Advances in entity-graph based analysis of histopathology images have brought in a new paradigm to describe tissue composition, and learn the tissue structure-to-function relationship. Entity-graphs offer flexible and scalable representations to characterize tissue organization, while allowing the incorporation of prior pathological knowledge to further support model interpretability and explainability. However, entity-graph analysis requires prerequisites for image-to-graph translation and knowledge of state-of-the-art machine learning algorithms applied to graph-structured data, which can potentially hinder their adoption. In this work, we aim to alleviate these issues by developing HistoCartography, a standardized python API with necessary preprocessing, machine learning and explainability tools to facilitate graph-analytics in computational pathology. Further, we have benchmarked the computational time and performance on multiple datasets across different imaging types and histopathology tasks to highlight the applicability of the API for building computational pathology workflows.
翻译:以实体法分析组织病理学图象的进展带来了描述组织组成和学习组织结构与功能关系的新范例。实体法为组织组织特征提供了灵活和可扩缩的表征,同时允许纳入先前的病理学知识,以进一步支持模型解释和解释性。但是,实体法分析要求具备图像到图解翻译的先决条件和用于图表结构数据的最新机器学习算法知识,这可能阻碍数据的采用。在这项工作中,我们的目标是通过发展历史剖析法来缓解这些问题,这是一种标准化的象子图解学,具有必要的预处理、机器学习和解释工具,以便利计算病理学中的图解分析。此外,我们将计算时间和性能基准定在不同成像类型多数据集及其病理学任务上,以突出API对建立计算病理工作流程的适用性。