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Framework to Segment and Evaluate Multiple Sclerosis Lesion in MRI Slices Using VGG-UNet

Sujatha Krishnamoorthy, Yaxi Zhang, Seifedine Kadry, Weifeng Yu

2022Computational Intelligence and Neuroscience19 citationsDOIOpen Access PDF

Abstract

Multiple sclerosis (MS) is an autoimmune disease that causes mild to severe issues in the central nervous system (CNS). Early detection and treatment are necessary to reduce the harshness of the disease in individuals. The proposed work aims to implement a convolutional neural network (CNN) segmentation scheme to extract the MS lesion in a 2D brain MRI slice. To achieve a better MS detection, this work implemented the VGG-UNet scheme in which the pretrained VGG19 is considered as the encoder section. This scheme is tested on 30 patient images (600 images with dimension 512 × 512 × 3 pixels), and the experimental outcome confirms that this scheme provides a better result compared to traditional UNet, SegNet, VGG-UNet, and VGG-SegNet. The experimental investigation implemented on axial, coronal and sagittal plane 2D slices of Flair modality confirms that this work provides a better value of Jaccard (>85%), Dice (>92%), and accuracy (>98%).

Topics & Concepts

Fluid-attenuated inversion recoveryComputer scienceMultiple sclerosisConvolutional neural networkJaccard indexSegmentationPattern recognition (psychology)Sagittal planeArtificial intelligenceLesionCoronal planeMagnetic resonance imagingMedicineRadiologyPathologyPsychiatryImage Processing Techniques and ApplicationsBrain Tumor Detection and ClassificationDigital Imaging for Blood Diseases
Framework to Segment and Evaluate Multiple Sclerosis Lesion in MRI Slices Using VGG-UNet | Litcius