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Feature detection in ultrasound images for computer aided diagnosis of Hodgkin's Lymphoma

The varying clinical presentation of Hodgkin's lymphoma (HL) poses a diagnostic challenge in South Africa, as the clinical picture of this lymphoma overlaps with prevalent comorbidities such as tuberculosis (TB) and the Human Immuno-Deficiency Virus (HIV). HIV infection additionally increases the ri...

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Main Author: Dawood, Tareen
Other Authors: Mutsvangwa, Tinashe
Format: Thesis
Language:English
Published: Division of Biomedical Engineering 2022
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access_status_str Open Access
author Dawood, Tareen
author2 Mutsvangwa, Tinashe
author_browse Dawood, Tareen
Mutsvangwa, Tinashe
author_facet Mutsvangwa, Tinashe
Dawood, Tareen
author_sort Dawood, Tareen
collection Thesis
description The varying clinical presentation of Hodgkin's lymphoma (HL) poses a diagnostic challenge in South Africa, as the clinical picture of this lymphoma overlaps with prevalent comorbidities such as tuberculosis (TB) and the Human Immuno-Deficiency Virus (HIV). HIV infection additionally increases the risk of developing HL. These factors motivate for the need to investigate the role of imaging modalities in the diagnostic pathway of HL. The goal of this project was to develop and evaluate an automated framework for improving diagnostic imaging interpretability of ultrasound for HL diagnosis in a HIV TB endemic environment. To achieve this, a precise abdominal ultrasound protocol was developed with clinical guidance. The specific frames in the protocol were used to detect several image biomarkers of clinical interest: splenic enlargement (splenomegaly), splenic lesions, splenic microabscesses, abdominal lymph node enlargement, ascites, and effusions (pleural and pericardial). The developed protocol provided a novel guideline to identify an abnormality from the available ultrasound images. A secondary outcome of the protocol was the development of a prospective guide to image Hodgkin's lymphoma patients using ultrasound, however further testing and evaluation is required to validate its use. Image processing techniques were then applied to identified frames, and geometrical and textural features extracted, to develop an automated abnormality characterisation framework. A total of 36 features were extracted and used to characterise each abnormality. Thereafter, an automated algorithm was used to characterise and classify Hodgkin's lymphoma. A support vector machine model was built, with two experiments performed to evaluate the model. The model achieved a maximum training accuracy of 83%, similar in performance to support vector machine classification models used in medical applications. Noticeably the classification accuracy increased favourably when specific abnormalities were assessed: an enlarged spleen, splenic micro abscesses, ascites, pleural effusions, and pericardial effusions. This may indicate that these specific abnormalities are sufficient to differentiate patients with and without Hodgkin's lymphoma but understanding the reasoning for the decision taken by the system requires further investigation. In this study we show how image processing and automated classification techniques when applied to ultrasound images, have the potential to improve the differential diagnostic pathway of HL. Further evaluation using a larger dataset is planned, to validate and implement these findings in a strained healthcare setting.
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institution University of Cape Town (South Africa)
language eng
last_indexed 2026-06-10T12:31:56.645Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2022
publishDateRange 2022
publishDateSort 2022
publisher Division of Biomedical Engineering
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source_str UCTD — University of Cape Town Open Access Repository
spelling oai:open.uct.ac.za:11427/35492 Feature detection in ultrasound images for computer aided diagnosis of Hodgkin's Lymphoma Dawood, Tareen Mutsvangwa, Tinashe Verburgh, Estelle Biomedical Engineering The varying clinical presentation of Hodgkin's lymphoma (HL) poses a diagnostic challenge in South Africa, as the clinical picture of this lymphoma overlaps with prevalent comorbidities such as tuberculosis (TB) and the Human Immuno-Deficiency Virus (HIV). HIV infection additionally increases the risk of developing HL. These factors motivate for the need to investigate the role of imaging modalities in the diagnostic pathway of HL. The goal of this project was to develop and evaluate an automated framework for improving diagnostic imaging interpretability of ultrasound for HL diagnosis in a HIV TB endemic environment. To achieve this, a precise abdominal ultrasound protocol was developed with clinical guidance. The specific frames in the protocol were used to detect several image biomarkers of clinical interest: splenic enlargement (splenomegaly), splenic lesions, splenic microabscesses, abdominal lymph node enlargement, ascites, and effusions (pleural and pericardial). The developed protocol provided a novel guideline to identify an abnormality from the available ultrasound images. A secondary outcome of the protocol was the development of a prospective guide to image Hodgkin's lymphoma patients using ultrasound, however further testing and evaluation is required to validate its use. Image processing techniques were then applied to identified frames, and geometrical and textural features extracted, to develop an automated abnormality characterisation framework. A total of 36 features were extracted and used to characterise each abnormality. Thereafter, an automated algorithm was used to characterise and classify Hodgkin's lymphoma. A support vector machine model was built, with two experiments performed to evaluate the model. The model achieved a maximum training accuracy of 83%, similar in performance to support vector machine classification models used in medical applications. Noticeably the classification accuracy increased favourably when specific abnormalities were assessed: an enlarged spleen, splenic micro abscesses, ascites, pleural effusions, and pericardial effusions. This may indicate that these specific abnormalities are sufficient to differentiate patients with and without Hodgkin's lymphoma but understanding the reasoning for the decision taken by the system requires further investigation. In this study we show how image processing and automated classification techniques when applied to ultrasound images, have the potential to improve the differential diagnostic pathway of HL. Further evaluation using a larger dataset is planned, to validate and implement these findings in a strained healthcare setting. 2022-01-18T07:46:20Z 2022-01-18T07:46:20Z 2021 2022-01-12T10:55:36Z Master Thesis Masters MSc http://hdl.handle.net/11427/35492 eng application/pdf Division of Biomedical Engineering Faculty of Health Sciences
spellingShingle Biomedical Engineering
Dawood, Tareen
Feature detection in ultrasound images for computer aided diagnosis of Hodgkin's Lymphoma
thesis_degree_str Master's
title Feature detection in ultrasound images for computer aided diagnosis of Hodgkin's Lymphoma
title_full Feature detection in ultrasound images for computer aided diagnosis of Hodgkin's Lymphoma
title_fullStr Feature detection in ultrasound images for computer aided diagnosis of Hodgkin's Lymphoma
title_full_unstemmed Feature detection in ultrasound images for computer aided diagnosis of Hodgkin's Lymphoma
title_short Feature detection in ultrasound images for computer aided diagnosis of Hodgkin's Lymphoma
title_sort feature detection in ultrasound images for computer aided diagnosis of hodgkin s lymphoma
topic Biomedical Engineering
url http://hdl.handle.net/11427/35492
work_keys_str_mv AT dawoodtareen featuredetectioninultrasoundimagesforcomputeraideddiagnosisofhodgkinslymphoma