脑转移
转移
腺癌
恶性肿瘤
癌症研究
病理
免疫荧光
生物
肺癌
转录组
生物标志物
免疫组织化学
细胞
癌症
医学
肿瘤科
内科学
免疫学
基因表达
基因
抗体
遗传学
作者
Zihao Wang,Yaning Wang,Mengqi Chang,Yuekun Wang,Peng Liu,Jianqiang Wu,Guige Wang,Xiaoyue Tang,Xiangyi Hui,Penghao Liu,Xiaopeng Guo,Bing Xing,Yu Wang,Zhijun Han,Wenbin Ma
出处
期刊:Neuro-oncology
[Oxford University Press]
日期:2023-01-19
卷期号:25 (7): 1262-1274
被引量:18
标识
DOI:10.1093/neuonc/noad017
摘要
Abstract Background Brain metastasis (BM) is the most common intracranial malignancy causing significant mortality, and lung cancer is the most common origin of BM. However, the cellular origins and drivers of BM from lung adenocarcinoma (LUAD) have yet to be defined. Methods The cellular constitutions were characterized by single-cell transcriptomic profiles of 11 LUAD primary tumor (PT) and 10 BM samples (GSE131907). Copy number variation (CNV) and clonality analysis were applied to illustrate the cellular origins of BM tumors. Brain metastasis-associated epithelial cells (BMAECs) were identified by pseudotime trajectory analysis. By using machine-learning algorithms, we developed the BM-index representing the relative abundance of BMAECs in the bulk RNA-seq data indicating a high risk of BM. Therapeutic drugs targeting BMAECs were predicted based on the drug sensitivity data of cancer cell lines. Results Differences in macrophages and T cells between PTs and BMs were investigated by single-cell RNA (scRNA) and immunohistochemistry and immunofluorescence data. CNV analysis demonstrated BM was derived from subclones of PT with a gain of chromosome 7. We then identified BMAECs and their biomarker, S100A9. Immunofluorescence indicated strong correlations of BMAECs with metastasis and prognosis evaluated by the paired PT and BM samples from Peking Union Medical College Hospital. We further evaluated the clinical significance of the BM-index and identified 7 drugs that potentially target BMAECs. Conclusions This study clarified possible cellular origins and drivers of metastatic LUAD at the single-cell level and laid a foundation for early detection of LUAD patients with a high risk of BM.
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