Segmentation of lymph node in longitudinal studies of thoracic CT images

The assessment of lymph node is commonly used as a yardstick in diagnosis, staging, treatment and therapy control of tumours and their metastases. Current practice of the radiologists is to manually measure the major and minor axis of nodes based on experiences. This method is highly subjected to in...

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Main Author: Soo, Beng Beng.
Other Authors: Poh Chueh Loo
Format: Final Year Project
Language:English
Published: 2011
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Online Access:http://hdl.handle.net/10356/45168
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-451682023-03-03T15:33:06Z Segmentation of lymph node in longitudinal studies of thoracic CT images Soo, Beng Beng. Poh Chueh Loo School of Chemical and Biomedical Engineering DRNTU::Science::Medicine::Optical instruments The assessment of lymph node is commonly used as a yardstick in diagnosis, staging, treatment and therapy control of tumours and their metastases. Current practice of the radiologists is to manually measure the major and minor axis of nodes based on experiences. This method is highly subjected to inter-operator variation. In this report, we present an automated lymph node segmentation model in longitudinal studies. With this model, lymph node would be segmented once using the semi-automated active contour (snake) at baseline and subsequent follow-up studies could be segmented automatically through registration. We applied two types of registration i.e. Free Form Deformation (FFD) and Demons Registration in this study and compared the efficiency and accuracy of both. It was found that Demons-based registration generates results with higher accuracy. We applied the automated segmentation technique to 18 pairs of lymph nodes from 8 patients at baseline and follow-up. A set of manual segmentation results, recognized by two experienced radiologists, serves as the gold standard for evaluation of performance of the method. In Demons-based model, we could observe that 11 out of 18 nodes are well segmented, 6 out of 18 nodes showed slight leakage due to blurred boundaries and 1 out of 18 failed terribly. Including the failed node in statistics, the overall automated segmentation showed an average Dice’s Coefficient of 0.799, sensitivity of 0.799 and specificity of 0.970. Bachelor of Engineering (Chemical and Biomolecular Engineering) 2011-06-09T07:30:15Z 2011-06-09T07:30:15Z 2011 2011 Final Year Project (FYP) http://hdl.handle.net/10356/45168 en Nanyang Technological University 65 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::Science::Medicine::Optical instruments
spellingShingle DRNTU::Science::Medicine::Optical instruments
Soo, Beng Beng.
Segmentation of lymph node in longitudinal studies of thoracic CT images
description The assessment of lymph node is commonly used as a yardstick in diagnosis, staging, treatment and therapy control of tumours and their metastases. Current practice of the radiologists is to manually measure the major and minor axis of nodes based on experiences. This method is highly subjected to inter-operator variation. In this report, we present an automated lymph node segmentation model in longitudinal studies. With this model, lymph node would be segmented once using the semi-automated active contour (snake) at baseline and subsequent follow-up studies could be segmented automatically through registration. We applied two types of registration i.e. Free Form Deformation (FFD) and Demons Registration in this study and compared the efficiency and accuracy of both. It was found that Demons-based registration generates results with higher accuracy. We applied the automated segmentation technique to 18 pairs of lymph nodes from 8 patients at baseline and follow-up. A set of manual segmentation results, recognized by two experienced radiologists, serves as the gold standard for evaluation of performance of the method. In Demons-based model, we could observe that 11 out of 18 nodes are well segmented, 6 out of 18 nodes showed slight leakage due to blurred boundaries and 1 out of 18 failed terribly. Including the failed node in statistics, the overall automated segmentation showed an average Dice’s Coefficient of 0.799, sensitivity of 0.799 and specificity of 0.970.
author2 Poh Chueh Loo
author_facet Poh Chueh Loo
Soo, Beng Beng.
format Final Year Project
author Soo, Beng Beng.
author_sort Soo, Beng Beng.
title Segmentation of lymph node in longitudinal studies of thoracic CT images
title_short Segmentation of lymph node in longitudinal studies of thoracic CT images
title_full Segmentation of lymph node in longitudinal studies of thoracic CT images
title_fullStr Segmentation of lymph node in longitudinal studies of thoracic CT images
title_full_unstemmed Segmentation of lymph node in longitudinal studies of thoracic CT images
title_sort segmentation of lymph node in longitudinal studies of thoracic ct images
publishDate 2011
url http://hdl.handle.net/10356/45168
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