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Table 4_The CXCL9/SPP1 polarity axis in tumor-associated macrophages: immunoregulatory and prognostic significance in non-small cell lung cancer.xlsx

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NIAID Data Ecosystem2026-05-10 收录
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https://figshare.com/articles/dataset/Table_4_The_CXCL9_SPP1_polarity_axis_in_tumor-associated_macrophages_immunoregulatory_and_prognostic_significance_in_non-small_cell_lung_cancer_xlsx/32040228
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This study addresses the limitations of the traditional M1/M2 binary classification for tumor-associated macrophages (TAMs) in non-small cell lung cancer (NSCLC) by introducing a NSCLC-specific functional framework based on the CXCL9/SPP1 (CS) expression ratio. Through the integration of single-cell and bulk transcriptomic data, the research identified four distinct TAM subpopulations. Among these, the CXCL9+SPP1− subpopulation exhibited macrophages with anti-tumor features, whereas the CXCL9−SPP1+ subpopulation showed macrophages with pro-tumor features. A robust CS-polarity-associated tumor microenvironment (TME) six-gene signature was constructed and validated using extensive machine-learning optimization. This model effectively stratified NSCLC patients into high-risk and low-risk groups, with high-risk patients displaying an immunosuppressive TME enriched in M0/M2 macrophages. The study further demonstrated the dynamic plasticity of TAM polarity through pseudotime trajectory analysis and validated key gene expression. For the first time, this study introduces the CXCL9/SPP1 polarity axis into the field of non-small cell lung cancer (NSCLC). By integrating single-cell trajectory analysis, we reveal the dynamic differentiation patterns of TAM polarity in NSCLC. Furthermore, utilizing a combination of 101 machine learning algorithms, we constructed the first six-gene prognostic model based on this polarity axis, achieving precise risk stratification for NSCLC patients and enabling correlative analysis of the immune status within the tumor microenvironment.
创建时间:
2026-04-17
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