Infiltrating myeloid cell diversity determines oncological characteristics and clinical outcomes in breast cancer.

Chenxuan Yang, Jiaxiang Liu, Shuangtao Zhao, Qingyao Shang, Fei Ren, Kexin Feng, Ruixuan Zhang, Xiyu Kang, Xin Wang, Xiang Wang
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Abstract

Background: Breast cancer presents as one of the top health threats to women around the world. Myeloid cells are the most abundant cells and the major immune coordinator in breast cancer tumor microenvironment (TME), target therapies that harness the anti-tumor potential of myeloid cells are currently being evaluated in clinical trials. However, the landscape and dynamic transition of myeloid cells in breast cancer TME are still largely unknown.

Methods: Myeloid cells were characterized in the single-cell data and extracted with a deconvolution algorithm to be assessed in bulk-sequencing data. We used the Shannon index to describe the diversity of infiltrating myeloid cells. A 5-gene surrogate scoring system was then constructed and evaluated to infer the myeloid cell diversity in a clinically feasible manner.

Results: We dissected the breast cancer infiltrating myeloid cells into 15 subgroups including macrophages, dendritic cells (DCs), and monocytes. Mac_CCL4 had the highest angiogenic activity, Mac_APOE and Mac_CXCL10 were highly active in cytokine secretion, and the DCs had upregulated antigen presentation pathways. The infiltrating myeloid diversity was calculated in the deconvoluted bulk-sequencing data, and we found that higher myeloid diversity was robustly associated with more favorable clinical outcomes, higher neoadjuvant therapy responses, and a higher rate of somatic mutations. We then used machine learning methods to perform feature selection and reduction, which generated a clinical-friendly scoring system consisting of 5 genes (C3, CD27, GFPT2, GMFG, and HLA-DPB1) that could be used to predict clinical outcomes in breast cancer patients.

Conclusions: Our study explored the heterogeneity and plasticity of breast cancer infiltrating myeloid cells. By using a novel combination of bioinformatic approaches, we proposed the myeloid diversity index as a new prognostic metric and constructed a clinically practical scoring system to guide future patient evaluation and risk stratification.

浸润性骨髓细胞多样性决定乳腺癌的肿瘤特征和临床结果。
背景:乳腺癌是全世界妇女面临的最大健康威胁之一。骨髓细胞是乳腺癌肿瘤微环境(tumor microenvironment, TME)中最丰富的细胞,也是主要的免疫协调者,利用骨髓细胞抗肿瘤潜能的靶向治疗目前正在临床试验中进行评估。然而,骨髓细胞在乳腺癌TME中的分布和动态转移在很大程度上仍是未知的。方法:骨髓细胞在单细胞数据中进行表征,并使用反卷积算法提取,以便在批量测序数据中进行评估。我们使用香农指数来描述浸润性骨髓细胞的多样性。然后构建并评估一个5基因替代评分系统,以临床可行的方式推断髓细胞多样性。结果:我们将浸润骨髓的乳腺癌细胞分为巨噬细胞、树突状细胞和单核细胞等15个亚群。Mac_CCL4血管生成活性最高,Mac_APOE和Mac_CXCL10细胞因子分泌高度活跃,dc抗原呈递途径上调。浸润性髓细胞多样性是在去卷积的批量测序数据中计算出来的,我们发现更高的髓细胞多样性与更有利的临床结果、更高的新辅助治疗反应和更高的体细胞突变率密切相关。然后,我们使用机器学习方法进行特征选择和减少,从而生成一个临床友好的评分系统,该系统由5个基因(C3, CD27, GFPT2, GMFG和HLA-DPB1)组成,可用于预测乳腺癌患者的临床结果。结论:我们的研究探讨了乳腺癌浸润骨髓细胞的异质性和可塑性。通过结合生物信息学方法,我们提出髓系多样性指数作为一种新的预后指标,并构建了一个临床实用的评分系统,以指导未来的患者评估和风险分层。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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