Nucleolar organizer regions (NORs) are parts of the DNA that are involved in RNA transcription. Due to the silver affinity of associated proteins, argyrophilic NORs (AgNORs) can be visualized using silver-based staining. The average number of AgNORs per nucleus has been shown to be a prognostic factor for predicting the outcome of many tumors. Since manual detection of AgNORs is laborious, automation is of high interest. We present a deep learning-based pipeline for automatically determining the AgNOR-score from histopathological sections. An additional annotation experiment was conducted with six pathologists to provide an independent performance evaluation of our approach. Across all raters and images, we found a mean squared error of 0.054 between the AgNOR- scores of the experts and those of the model, indicating that our approach offers performance comparable to humans.
翻译:核心组织者区域(NORs)是DNA的一部分,涉及RNA转录。由于相关蛋白银的亲近性,使用银色的污点可以想象出Argyrophilic NORs(Agnors),每个核的平均Agnors数量被证明是预测许多肿瘤结果的一个预测因素。由于人工检测Agnors是劳累的,自动化是引起极大兴趣的。我们提出了一个深层次的基于学习的管道,以便从病理学部分自动确定Agnor点。与6个病理学家进行了额外的注解实验,以提供我们方法的独立绩效评估。在所有推算器和图像中,我们发现Agnors专家的分数和模型的分数之间平均有0.054的正方差,表明我们的方法可以与人类相比。