Morphometry based on effective and accurate correspondences of localized patterns (MEACOLP).

Local features in volumetric images have been used to identify correspondences of localized anatomical structures for brain morphometry. However, the correspondences are often sparse thus ineffective in reflecting the underlying structures, making it unreliable to evaluate specific morphological dif...

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Main Authors: Hu Wang, Yanshuang Ren, Lijun Bai, Wensheng Zhang, Jie Tian
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2012-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3335130?pdf=render
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spelling doaj-2ebb83c8f9e04e46bc8e6398c3d062f92020-11-25T01:48:10ZengPublic Library of Science (PLoS)PLoS ONE1932-62032012-01-0174e3574510.1371/journal.pone.0035745Morphometry based on effective and accurate correspondences of localized patterns (MEACOLP).Hu WangYanshuang RenLijun BaiWensheng ZhangJie TianLocal features in volumetric images have been used to identify correspondences of localized anatomical structures for brain morphometry. However, the correspondences are often sparse thus ineffective in reflecting the underlying structures, making it unreliable to evaluate specific morphological differences. This paper presents a morphometry method (MEACOLP) based on correspondences with improved effectiveness and accuracy. A novel two-level scale-invariant feature transform is used to enhance the detection repeatability of local features and to recall the correspondences that might be missed in previous studies. Template patterns whose correspondences could be commonly identified in each group are constructed to serve as the basis for morphometric analysis. A matching algorithm is developed to reduce the identification errors by comparing neighboring local features and rejecting unreliable matches. The two-sample t-test is finally adopted to analyze specific properties of the template patterns. Experiments are performed on the public OASIS database to clinically analyze brain images of Alzheimer's disease (AD) and normal controls (NC). MEACOLP automatically identifies known morphological differences between AD and NC brains, and characterizes the differences well as the scaling and translation of underlying structures. Most of the significant differences are identified in only a single hemisphere, indicating that AD-related structures are characterized by strong anatomical asymmetry. In addition, classification trials to differentiate AD subjects from NC confirm that the morphological differences are reliably related to the groups of interest.http://europepmc.org/articles/PMC3335130?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Hu Wang
Yanshuang Ren
Lijun Bai
Wensheng Zhang
Jie Tian
spellingShingle Hu Wang
Yanshuang Ren
Lijun Bai
Wensheng Zhang
Jie Tian
Morphometry based on effective and accurate correspondences of localized patterns (MEACOLP).
PLoS ONE
author_facet Hu Wang
Yanshuang Ren
Lijun Bai
Wensheng Zhang
Jie Tian
author_sort Hu Wang
title Morphometry based on effective and accurate correspondences of localized patterns (MEACOLP).
title_short Morphometry based on effective and accurate correspondences of localized patterns (MEACOLP).
title_full Morphometry based on effective and accurate correspondences of localized patterns (MEACOLP).
title_fullStr Morphometry based on effective and accurate correspondences of localized patterns (MEACOLP).
title_full_unstemmed Morphometry based on effective and accurate correspondences of localized patterns (MEACOLP).
title_sort morphometry based on effective and accurate correspondences of localized patterns (meacolp).
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2012-01-01
description Local features in volumetric images have been used to identify correspondences of localized anatomical structures for brain morphometry. However, the correspondences are often sparse thus ineffective in reflecting the underlying structures, making it unreliable to evaluate specific morphological differences. This paper presents a morphometry method (MEACOLP) based on correspondences with improved effectiveness and accuracy. A novel two-level scale-invariant feature transform is used to enhance the detection repeatability of local features and to recall the correspondences that might be missed in previous studies. Template patterns whose correspondences could be commonly identified in each group are constructed to serve as the basis for morphometric analysis. A matching algorithm is developed to reduce the identification errors by comparing neighboring local features and rejecting unreliable matches. The two-sample t-test is finally adopted to analyze specific properties of the template patterns. Experiments are performed on the public OASIS database to clinically analyze brain images of Alzheimer's disease (AD) and normal controls (NC). MEACOLP automatically identifies known morphological differences between AD and NC brains, and characterizes the differences well as the scaling and translation of underlying structures. Most of the significant differences are identified in only a single hemisphere, indicating that AD-related structures are characterized by strong anatomical asymmetry. In addition, classification trials to differentiate AD subjects from NC confirm that the morphological differences are reliably related to the groups of interest.
url http://europepmc.org/articles/PMC3335130?pdf=render
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AT yanshuangren morphometrybasedoneffectiveandaccuratecorrespondencesoflocalizedpatternsmeacolp
AT lijunbai morphometrybasedoneffectiveandaccuratecorrespondencesoflocalizedpatternsmeacolp
AT wenshengzhang morphometrybasedoneffectiveandaccuratecorrespondencesoflocalizedpatternsmeacolp
AT jietian morphometrybasedoneffectiveandaccuratecorrespondencesoflocalizedpatternsmeacolp
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