Explore anomaly detection and localization methods for medical imaging data

Due to the limited availability of expert-labeled anomalous samples in medical imaging applications such as chest X-rays, most existing unsupervised anomaly detection methods rely on only normal imaging data for training. Recent studies in medical imaging literature have extensively explored generat...

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Main Author: Yu, Tianze
Other Authors: Lin Zhiping
Format: Final Year Project
Language:English
Published: Nanyang Technological University 2024
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Online Access:https://hdl.handle.net/10356/177215
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Institution: Nanyang Technological University
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spelling sg-ntu-dr.10356-1772152024-05-31T15:43:55Z Explore anomaly detection and localization methods for medical imaging data Yu, Tianze Lin Zhiping School of Electrical and Electronic Engineering Institute for Infocomm Research (I2R), A*STAR EZPLin@ntu.edu.sg Engineering Due to the limited availability of expert-labeled anomalous samples in medical imaging applications such as chest X-rays, most existing unsupervised anomaly detection methods rely on only normal imaging data for training. Recent studies in medical imaging literature have extensively explored generative adversarial network (GAN)-based approaches. These methods aim to reconstruct normal images during training and identify anomalies at test time based on their poor reconstructions. However, these reconstructions are not explicitly constrained to match the distribution of normal data. Consequently, anomalies may also be well-reconstructed, leading to degraded performance. Motivated by this, we introduce Contrastive Learning guided GAN (CLGAN), which leverages unlabeled mixed data and contrastive learning to guide the generation process. CLGAN regulates the generator by aligning generated images with the normal distribution while pushing them away from potential anomalies present in the unlabeled images. During training, the generator receives feedback regarding both the realness and normality of generated images, in the meantime, the discriminator learns better feature embeddings with the contrastive loss imposed. These contrastive features are subsequently utilized to indicate abnormality. Experimental evaluations on three public chest X-ray datasets demonstrate that CLGAN outperforms state-of-the-art (SOTA) anomaly detection methods significantly across various experimental settings. Ablation studies further confirm the effectiveness of each component of our proposed approach. Bachelor's degree 2024-05-27T07:37:11Z 2024-05-27T07:37:11Z 2024 Final Year Project (FYP) Yu, T. (2024). Explore anomaly detection and localization methods for medical imaging data. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/177215 https://hdl.handle.net/10356/177215 en application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering
spellingShingle Engineering
Yu, Tianze
Explore anomaly detection and localization methods for medical imaging data
description Due to the limited availability of expert-labeled anomalous samples in medical imaging applications such as chest X-rays, most existing unsupervised anomaly detection methods rely on only normal imaging data for training. Recent studies in medical imaging literature have extensively explored generative adversarial network (GAN)-based approaches. These methods aim to reconstruct normal images during training and identify anomalies at test time based on their poor reconstructions. However, these reconstructions are not explicitly constrained to match the distribution of normal data. Consequently, anomalies may also be well-reconstructed, leading to degraded performance. Motivated by this, we introduce Contrastive Learning guided GAN (CLGAN), which leverages unlabeled mixed data and contrastive learning to guide the generation process. CLGAN regulates the generator by aligning generated images with the normal distribution while pushing them away from potential anomalies present in the unlabeled images. During training, the generator receives feedback regarding both the realness and normality of generated images, in the meantime, the discriminator learns better feature embeddings with the contrastive loss imposed. These contrastive features are subsequently utilized to indicate abnormality. Experimental evaluations on three public chest X-ray datasets demonstrate that CLGAN outperforms state-of-the-art (SOTA) anomaly detection methods significantly across various experimental settings. Ablation studies further confirm the effectiveness of each component of our proposed approach.
author2 Lin Zhiping
author_facet Lin Zhiping
Yu, Tianze
format Final Year Project
author Yu, Tianze
author_sort Yu, Tianze
title Explore anomaly detection and localization methods for medical imaging data
title_short Explore anomaly detection and localization methods for medical imaging data
title_full Explore anomaly detection and localization methods for medical imaging data
title_fullStr Explore anomaly detection and localization methods for medical imaging data
title_full_unstemmed Explore anomaly detection and localization methods for medical imaging data
title_sort explore anomaly detection and localization methods for medical imaging data
publisher Nanyang Technological University
publishDate 2024
url https://hdl.handle.net/10356/177215
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