Radius-optimized efficient template matching for lesion detection from brain images

Abstract Computer-aided detection of brain lesions from volumetric magnetic resonance imaging (MRI) is in demand for fast and automatic diagnosis of neural diseases. The template-matching technique can provide satisfactory outcome for automatic localization of brain lesions; however, finding the opt...

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Main Authors: Subhranil Koley, Pranab K. Dutta, Iman Aganj
Format: Article
Language:English
Published: Nature Publishing Group 2021-06-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-90147-0
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spelling doaj-df781eff67844181ae3d39949a85a45e2021-06-06T11:40:19ZengNature Publishing GroupScientific Reports2045-23222021-06-0111112110.1038/s41598-021-90147-0Radius-optimized efficient template matching for lesion detection from brain imagesSubhranil Koley0Pranab K. Dutta1Iman Aganj2School of Medical Science and Technology, Indian Institute of Technology KharagpurElectrical Engineering Department, Indian Institute of Technology KharagpurAthinoula A. Martinos Center for Biomedical Imaging, Radiology Department, Massachusetts General Hospital, Harvard Medical SchoolAbstract Computer-aided detection of brain lesions from volumetric magnetic resonance imaging (MRI) is in demand for fast and automatic diagnosis of neural diseases. The template-matching technique can provide satisfactory outcome for automatic localization of brain lesions; however, finding the optimal template size that maximizes similarity of the template and the lesion remains challenging. This increases the complexity of the algorithm and the requirement for computational resources, while processing large MRI volumes with three-dimensional (3D) templates. Hence, reducing the computational complexity of template matching is needed. In this paper, we first propose a mathematical framework for computing the normalized cross-correlation coefficient (NCCC) as the similarity measure between the MRI volume and approximated 3D Gaussian template with linear time complexity, $${\mathbf{\mathcal{O}}}\left( {{\varvec{a}}_{{{\varvec{max}}}} {\varvec{N}}} \right)$$ O a max N , as opposed to the conventional fast Fourier transform (FFT) based approach with the complexity $${\mathbf{\mathcal{O}}}\left( {{\varvec{a}}_{{{\varvec{max}}}} {\varvec{N}}\log {\varvec{N}}} \right)$$ O a max N log N , where $${\varvec{N}}$$ N is the number of voxels in the image and $${\varvec{a}}_{{{\varvec{max}}}}$$ a max is the number of tried template radii. We then propose a mathematical formulation to analytically estimate the optimal template radius for each voxel in the image and compute the NCCC with the location-dependent optimal radius, reducing the complexity to $${\mathbf{\mathcal{O}}}\left( {\varvec{N}} \right)$$ O N . We test our methods on one synthetic and two real multiple-sclerosis databases, and compare their performances in lesion detection with FFT and a state-of-the-art lesion prediction algorithm. We demonstrate through our experiments the efficiency of the proposed methods for brain lesion detection and their comparable performance with existing techniques.https://doi.org/10.1038/s41598-021-90147-0
collection DOAJ
language English
format Article
sources DOAJ
author Subhranil Koley
Pranab K. Dutta
Iman Aganj
spellingShingle Subhranil Koley
Pranab K. Dutta
Iman Aganj
Radius-optimized efficient template matching for lesion detection from brain images
Scientific Reports
author_facet Subhranil Koley
Pranab K. Dutta
Iman Aganj
author_sort Subhranil Koley
title Radius-optimized efficient template matching for lesion detection from brain images
title_short Radius-optimized efficient template matching for lesion detection from brain images
title_full Radius-optimized efficient template matching for lesion detection from brain images
title_fullStr Radius-optimized efficient template matching for lesion detection from brain images
title_full_unstemmed Radius-optimized efficient template matching for lesion detection from brain images
title_sort radius-optimized efficient template matching for lesion detection from brain images
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-06-01
description Abstract Computer-aided detection of brain lesions from volumetric magnetic resonance imaging (MRI) is in demand for fast and automatic diagnosis of neural diseases. The template-matching technique can provide satisfactory outcome for automatic localization of brain lesions; however, finding the optimal template size that maximizes similarity of the template and the lesion remains challenging. This increases the complexity of the algorithm and the requirement for computational resources, while processing large MRI volumes with three-dimensional (3D) templates. Hence, reducing the computational complexity of template matching is needed. In this paper, we first propose a mathematical framework for computing the normalized cross-correlation coefficient (NCCC) as the similarity measure between the MRI volume and approximated 3D Gaussian template with linear time complexity, $${\mathbf{\mathcal{O}}}\left( {{\varvec{a}}_{{{\varvec{max}}}} {\varvec{N}}} \right)$$ O a max N , as opposed to the conventional fast Fourier transform (FFT) based approach with the complexity $${\mathbf{\mathcal{O}}}\left( {{\varvec{a}}_{{{\varvec{max}}}} {\varvec{N}}\log {\varvec{N}}} \right)$$ O a max N log N , where $${\varvec{N}}$$ N is the number of voxels in the image and $${\varvec{a}}_{{{\varvec{max}}}}$$ a max is the number of tried template radii. We then propose a mathematical formulation to analytically estimate the optimal template radius for each voxel in the image and compute the NCCC with the location-dependent optimal radius, reducing the complexity to $${\mathbf{\mathcal{O}}}\left( {\varvec{N}} \right)$$ O N . We test our methods on one synthetic and two real multiple-sclerosis databases, and compare their performances in lesion detection with FFT and a state-of-the-art lesion prediction algorithm. We demonstrate through our experiments the efficiency of the proposed methods for brain lesion detection and their comparable performance with existing techniques.
url https://doi.org/10.1038/s41598-021-90147-0
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