Department of Laboratory Medicine and Pathobiology, University of Toronto, Toronto, Ontario, Canada.
Department of Computer Science, University of Toronto, Toronto, Ontario, Canada.
Genes Chromosomes Cancer. 2023 Sep;62(9):526-539. doi: 10.1002/gcc.23146. Epub 2023 Apr 17.
Many malignant cancers like glioblastoma are highly adaptive diseases that dynamically change their regional biology to survive and thrive under diverse microenvironmental and therapeutic pressures. While the concept of intra-tumoral heterogeneity has become a major paradigm in cancer research and care, systematic approaches to assess and document bio-variation in cancer are still in their infancy. Here we discuss existing approaches and challenges to documenting intra-tumoral heterogeneity and emerging computational approaches that leverage artificial intelligence to begin to overcome these limitations. We propose how these emerging techniques can be coupled with a diversity of molecular tools to address intra-tumoral heterogeneity more systematically in research and in practice, especially across larger specimens and longitudinal analyses. Systematic documentation and characterization of heterogeneity across entire tumor specimens and their longitudinal evolution has the potential to improve our understanding and treatment of cancer.
许多恶性肿瘤,如神经胶质瘤,是高度适应的疾病,它们会动态地改变其区域生物学特性,以在不同的微环境和治疗压力下生存和繁衍。虽然肿瘤内异质性的概念已成为癌症研究和治疗的主要范例,但评估和记录癌症生物变异的系统方法仍处于起步阶段。在这里,我们讨论了现有的评估肿瘤内异质性的方法和挑战,以及利用人工智能克服这些局限性的新兴计算方法。我们提出了如何将这些新兴技术与各种分子工具相结合,以便更系统地研究和实践中(特别是在更大的标本和纵向分析中)解决肿瘤内异质性问题。系统地记录和描述整个肿瘤标本及其纵向演变过程中的异质性,有可能提高我们对癌症的认识和治疗水平。