School of Mathematics, Shandong University, Jinan, Shandong, 250100, China.
College of Sciences, Xi'an University of Science and Technology, Xi'an, Shanxi, 710054, China.
Adv Sci (Weinh). 2024 Nov;11(41):e2403393. doi: 10.1002/advs.202403393. Epub 2024 Sep 3.
Microbes are extensively present among various cancer tissues and play critical roles in carcinogenesis and treatment responses. However, the underlying relationships between intratumoral microbes and tumors remain poorly understood. Here, a MIcrobial Cancer-association Analysis using a Heterogeneous graph transformer (MICAH) to identify intratumoral cancer-associated microbial communities is presented. MICAH integrates metabolic and phylogenetic relationships among microbes into a heterogeneous graph representation. It uses a graph transformer to holistically capture relationships between intratumoral microbes and cancer tissues, which improves the explainability of the associations between identified microbial communities and cancers. MICAH is applied to intratumoral bacterial data across 5 cancer types and 5 fungi datasets, and its generalizability and reproducibility are demonstrated. After experimentally testing a representative observation using a mouse model of tumor-microbe-immune interactions, a result consistent with MICAH's identified relationship is observed. Source tracking analysis reveals that the primary known contributor to a cancer-associated microbial community is the organs affected by the type of cancer. Overall, this graph neural network framework refines the number of microbes that can be used for follow-up experimental validation from thousands to tens, thereby helping to accelerate the understanding of the relationship between tumors and intratumoral microbiomes.
微生物广泛存在于各种癌症组织中,在致癌作用和治疗反应中起着关键作用。然而,肿瘤内微生物与肿瘤之间的潜在关系仍知之甚少。在这里,提出了一种使用异构图转换器(MICAH)进行微生物癌症关联分析的方法,以识别肿瘤内与癌症相关的微生物群落。MICAH 将微生物之间的代谢和系统发育关系整合到一个异构图表示中。它使用图转换器全面捕获肿瘤内微生物和癌症组织之间的关系,从而提高了所识别的微生物群落与癌症之间关联的可解释性。MICAH 应用于 5 种癌症类型和 5 种真菌数据集的肿瘤内细菌数据,展示了其通用性和可重复性。在用肿瘤-微生物-免疫相互作用的小鼠模型对代表性观察进行实验测试后,观察到与 MICAH 识别的关系一致的结果。源追踪分析表明,与癌症相关的微生物群落的主要已知贡献者是受癌症类型影响的器官。总的来说,这个图神经网络框架将可用于后续实验验证的微生物数量从数千个减少到数十个,从而有助于加速理解肿瘤与肿瘤内微生物组之间的关系。