Exploit Spatially Resolved Transcriptomic Data to Infer Cellular Features from Pathology Imaging Data

Zhining Sui, Ziyi Li, Wei Sun
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Abstract

Digital pathology is a rapidly advancing field where deep learning methods can be employed to extract meaningful imaging features. However, the efficacy of training deep learning models is often hindered by the scarcity of annotated pathology images, particularly images with detailed annotations for small image patches or tiles. To overcome this challenge, we propose an innovative approach that leverages paired spatially resolved transcriptomic data to annotate pathology images. We demonstrate the feasibility of this approach and introduce a novel transfer-learning neural network model, STpath (Spatial Transcriptomics and pathology images), designed to predict cell type proportions or classify tumor microenvironments. Our findings reveal that the features from pre-trained deep learning models are associated with cell type identities in pathology image patches. Evaluating STpath using three distinct breast cancer datasets, we observe its promising performance despite the limited training data. STpath excels in samples with variable cell type proportions and high-resolution pathology images. As the influx of spatially resolved transcriptomic data continues, we anticipate ongoing updates to STpath, evolving it into an invaluable AI tool for assisting pathologists in various diagnostic tasks.
利用空间分辨转录组数据从病理成像数据中推断细胞特征
数字病理学是一个飞速发展的领域,在这一领域中,深度学习方法可用于提取有意义的成像特征。然而,训练深度学习模型的功效往往受到注释病理图像稀缺的阻碍,特别是对小图像斑块或平片有详细注释的图像。为了克服这一挑战,我们提出了一种创新方法,利用成对的空间解析转录组数据来注释病理图像。我们证明了这种方法的可行性,并引入了一种新型迁移学习神经网络模型 STpath(空间转录组学和病理图像),旨在预测细胞类型比例或对肿瘤微环境进行分类。我们的研究结果表明,来自预训练深度学习模型的特征与病理图像斑块中的细胞类型特征相关。我们使用三个不同的乳腺癌数据集对 STpath 进行了评估,尽管训练数据有限,但我们观察到了它的良好性能。STpath 在细胞类型比例可变的样本和高分辨率病理图像中表现出色。随着空间分辨转录组数据的不断涌入,我们预计 STpath 将不断更新,进而成为协助病理学家完成各种诊断任务的宝贵人工智能工具。
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