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Prediction of heart transplant rejection using histopathological whole-slide imaging

机译:使用组织病理学全幻灯片成像预测心脏移植排斥反应

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Endomyocardial biopsies are the current gold standard for monitoring heart transplant patients for signs of cardiac allograft rejection. Manually analyzing the acquired tissue samples can be costly, time-consuming, and subjective. Computer-aided diagnosis, using digitized whole-slide images, has been used to classify the presence and grading of diseases such as brain tumors and breast cancer, and we expect it can be used for prediction of cardiac allograft rejection. In this paper, we first create a pipeline to normalize and extract pixel-level and object-level features from histopathological whole-slide images of endomyocardial biopsies. Then, we develop a two-stage classification algorithm, where we first cluster individual tiles and then use the frequency of tiles in each cluster for classification of each whole-slide image. Our results show that the addition of an unsupervised clustering step leads to higher classification accuracy, as well as the importance of object-level features based on the pathophysiology of rejection. Future expansion of this study includes the development of a multi-class classification pipeline for subtypes and grades of cardiac allograft rejection.
机译:心肌内膜活检是当前监测心脏移植患者心脏异体移植排斥迹象的金标准。手动分析获取的组织样本可能是昂贵,费时且主观的。使用数字化全幻灯片图像的计算机辅助诊断已被用于对诸如脑肿瘤和乳腺癌之类的疾病的存在和等级进行分类,并且我们希望它可以用于预测同种异体心脏移植排斥反应。在本文中,我们首先创建一个管道,以从心内膜活检的组织病理学全幻灯片图像中标准化并提取像素级和对象级特征。然后,我们开发了一个两阶段的分类算法,其中我们首先对单个图块进行聚类,然后使用每个聚类中的图块频率对每个整张幻灯片图像进行分类。我们的结果表明,增加无监督的聚类步骤可以提高分类的准确性,并且基于排斥的病理生理学,对象级特征的重要性。这项研究的未来扩展包括开发针对心脏同种异体移植亚型和等级的多类分类管道。

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