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Main Authors: Benito-Del-Valle, Leire, Alvarez-Gila, Aitor, Eguskiza, Itziar, Saratxaga, Cristina L.
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2409.16002
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author Benito-Del-Valle, Leire
Alvarez-Gila, Aitor
Eguskiza, Itziar
Saratxaga, Cristina L.
author_facet Benito-Del-Valle, Leire
Alvarez-Gila, Aitor
Eguskiza, Itziar
Saratxaga, Cristina L.
contents Histopathology image classification is crucial for the accurate identification and diagnosis of various diseases but requires large and diverse datasets. Obtaining such datasets, however, is often costly and time-consuming due to the need for expert annotations and ethical constraints. To address this, we examine the suitability of different generative models and image selection approaches to create realistic synthetic histopathology image patches conditioned on class labels. Our findings highlight the importance of selecting an appropriate generative model type and architecture to enhance performance. Our experiments over the PCam dataset show that diffusion models are effective for transfer learning, while GAN-generated samples are better suited for augmentation. Additionally, transformer-based generative models do not require image filtering, in contrast to those derived from Convolutional Neural Networks (CNNs), which benefit from realism score-based selection. Therefore, we show that synthetic images can effectively augment existing datasets, ultimately improving the performance of the downstream histopathology image classification task.
format Preprint
id arxiv_https___arxiv_org_abs_2409_16002
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Unleashing the Potential of Synthetic Images: A Study on Histopathology Image Classification
Benito-Del-Valle, Leire
Alvarez-Gila, Aitor
Eguskiza, Itziar
Saratxaga, Cristina L.
Computer Vision and Pattern Recognition
Histopathology image classification is crucial for the accurate identification and diagnosis of various diseases but requires large and diverse datasets. Obtaining such datasets, however, is often costly and time-consuming due to the need for expert annotations and ethical constraints. To address this, we examine the suitability of different generative models and image selection approaches to create realistic synthetic histopathology image patches conditioned on class labels. Our findings highlight the importance of selecting an appropriate generative model type and architecture to enhance performance. Our experiments over the PCam dataset show that diffusion models are effective for transfer learning, while GAN-generated samples are better suited for augmentation. Additionally, transformer-based generative models do not require image filtering, in contrast to those derived from Convolutional Neural Networks (CNNs), which benefit from realism score-based selection. Therefore, we show that synthetic images can effectively augment existing datasets, ultimately improving the performance of the downstream histopathology image classification task.
title Unleashing the Potential of Synthetic Images: A Study on Histopathology Image Classification
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2409.16002