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Towards the Identification of Histology Based Subtypes in Prostate Cancer

机译:鉴定基于组织学的前列腺癌亚型

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With the advent of deep neural networks (DNNs), methods of semantic segmentation in histology have improved to a degree that it now possible to analyse morphological features that are not easily accessible to human interpretation. Such features may be used to stratify tissue subtypes in health and disease. A major obstacle is that DNNs require a large amount of data to achieve high performance and generalise to new patients. Such a requirement is unsuitable for exploratory investigations that only have access to small patient cohorts. In this work, we demonstrate how variational autoencoders and generative adversarial networks can be combined to generate realistic histology images suitable for training semantic segmentation models, resulting in a novel data-augmentation method for histology. Subsequently, we analyse if such models can be used to identify subpopulations of prostate glands with different molecular profiles. If successful, this development will ultimately lead to the discovery of novel disease relevant histology-based subtypes. We demonstrate that morphological features derived from the H&E images alone are sufficient to identify expression of a clinical biomarker in prostate glands.
机译:随着深度神经网络(DNN)的出现,组织学中的语义分割方法已经得到了一定程度的改进,以至于现在可以分析人类难以理解的形态特征。此类特征可用于对健康和疾病中的组织亚型进行分层。一个主要的障碍是DNN需要大量数据才能实现高性能并推广到新患者。这样的要求不适用于只能访问小型患者队列的探索性调查。在这项工作中,我们演示了如何将变体自动编码器和生成对抗网络相结合,以生成适合于训练语义分割模型的现实组织学图像,从而产生了一种新颖的组织学数据增强方法。随后,我们分析了这种模型是否可用于识别具有不同分子谱的前列腺腺体。如果成功的话,这种发展将最终导致发现新的疾病相关的基于组织学的亚型。我们证明,仅从H&E图像中得出的形态学特征足以识别前列腺中临床生物标志物的表达。

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