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Improving Heart Transplant Rejection Classification Training using Progressive Generative Adversarial Networks

机译:使用渐进式生成对抗网络改善心脏移植抑制分类培训

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Cardiac allograft rejection is a life-threatening complication that can occur in patients following heart transplantation. Endomyocardial biopsies, the current gold-standard for monitoring rejection, require manual identification of samples by experts; however, this can be subjective, costly and time-consuming. Computer-aided diagnosis models can potentially provide an automated analysis that offers accurate and consistent detection of biopsy samples. Unfortunately, the lack of a large dataset of rejection pathology signs, due to time consuming clinical annotations, limits the classification performance of such conventional AI-based models. In this paper, we developed a generative adversarial network (GAN) that creates synthetic tissue tiles from heart transplant whole slide images (WSIs) to serve as data for training rejection classifier models. To generate synthetic rejection histology regions, we used inspirational image generation (IIG) with a single rejection reference image. Additionally, to demonstrate objective improvement in image classification using synthetic rejection regions, we use a pretrained VGG-19 classifier to differentiate between rejection versus nonrejection tiles. We greatly improved classification performance, achieving an increase in the Matthews correlation coefficient (MCC) from 0.411 to 0.790 when the training set was augmented with our synthetic rejection tiles. Our model was able to create visibly realistic rejection tissue tiles which was used to augment the rejection tile database and enhanced automated rejection detection.
机译:心脏同种异体移植抑制剂是一种危及生命的并发症,其在心脏移植后的患者中可能发生。子宫内膜活组织检查,目前的用于监测拒绝的金标准,需要手动识别专家样本;但是,这可以是主观的,昂贵和耗时的。计算机辅助诊断模型可能提供自动分析,可提供准确且一致地检测活检样本。不幸的是,由于耗时的临床注释,缺乏抑制病理学符号的大型数据集限制了这种传统的基于AI的模型的分类性能。在本文中,我们开发了一种生成的对抗网络(GaN),该网络(GaN)从心脏移植整个幻灯片图像(WSIS)中创建合成组织瓦片,以用作训练抑制分类器模型的数据。为了产生合成抑制组织学区,我们使用了具有单个抑制参考图像的鼓舞人心的图像生成(IIG)。另外,为了使用合成抑制区域展示图像分类的客观改善,我们使用普雷雷约VGG-19分类器来区分拒绝与非引注瓦片之间的分辨率。我们大大提高了分类性能,当培训集通过合成拒绝瓷砖增强了0.411至0.790的马修相关系数(MCC)的增加。我们的模型能够创建明显的现实拒绝组织瓷砖,用于增加拒绝瓷砖数据库和增强的自动抑制检测。

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