MORPHOLOGICAL QUANTIFICATION OF AORTIC CALCIFICATION FROM LOW MAGNIFICATION IMAGES

Atherosclerotic and medial vascular calcifications are frequent in chronic renal failure patiens and predict their increased cardiovascular mortality. Experimental models for mice have been recently developed in order to study these disorders. The aim of this paper is to present the morphological im...

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Main Authors: Jesús Angulo, Thao Nguyen-Khoa, Ziad A Massy, Tilman Drüeke, Jean Serra
Format: Article
Language:English
Published: Slovenian Society for Stereology and Quantitative Image Analysis 2011-05-01
Series:Image Analysis and Stereology
Subjects:
Online Access:http://www.ias-iss.org/ojs/IAS/article/view/736
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spelling doaj-82f5385534154486812f58535f3177612020-11-25T01:10:14ZengSlovenian Society for Stereology and Quantitative Image AnalysisImage Analysis and Stereology1580-31391854-51652011-05-01222818910.5566/ias.v22.p81-89708MORPHOLOGICAL QUANTIFICATION OF AORTIC CALCIFICATION FROM LOW MAGNIFICATION IMAGESJesús AnguloThao Nguyen-KhoaZiad A MassyTilman DrüekeJean SerraAtherosclerotic and medial vascular calcifications are frequent in chronic renal failure patiens and predict their increased cardiovascular mortality. Experimental models for mice have been recently developed in order to study these disorders. The aim of this paper is to present the morphological image processing algorithms developed for the semi-automated measurement of calcification from sections of aorta stained using von Kossa's silver nitrate procedure and acquired at low magnification power (x 2.5) on colour images. The approach is separated into two sequential phases. First, the segmentation is aimed to extract the calcification structures and on the other hand to demarcate the region of the atherosclerotic lesion within the tissue. The segmentation yields the image data which is the input to the second phase, the quantification. Calcified structures are measured inside and outside the lesion using a granulometric curve which allows the calculation of statistical parameters of size. The same operator computes the shape of the lesion. The relative proportion of the area of calcification is also calculated respectively for the atherosclerotic lesion area and the area outside such lesions. In conclusion, the here developed method allows quantification of vascular calcified deposits in mouse aorta. This method will be useful for the quantitative assessment of pathological vascular changes in animals and man.http://www.ias-iss.org/ojs/IAS/article/view/736aortic calcificationautomation in bioimaginglow magnification histologymathematical morphologynephrologyquantitative image analysis
collection DOAJ
language English
format Article
sources DOAJ
author Jesús Angulo
Thao Nguyen-Khoa
Ziad A Massy
Tilman Drüeke
Jean Serra
spellingShingle Jesús Angulo
Thao Nguyen-Khoa
Ziad A Massy
Tilman Drüeke
Jean Serra
MORPHOLOGICAL QUANTIFICATION OF AORTIC CALCIFICATION FROM LOW MAGNIFICATION IMAGES
Image Analysis and Stereology
aortic calcification
automation in bioimaging
low magnification histology
mathematical morphology
nephrology
quantitative image analysis
author_facet Jesús Angulo
Thao Nguyen-Khoa
Ziad A Massy
Tilman Drüeke
Jean Serra
author_sort Jesús Angulo
title MORPHOLOGICAL QUANTIFICATION OF AORTIC CALCIFICATION FROM LOW MAGNIFICATION IMAGES
title_short MORPHOLOGICAL QUANTIFICATION OF AORTIC CALCIFICATION FROM LOW MAGNIFICATION IMAGES
title_full MORPHOLOGICAL QUANTIFICATION OF AORTIC CALCIFICATION FROM LOW MAGNIFICATION IMAGES
title_fullStr MORPHOLOGICAL QUANTIFICATION OF AORTIC CALCIFICATION FROM LOW MAGNIFICATION IMAGES
title_full_unstemmed MORPHOLOGICAL QUANTIFICATION OF AORTIC CALCIFICATION FROM LOW MAGNIFICATION IMAGES
title_sort morphological quantification of aortic calcification from low magnification images
publisher Slovenian Society for Stereology and Quantitative Image Analysis
series Image Analysis and Stereology
issn 1580-3139
1854-5165
publishDate 2011-05-01
description Atherosclerotic and medial vascular calcifications are frequent in chronic renal failure patiens and predict their increased cardiovascular mortality. Experimental models for mice have been recently developed in order to study these disorders. The aim of this paper is to present the morphological image processing algorithms developed for the semi-automated measurement of calcification from sections of aorta stained using von Kossa's silver nitrate procedure and acquired at low magnification power (x 2.5) on colour images. The approach is separated into two sequential phases. First, the segmentation is aimed to extract the calcification structures and on the other hand to demarcate the region of the atherosclerotic lesion within the tissue. The segmentation yields the image data which is the input to the second phase, the quantification. Calcified structures are measured inside and outside the lesion using a granulometric curve which allows the calculation of statistical parameters of size. The same operator computes the shape of the lesion. The relative proportion of the area of calcification is also calculated respectively for the atherosclerotic lesion area and the area outside such lesions. In conclusion, the here developed method allows quantification of vascular calcified deposits in mouse aorta. This method will be useful for the quantitative assessment of pathological vascular changes in animals and man.
topic aortic calcification
automation in bioimaging
low magnification histology
mathematical morphology
nephrology
quantitative image analysis
url http://www.ias-iss.org/ojs/IAS/article/view/736
work_keys_str_mv AT jesusangulo morphologicalquantificationofaorticcalcificationfromlowmagnificationimages
AT thaonguyenkhoa morphologicalquantificationofaorticcalcificationfromlowmagnificationimages
AT ziadamassy morphologicalquantificationofaorticcalcificationfromlowmagnificationimages
AT tilmandrueke morphologicalquantificationofaorticcalcificationfromlowmagnificationimages
AT jeanserra morphologicalquantificationofaorticcalcificationfromlowmagnificationimages
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