Brain tumour detection & segmentation on head CT scans
Medical detection and segmentation serve as pivotal components within clinical practices that facilitate healthcare professionals to provide high-quality patient care, such as establishing conclusive diagnoses to devising treatment plans. Consequently, the automation of these processes via machine a...
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Nanyang Technological University
2024
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sg-ntu-dr.10356-1742552024-03-29T15:37:14Z Brain tumour detection & segmentation on head CT scans How, Alexander Kun Fung Jagath C Rajapakse School of Computer Science and Engineering ASJagath@ntu.edu.sg Computer and Information Science Engineering Medicine, Health and Life Sciences Machine learning Medical detection and segmentation serve as pivotal components within clinical practices that facilitate healthcare professionals to provide high-quality patient care, such as establishing conclusive diagnoses to devising treatment plans. Consequently, the automation of these processes via machine and deep learning had a significant rise in such learning models, empowering the development and advancement of such technology in medical images to enhance clinical efficacy. These advancements have undergone extensive testing, primarily focused on evaluating their efficacy within the context of the abdominal cavity. The objective of this study is to assess these medical models and conduct a comparative analysis of them with their counterparts in their detection and segmentation prowess within the framework of the brain. These scans pose noteworthy challenges such as limited contrast resolution, neurological variability, and subtle pathologies, all set against the backdrop of the complex anatomy of the brain. These factors collectively contribute to a rigorous testing ground for assessing the efficacy of these models. Bachelor's degree 2024-03-25T00:05:53Z 2024-03-25T00:05:53Z 2024 Final Year Project (FYP) How, A. K. F. (2024). Brain tumour detection & segmentation on head CT scans. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/174255 https://hdl.handle.net/10356/174255 en SCSE23-0553 application/pdf Nanyang Technological University |
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Computer and Information Science Engineering Medicine, Health and Life Sciences Machine learning How, Alexander Kun Fung Brain tumour detection & segmentation on head CT scans |
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Medical detection and segmentation serve as pivotal components within clinical practices that facilitate healthcare professionals to provide high-quality patient care, such as establishing conclusive diagnoses to devising treatment plans. Consequently, the automation of these processes via machine and deep learning had a significant rise in such learning models, empowering the development and advancement of such technology in medical images to enhance clinical efficacy. These advancements have undergone extensive testing, primarily focused on evaluating their efficacy within the context of the abdominal cavity.
The objective of this study is to assess these medical models and conduct a comparative analysis of them with their counterparts in their detection and segmentation prowess within the framework of the brain. These scans pose noteworthy challenges such as limited contrast resolution, neurological variability, and subtle pathologies, all set against the backdrop of the complex anatomy of the brain. These factors collectively contribute to a rigorous testing ground for assessing the efficacy of these models. |
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Jagath C Rajapakse |
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Jagath C Rajapakse How, Alexander Kun Fung |
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Final Year Project |
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How, Alexander Kun Fung |
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How, Alexander Kun Fung |
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Brain tumour detection & segmentation on head CT scans |
title_short |
Brain tumour detection & segmentation on head CT scans |
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Brain tumour detection & segmentation on head CT scans |
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Brain tumour detection & segmentation on head CT scans |
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Brain tumour detection & segmentation on head CT scans |
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brain tumour detection & segmentation on head ct scans |
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Nanyang Technological University |
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2024 |
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https://hdl.handle.net/10356/174255 |
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