Department of Biomedical Informatics, College of Medicine, The Ohio State University, Columbus, Ohio.
Pelotonia Institute for Immuno-Oncology, The Ohio State University Comprehensive Cancer Center, Columbus, Ohio.
Cancer Res Commun. 2024 Feb 5;4(2):293-302. doi: 10.1158/2767-9764.CRC-23-0213.
Evidence supports significant interactions among microbes, immune cells, and tumor cells in at least 10%-20% of human cancers, emphasizing the importance of further investigating these complex relationships. However, the implications and significance of tumor-related microbes remain largely unknown. Studies have demonstrated the critical roles of host microbes in cancer prevention and treatment responses. Understanding interactions between host microbes and cancer can drive cancer diagnosis and microbial therapeutics (bugs as drugs). Computational identification of cancer-specific microbes and their associations is still challenging due to the high dimensionality and high sparsity of intratumoral microbiome data, which requires large datasets containing sufficient event observations to identify relationships, and the interactions within microbial communities, the heterogeneity in microbial composition, and other confounding effects that can lead to spurious associations. To solve these issues, we present a bioinformatics tool, microbial graph attention (MEGA), to identify the microbes most strongly associated with 12 cancer types. We demonstrate its utility on a dataset from a consortium of nine cancer centers in the Oncology Research Information Exchange Network. This package has three unique features: species-sample relations are represented in a heterogeneous graph and learned by a graph attention network; it incorporates metabolic and phylogenetic information to reflect intricate relationships within microbial communities; and it provides multiple functionalities for association interpretations and visualizations. We analyzed 2,704 tumor RNA sequencing samples and MEGA interpreted the tissue-resident microbial signatures of each of 12 cancer types. MEGA can effectively identify cancer-associated microbial signatures and refine their interactions with tumors.
Studying the tumor microbiome in high-throughput sequencing data is challenging because of the extremely sparse data matrices, heterogeneity, and high likelihood of contamination. We present a new deep learning tool, MEGA, to refine the organisms that interact with tumors.
至少有 10%-20%的人类癌症中存在微生物、免疫细胞和肿瘤细胞之间的显著相互作用的证据,这强调了进一步研究这些复杂关系的重要性。然而,与肿瘤相关的微生物的意义和重要性在很大程度上仍然未知。研究表明宿主微生物在癌症预防和治疗反应中起着关键作用。了解宿主微生物与癌症之间的相互作用可以推动癌症诊断和微生物治疗(以菌治菌)。由于肿瘤内微生物组数据的高维性和高度稀疏性,计算鉴定癌症特异性微生物及其关联仍然具有挑战性,这需要包含足够事件观察的大型数据集来识别关系,以及微生物群落内的相互作用、微生物组成的异质性以及其他可能导致虚假关联的混杂效应。为了解决这些问题,我们提出了一种生物信息学工具,微生物图注意力(MEGA),以识别与 12 种癌症类型最密切相关的微生物。我们在一个由 Oncologic Research Information Exchange Network 中的九个癌症中心组成的联盟的数据集上展示了它的实用性。该软件包有三个独特的功能:物种-样本关系用图注意力网络表示和学习;它结合了代谢和系统发育信息,以反映微生物群落内的复杂关系;它提供了多种关联解释和可视化功能。我们分析了 2704 个肿瘤 RNA 测序样本,MEGA 解释了 12 种癌症类型中每种癌症的组织驻留微生物特征。MEGA 可以有效地识别与癌症相关的微生物特征,并优化其与肿瘤的相互作用。
由于高通量测序数据的极度稀疏数据矩阵、异质性和高污染可能性,研究肿瘤微生物组具有挑战性。我们提出了一种新的深度学习工具 MEGA,用于优化与肿瘤相互作用的生物体。