Litcius/Paper detail

MesoGraph: Automatic profiling of mesothelioma subtypes from histological images

Mark Eastwood, Heba Sailem, Silviu Tudor Marc, Xiaohong Gao, Judith Offman, Emmanouíl Karteris, Angeles Montero Fernandez, Danny Jonigk, William Cookson, Miriam F. Moffatt, Sanjay Popat, Fayyaz Minhas, Jan Lukas Robertus

2023Cell Reports Medicine18 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

MesotheliomaPathologyBiologyMedicineAI in cancer detectionRadiomics and Machine Learning in Medical ImagingPancreatic and Hepatic Oncology Research
MesoGraph: Automatic profiling of mesothelioma subtypes from histological images | Litcius