论文标题

学习从整个幻灯片图像中预测带有搜索和分类应用的RNA序列表达式

Learning to Predict RNA Sequence Expressions from Whole Slide Images with Applications for Search and Classification

论文作者

Safarpoor, Amir, Hipp, Jason D., Tizhoosh, H. R.

论文摘要

深度学习方法被广泛应用于数字病理学,以应对临床挑战,例如预后和诊断。作为最新应用之一,还使用了深层模型来从整个幻灯片图像中提取分子特征。尽管分子测试带有丰富的信息,但它们通常很昂贵,耗时,并且需要额外的组织才能采样。在本文中,我们提出了TRNASFOMER,这是一种基于注意力的拓扑结构,可以学习以从图像中预测散装RNA-Seq并同时代表载玻片的整个滑动图像。 TRNASFOMER使用多个实例学习来解决一个弱监督的问题,而像素级注释不适合图像。与最先进的算法相比,我们进行了几项实验,并取得了更好的性能和更快的收敛性。提出的TRNASFOMER可以作为计算病理学工具,通过结合组织形态和活检样品的分子指纹来促进新一代的搜索和分类方法。

Deep learning methods are widely applied in digital pathology to address clinical challenges such as prognosis and diagnosis. As one of the most recent applications, deep models have also been used to extract molecular features from whole slide images. Although molecular tests carry rich information, they are often expensive, time-consuming, and require additional tissue to sample. In this paper, we propose tRNAsfomer, an attention-based topology that can learn both to predict the bulk RNA-seq from an image and represent the whole slide image of a glass slide simultaneously. The tRNAsfomer uses multiple instance learning to solve a weakly supervised problem while the pixel-level annotation is not available for an image. We conducted several experiments and achieved better performance and faster convergence in comparison to the state-of-the-art algorithms. The proposed tRNAsfomer can assist as a computational pathology tool to facilitate a new generation of search and classification methods by combining the tissue morphology and the molecular fingerprint of the biopsy samples.

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