Tissue Image Analytics Center, University of Warwick, Coventry, UK.
Institute of Biomedical Engineering, University of Oxford, Oxford, UK; Kings College London, London, UK.
Cell Rep Med. 2023 Oct 17;4(10):101226. doi: 10.1016/j.xcrm.2023.101226. Epub 2023 Oct 9.
Mesothelioma is classified into three histological subtypes, epithelioid, sarcomatoid, and biphasic, according to the relative proportions of epithelioid and sarcomatoid tumor cells present. Current guidelines recommend that the sarcomatoid component of each mesothelioma is quantified, as a higher percentage of sarcomatoid pattern in biphasic mesothelioma shows poorer prognosis. In this work, we develop a dual-task graph neural network (GNN) architecture with ranking loss to learn a model capable of scoring regions of tissue down to cellular resolution. This allows quantitative profiling of a tumor sample according to the aggregate sarcomatoid association score. Tissue is represented by a cell graph with both cell-level morphological and regional features. We use an external multicentric test set from Mesobank, on which we demonstrate the predictive performance of our model. We additionally validate our model predictions through an analysis of the typical morphological features of cells according to their predicted score.
间皮瘤根据存在的上皮样和肉瘤样肿瘤细胞的相对比例分为三种组织学亚型,即上皮样、肉瘤样和双相型。目前的指南建议对每种间皮瘤的肉瘤样成分进行定量,因为双相型间皮瘤中肉瘤样模式的比例越高,预后越差。在这项工作中,我们开发了一种具有排序损失的双重任务图神经网络 (GNN) 架构,以学习能够对组织区域进行评分的模型,达到细胞分辨率。这允许根据总肉瘤样关联评分对肿瘤样本进行定量分析。组织由具有细胞水平形态和区域特征的细胞图表示。我们使用 Mesobank 的外部多中心测试集,在该测试集上展示了我们模型的预测性能。我们还通过根据预测得分分析细胞的典型形态特征来验证我们模型的预测。