Trainable watershed-based model for cornea endothelial cell segmentation

Segmentation of the medical image plays a significant role when it comes to diagnosis using computer aided system. This article focuses on the human corneal endothelium's health, which is one of the filed research interests, especially in the human cornea. Various pathological environments fast...

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Main Authors: Sami, Ahmed Saifullah, Mohd. Rahim, Mohd. Shafry
Format: Article
Language:English
Published: De Gruyter Open Ltd 2022
Subjects:
Online Access:http://eprints.utm.my/103315/1/AhmedSaifullah%20Sami2022_TrainableWatershedBasedModel_compressed.pdf
http://eprints.utm.my/103315/
http://dx.doi.org/10.1515/jisys-2021-0191
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id my.utm.103315
record_format eprints
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
language English
topic QA75 Electronic computers. Computer science
spellingShingle QA75 Electronic computers. Computer science
Sami, Ahmed Saifullah
Mohd. Rahim, Mohd. Shafry
Trainable watershed-based model for cornea endothelial cell segmentation
description Segmentation of the medical image plays a significant role when it comes to diagnosis using computer aided system. This article focuses on the human corneal endothelium's health, which is one of the filed research interests, especially in the human cornea. Various pathological environments fasten the extermination of the endothelial cells, which in turn decreases the cell density in an abnormal manner. Dead cells worsen the hexagonal design. The mutilated endothelial cells can no longer revive back and that gives room for neighbouring cells to migrate and expand so that they can fill in the space. The latter results in cell elongation that is unpredictable as well as increase in size and thinning. Cell density and shape are therefore considered major parameters when it comes to explaining the health condition attributed to corneal endothelium. In this study, medical feature extraction was obtained depending on the segmentation of the endothelial cell boundary, and the task of segmentation of such objects especially the thin, transparent, and unclear cell boundary is considered challenging due to the nature of the image capture during endothelium layer examination by ophthalmologists using confocal or specular microscopy. The resulting image suffers from various issues that affect the quality of the image. Low quality is due to non-uniformity of illumination and the presence of a lot of noise and artefacts resulting from high amounts of distortion, and most of these limitations are present because of the nature of the imaging modality. Usually, images contain certain kind of noise and also continuous shadow. Furthermore, the cells are separated by poor border, thereby leading to great difficulty in the segmentation of the images. The irregular shape of cell and also the contrast of such images seem to be low as they possess blurry boundaries with diverse objects existing in addition to the lack of homogeneity. The main aim of the study is to propose and develop a totally automatic, robust, and real-time model for the segmentation of endothelial cells of the human cornea obtained by in vivo microscopy and computation of different clinical features of endothelial cells. To achieve the aim of this study a new scheme of image enhancement was proposed such as the Contrast-Limited Adaptive Histogram Equalisation (CLAHE) technique to enhance contrast. After that, a new image denoising technique called Wavelet Transform Filter and Butterworth Bandpass for Segmentation is used. Subsequently, brightness level correction is applied by using the moving average filter and the CLAHE to reduce the effects of the non-uniform image lighting produced as a result of the previous step. The main aim of this article is the segmentation of endothelial cells, which involves precise detection of the endothelial contours. So a new segmentation model was proposed such that the shape of the cells will be extracted, and the contours were highlighted. This stage is followed by clinical feature extraction and uses the features for diagnosis. In this stage, several relevant clinical features such as pleomorphism mean cell perimeter, mean cell density, mean cell area, and polymegathism are extracted. The role of these clinical features is crucial for the early detection of corneal pathologies as well as the evaluation of the health of the corneal endothelium layer. The findings of this study were promising.
format Article
author Sami, Ahmed Saifullah
Mohd. Rahim, Mohd. Shafry
author_facet Sami, Ahmed Saifullah
Mohd. Rahim, Mohd. Shafry
author_sort Sami, Ahmed Saifullah
title Trainable watershed-based model for cornea endothelial cell segmentation
title_short Trainable watershed-based model for cornea endothelial cell segmentation
title_full Trainable watershed-based model for cornea endothelial cell segmentation
title_fullStr Trainable watershed-based model for cornea endothelial cell segmentation
title_full_unstemmed Trainable watershed-based model for cornea endothelial cell segmentation
title_sort trainable watershed-based model for cornea endothelial cell segmentation
publisher De Gruyter Open Ltd
publishDate 2022
url http://eprints.utm.my/103315/1/AhmedSaifullah%20Sami2022_TrainableWatershedBasedModel_compressed.pdf
http://eprints.utm.my/103315/
http://dx.doi.org/10.1515/jisys-2021-0191
_version_ 1781777678121041920
spelling my.utm.1033152023-10-31T02:32:45Z http://eprints.utm.my/103315/ Trainable watershed-based model for cornea endothelial cell segmentation Sami, Ahmed Saifullah Mohd. Rahim, Mohd. Shafry QA75 Electronic computers. Computer science Segmentation of the medical image plays a significant role when it comes to diagnosis using computer aided system. This article focuses on the human corneal endothelium's health, which is one of the filed research interests, especially in the human cornea. Various pathological environments fasten the extermination of the endothelial cells, which in turn decreases the cell density in an abnormal manner. Dead cells worsen the hexagonal design. The mutilated endothelial cells can no longer revive back and that gives room for neighbouring cells to migrate and expand so that they can fill in the space. The latter results in cell elongation that is unpredictable as well as increase in size and thinning. Cell density and shape are therefore considered major parameters when it comes to explaining the health condition attributed to corneal endothelium. In this study, medical feature extraction was obtained depending on the segmentation of the endothelial cell boundary, and the task of segmentation of such objects especially the thin, transparent, and unclear cell boundary is considered challenging due to the nature of the image capture during endothelium layer examination by ophthalmologists using confocal or specular microscopy. The resulting image suffers from various issues that affect the quality of the image. Low quality is due to non-uniformity of illumination and the presence of a lot of noise and artefacts resulting from high amounts of distortion, and most of these limitations are present because of the nature of the imaging modality. Usually, images contain certain kind of noise and also continuous shadow. Furthermore, the cells are separated by poor border, thereby leading to great difficulty in the segmentation of the images. The irregular shape of cell and also the contrast of such images seem to be low as they possess blurry boundaries with diverse objects existing in addition to the lack of homogeneity. The main aim of the study is to propose and develop a totally automatic, robust, and real-time model for the segmentation of endothelial cells of the human cornea obtained by in vivo microscopy and computation of different clinical features of endothelial cells. To achieve the aim of this study a new scheme of image enhancement was proposed such as the Contrast-Limited Adaptive Histogram Equalisation (CLAHE) technique to enhance contrast. After that, a new image denoising technique called Wavelet Transform Filter and Butterworth Bandpass for Segmentation is used. Subsequently, brightness level correction is applied by using the moving average filter and the CLAHE to reduce the effects of the non-uniform image lighting produced as a result of the previous step. The main aim of this article is the segmentation of endothelial cells, which involves precise detection of the endothelial contours. So a new segmentation model was proposed such that the shape of the cells will be extracted, and the contours were highlighted. This stage is followed by clinical feature extraction and uses the features for diagnosis. In this stage, several relevant clinical features such as pleomorphism mean cell perimeter, mean cell density, mean cell area, and polymegathism are extracted. The role of these clinical features is crucial for the early detection of corneal pathologies as well as the evaluation of the health of the corneal endothelium layer. The findings of this study were promising. De Gruyter Open Ltd 2022 Article PeerReviewed application/pdf en http://eprints.utm.my/103315/1/AhmedSaifullah%20Sami2022_TrainableWatershedBasedModel_compressed.pdf Sami, Ahmed Saifullah and Mohd. Rahim, Mohd. Shafry (2022) Trainable watershed-based model for cornea endothelial cell segmentation. Journal of Intelligent Systems, 31 (1). pp. 370-392. ISSN 0334-1860 http://dx.doi.org/10.1515/jisys-2021-0191 DOI: 10.1515/jisys-2021-0191
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