Semi-automatic segmentation using MR images I.

Magnetic resonance imaging (MRI) is becoming clinically important in the assessment of joint injury and osteoarthritis because of its excellent soft tissue contrast. Segmentation of specific tissue structures is beneficial to the diagnosis and treatment of pathologies. A semi-automatic segmentation...

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Main Author: Seah, Chiao Luan.
Other Authors: Poh Chueh Loo
Format: Final Year Project
Language:English
Published: 2009
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Online Access:http://hdl.handle.net/10356/16632
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-166322023-03-03T15:31:53Z Semi-automatic segmentation using MR images I. Seah, Chiao Luan. Poh Chueh Loo School of Chemical and Biomedical Engineering DRNTU::Engineering::Bioengineering Magnetic resonance imaging (MRI) is becoming clinically important in the assessment of joint injury and osteoarthritis because of its excellent soft tissue contrast. Segmentation of specific tissue structures is beneficial to the diagnosis and treatment of pathologies. A semi-automatic segmentation code based on a combination of histogrambased techniques, morphological operations and an active contour method was proposed to delineate the meniscus from knee MR images. The objective of the project is to achieve a fast and accurate segmentation of the meniscus. The code was originally designed using 1 set of MRI images, and subsequently tested on 3 other sets to validate its versatility to address different cases. The results were compared to their manually segmented counterparts and computations of sensitivity were used as a gauge for accuracy. Implementation of the semi-automatic segmentation code on the original set generated an excellent mean sensitivity of 78%. However, the program was not as effective on the other MRI sets, giving less than 50% average for sensitivity. Nonetheless, segmentation of each image slice only took around 30 seconds. In conclusion, a considerable amount of segmentation time was saved through the use of the semi-automatic algorithm, but accuracy could still be improved for the other 3 sets so as to achieve adaptability which is a defining factor for a superior program. Future improvisations could consider taking preceding segmented images as a form of guidance when segmenting the subsequent ones. Bachelor of Engineering (Chemical and Biomolecular Engineering) 2009-05-27T07:45:07Z 2009-05-27T07:45:07Z 2009 2009 Final Year Project (FYP) http://hdl.handle.net/10356/16632 en Nanyang Technological University 71 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Bioengineering
spellingShingle DRNTU::Engineering::Bioengineering
Seah, Chiao Luan.
Semi-automatic segmentation using MR images I.
description Magnetic resonance imaging (MRI) is becoming clinically important in the assessment of joint injury and osteoarthritis because of its excellent soft tissue contrast. Segmentation of specific tissue structures is beneficial to the diagnosis and treatment of pathologies. A semi-automatic segmentation code based on a combination of histogrambased techniques, morphological operations and an active contour method was proposed to delineate the meniscus from knee MR images. The objective of the project is to achieve a fast and accurate segmentation of the meniscus. The code was originally designed using 1 set of MRI images, and subsequently tested on 3 other sets to validate its versatility to address different cases. The results were compared to their manually segmented counterparts and computations of sensitivity were used as a gauge for accuracy. Implementation of the semi-automatic segmentation code on the original set generated an excellent mean sensitivity of 78%. However, the program was not as effective on the other MRI sets, giving less than 50% average for sensitivity. Nonetheless, segmentation of each image slice only took around 30 seconds. In conclusion, a considerable amount of segmentation time was saved through the use of the semi-automatic algorithm, but accuracy could still be improved for the other 3 sets so as to achieve adaptability which is a defining factor for a superior program. Future improvisations could consider taking preceding segmented images as a form of guidance when segmenting the subsequent ones.
author2 Poh Chueh Loo
author_facet Poh Chueh Loo
Seah, Chiao Luan.
format Final Year Project
author Seah, Chiao Luan.
author_sort Seah, Chiao Luan.
title Semi-automatic segmentation using MR images I.
title_short Semi-automatic segmentation using MR images I.
title_full Semi-automatic segmentation using MR images I.
title_fullStr Semi-automatic segmentation using MR images I.
title_full_unstemmed Semi-automatic segmentation using MR images I.
title_sort semi-automatic segmentation using mr images i.
publishDate 2009
url http://hdl.handle.net/10356/16632
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