospinal fluid; magnetic resonance; segmentation; mri; tissue; neurodegenerative diseases; image segmentation; computer aided diagnosis; learning systems; deep learning; convolutional neural network; state-of-the-art methods; inception module; morphological gradient; brain tissue segmentations; cerebro spinal fluids; computer aided diagnostics; medical practitioner; structural enhancements; supervised segmentation
Journal Title: Computer Methods and Programs in Biomedicine
Volume: 200
ISSN: 0169-2607
Publisher: Elsevier Ireland Ltd.  
Date Published: 2021-03-01
Start Page: 105841
Language: English
DOI: 10.1016/j.cmpb.2020.105841
PUBMED: 33221057
PROVIDER: scopus
PMCID: PMC9096474
DOI/URL:
Notes: Article -- Export Date: 1 April 2021 -- Source: Scopus
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