论文标题

形态的集中扩散概率模型,用于合成组织病理学图像

A Morphology Focused Diffusion Probabilistic Model for Synthesis of Histopathology Images

论文作者

Moghadam, Puria Azadi, Van Dalen, Sanne, Martin, Karina C., Lennerz, Jochen, Yip, Stephen, Farahani, Hossein, Bashashati, Ali

论文摘要

病理学家对患病组织的视觉微观研究一直是一个多世纪以来癌症诊断和预后的基石。最近,深度学习方法在组织图像的分析和分类方面取得了重大进步。但是,关于此类模型在生成组织病理学图像的实用性方面的工作有限。这些合成图像在病理学中有多种应用,包括教育,熟练程度测试,隐私和数据共享的公用事业。最近,引入了扩散概率模型以生成高质量的图像。在这里,我们首次研究了此类模型的潜在用途以及优先的形态加权和颜色归一化以合成脑癌的高质量组织病理学图像。我们的详细结果表明,与生成对抗网络相比,扩散概率模型能够综合广泛的组织病理学图像,并且具有较高的性能。

Visual microscopic study of diseased tissue by pathologists has been the cornerstone for cancer diagnosis and prognostication for more than a century. Recently, deep learning methods have made significant advances in the analysis and classification of tissue images. However, there has been limited work on the utility of such models in generating histopathology images. These synthetic images have several applications in pathology including utilities in education, proficiency testing, privacy, and data sharing. Recently, diffusion probabilistic models were introduced to generate high quality images. Here, for the first time, we investigate the potential use of such models along with prioritized morphology weighting and color normalization to synthesize high quality histopathology images of brain cancer. Our detailed results show that diffusion probabilistic models are capable of synthesizing a wide range of histopathology images and have superior performance compared to generative adversarial networks.

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