Gogoshin Grigoriy, Rodin Andrei S
Department of Computational and Quantitative Medicine, Beckman Research Institute, and Diabetes and Metabolism Research Institute, City of Hope National Medical Center, 1500 East Duarte Road, Duarte, CA 91010, USA.
Cancers (Basel). 2023 Dec 15;15(24):5858. doi: 10.3390/cancers15245858.
Next-generation cancer and oncology research needs to take full advantage of the multimodal structured, or graph, information, with the graph data types ranging from molecular structures to spatially resolved imaging and digital pathology, biological networks, and knowledge graphs. Graph Neural Networks (GNNs) efficiently combine the graph structure representations with the high predictive performance of deep learning, especially on large multimodal datasets. In this review article, we survey the landscape of recent (2020-present) GNN applications in the context of cancer and oncology research, and delineate six currently predominant research areas. We then identify the most promising directions for future research. We compare GNNs with graphical models and "non-structured" deep learning, and devise guidelines for cancer and oncology researchers or physician-scientists, asking the question of whether they should adopt the GNN methodology in their research pipelines.
下一代癌症与肿瘤学研究需要充分利用多模态结构化信息,即图信息,其图数据类型涵盖从分子结构到空间分辨成像与数字病理学、生物网络以及知识图谱等。图神经网络(GNN)能有效地将图结构表示与深度学习的高预测性能相结合,尤其是在大型多模态数据集上。在这篇综述文章中,我们审视了近期(2020年至今)GNN在癌症与肿瘤学研究背景下的应用情况,并勾勒出六个当前占主导地位的研究领域。然后,我们确定了未来研究最有前景的方向。我们将GNN与图形模型和“非结构化”深度学习进行比较,并为癌症与肿瘤学研究人员或医学科学家制定指导方针,探讨他们是否应在其研究流程中采用GNN方法。