A Machine Learning Approach on Chest X-Rays for Pediatric Pneumonia Detection

A Master of Science thesis in Engineering Systems Management by Natali Imad Barakat entitled, “A Machine Learning Approach on Chest X-Rays for Pediatric Pneumonia Detection”, submitted in June 2022. Thesis advisor is Dr. Mahmoud Awad and thesis co-advisor is Dr. Bassam Abu-Nabah. Soft copy is availa...

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Main Author: Barakat, Natali Imad (author)
Format: doctoralThesis
Published: 2022
Subjects:
Online Access:http://hdl.handle.net/11073/24288
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author Barakat, Natali Imad
author_facet Barakat, Natali Imad
author_role author
dc.contributor.none.fl_str_mv Awad, Mahmoud Ismail
Abu-Nabah, Bassam
dc.creator.none.fl_str_mv Barakat, Natali Imad
dc.date.none.fl_str_mv 2022-09-22T06:15:30Z
2022-09-22T06:15:30Z
2022-06
dc.format.none.fl_str_mv application/pdf
application/pdf
dc.identifier.none.fl_str_mv 35.232-2022.28
http://hdl.handle.net/11073/24288
dc.language.none.fl_str_mv en_US
dc.subject.none.fl_str_mv Machine Learning
Chest X-rays
Pediatric Pneumonia Detection
Statistical Feature Extraction
Image Cropping
Healthcare
dc.title.none.fl_str_mv A Machine Learning Approach on Chest X-Rays for Pediatric Pneumonia Detection
dc.type.none.fl_str_mv info:eu-repo/semantics/publishedVersion
info:eu-repo/semantics/doctoralThesis
description A Master of Science thesis in Engineering Systems Management by Natali Imad Barakat entitled, “A Machine Learning Approach on Chest X-Rays for Pediatric Pneumonia Detection”, submitted in June 2022. Thesis advisor is Dr. Mahmoud Awad and thesis co-advisor is Dr. Bassam Abu-Nabah. Soft copy is available (Thesis, Completion Certificate, Approval Signatures, and AUS Archives Consent Form).
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network_acronym_str aus
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oai_identifier_str oai:repository.aus.edu:11073/24288
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spelling A Machine Learning Approach on Chest X-Rays for Pediatric Pneumonia DetectionBarakat, Natali ImadMachine LearningChest X-raysPediatric Pneumonia DetectionStatistical Feature ExtractionImage CroppingHealthcareA Master of Science thesis in Engineering Systems Management by Natali Imad Barakat entitled, “A Machine Learning Approach on Chest X-Rays for Pediatric Pneumonia Detection”, submitted in June 2022. Thesis advisor is Dr. Mahmoud Awad and thesis co-advisor is Dr. Bassam Abu-Nabah. Soft copy is available (Thesis, Completion Certificate, Approval Signatures, and AUS Archives Consent Form).Pneumonia is a highly infectious respiratory disease that can be fatal if left untreated. According to the World Health Organization (WHO), pneumonia is the leading infectious cause of death in children younger than 5 years old. Hence, the early detection of pediatric pneumonia is crucial to reduce its morbidity and mortality rate. Even though chest radiography is the most commonly employed modality for pneumonia detection, recent studies highlight the existence of poor interobserver agreement in the chest x-ray interpretation of healthcare practitioners when it comes to diagnosing pediatric pneumonia. Hence, there is a significant need for automating the detection process to minimize the potential human error. Since Artificial Intelligence (AI) tools such as Deep Learning (DL) and Machine Learning (ML) have the potential to automate disease detection, many researchers explored how such tools can be implemented to detect pneumonia in chest x-rays. Notably, the majority of efforts tackled this problem from a DL point of view. However, DL models can be impractical as they possess low medical interpretability. In contrast, ML has been shown to possess a higher potential for medical interpretability while being less computationally demanding than DL. Thus, the objective of this research is to investigate the interpretability of several ML models trained using features extracted from either full or cropped x-rays in order to aid medical practitioners in accurately and reliably diagnosing pediatric pneumonia in chest x-ray images. The performance of these models is compared to a Transfer Learning (TL) benchmark to assess their candidacy. Notably, the results demonstrate that the Logistic Regression (LR) model performs best on cropped images in terms of interpretability while yielding a recall value of 94.07%, which is around 4% less than that of the TL benchmark. However, the added interpretability of the LR model compensates for the slight decrease in model performance when compared to the TL benchmark.College of EngineeringDepartment of Industrial EngineeringMaster of Science in Engineering Systems Management (MSESM)Awad, Mahmoud IsmailAbu-Nabah, Bassam2022-09-22T06:15:30Z2022-09-22T06:15:30Z2022-06info:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/doctoralThesisapplication/pdfapplication/pdf35.232-2022.28http://hdl.handle.net/11073/24288en_USoai:repository.aus.edu:11073/242882025-06-26T12:22:36Z
spellingShingle A Machine Learning Approach on Chest X-Rays for Pediatric Pneumonia Detection
Barakat, Natali Imad
Machine Learning
Chest X-rays
Pediatric Pneumonia Detection
Statistical Feature Extraction
Image Cropping
Healthcare
status_str publishedVersion
title A Machine Learning Approach on Chest X-Rays for Pediatric Pneumonia Detection
title_full A Machine Learning Approach on Chest X-Rays for Pediatric Pneumonia Detection
title_fullStr A Machine Learning Approach on Chest X-Rays for Pediatric Pneumonia Detection
title_full_unstemmed A Machine Learning Approach on Chest X-Rays for Pediatric Pneumonia Detection
title_short A Machine Learning Approach on Chest X-Rays for Pediatric Pneumonia Detection
title_sort A Machine Learning Approach on Chest X-Rays for Pediatric Pneumonia Detection
topic Machine Learning
Chest X-rays
Pediatric Pneumonia Detection
Statistical Feature Extraction
Image Cropping
Healthcare
url http://hdl.handle.net/11073/24288