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Identification and validation of a refined CAF-Associated diagnostic signature in breast cancer.

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Scientific reports 2026 Vol.16(1) p. 4664
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Zhou X, Wang N, Shi L, Wei D, Sun X, Shao M, Tian L, Guo X, Zhang F, Lyu H

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Breast cancer remains a major global health challenge with high incidence and mortality rates among women.

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APA Zhou X, Wang N, et al. (2026). Identification and validation of a refined CAF-Associated diagnostic signature in breast cancer.. Scientific reports, 16(1), 4664. https://doi.org/10.1038/s41598-025-34923-2
MLA Zhou X, et al.. "Identification and validation of a refined CAF-Associated diagnostic signature in breast cancer.." Scientific reports, vol. 16, no. 1, 2026, pp. 4664.
PMID 41535351

Abstract

Breast cancer remains a major global health challenge with high incidence and mortality rates among women. Recent studies have highlighted the critical role of the tumor microenvironment, particularly cancer-associated fibroblasts (CAFs), in tumor progression. However, current understanding of CAFs heterogeneity and its implications for breast cancer diagnosis and treatment remains limited. This study aimed to identify and validate refined marker genes for CAFs and to develop a diagnostic model to improve breast cancer diagnosis and therapeutic strategies. We employed various machine learning algorithms to identify feature genes associated with CAFs. Based on these genes, we constructed a high-precision diagnostic model for breast cancer. Furthermore, through single-cell analysis, we delved into the heterogeneity of CAFs and predicted the sensitivity of different CAF subsets to specific drugs. To validate the expression of these characteristic genes, immunohistochemical (IHC) experiments were also conducted. This study used machine learning to identify FXYD1, SULF1, and TNXB as refined biomarkers for CAFs in breast cancer. Among these evaluated algorithms, the Random Forest algorithm distinctly stood out as the best due to its robust classification accuracy and stability. Single-cell analysis provided insights into the heterogeneity of CAFs between Luminal and non-Luminal breast cancer, thereby enhancing our understanding of the tumor microenvironment. Drug sensitivity predictions indicated that distinct CAF subsets responded differently to specific drugs, laying a solid foundation for the development of personalized breast cancer treatment strategies. Through IHC, the expression patterns of these three biomarkers were verified: FXYD1 was expressed in myoepithelial and fibroblasts in normal breast tissue but was significantly absent in breast cancer; SULF1 was upregulated in fibroblasts of breast cancer; while the expression of TNXB did not exhibit notable variations between normal and cancerous tissues. These findings not only highlight the crucial roles played by FXYD1, SULF1, and TNXB in the development of breast cancer, but also uncover the heterogeneity CAFs. Consequently, our research provides a fresh perspective and a solid theoretical basis for advancing both early and precise diagnostic methods, as well as tailored therapeutic strategies.

MeSH Terms

Humans; Breast Neoplasms; Female; Cancer-Associated Fibroblasts; Biomarkers, Tumor; Tumor Microenvironment; Machine Learning; Gene Expression Regulation, Neoplastic; Single-Cell Analysis; Algorithms

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