Spatial transcriptomics in breast cancer: providing insight into tumor heterogeneity and promoting individualized therapy.

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Bibliographic Details
Title: Spatial transcriptomics in breast cancer: providing insight into tumor heterogeneity and promoting individualized therapy.
Authors: An, Junsha, Lu, Yajie, Chen, Yuxi, Chen, Yuling, Zhou, Zhaokai, Chen, Jianping, Peng, Cheng, Huang, Ruizhen, Peng, Fu
Source: Frontiers in Immunology; 2025, p1-19, 19p
Subject Terms: GENE expression, TRANSCRIPTOMES, BREAST cancer research, BREAST cancer, RNA sequencing
Abstract: A comprehensive understanding of tumor heterogeneity, tumor microenvironment and the mechanisms of drug resistance is fundamental to advancing breast cancer research. While single-cell RNA sequencing has resolved the issue of "temporal dynamic expression" of genes at the single-cell level, the lack of spatial information still prevents us from gaining a comprehensive understanding of breast cancer. The introduction and application of spatial transcriptomics addresses this limitation. As the annual technical method of 2020, spatial transcriptomics preserves the spatial location of tissues and resolves RNA-seq data to help localize and differentiate the active expression of functional genes within a specific tissue region, enabling the study of spatial location attributes of gene locations and cellular tissue environments. In the context of breast cancer, spatial transcriptomics can assist in the identification of novel breast cancer subtypes and spatially discriminative features that show promise for individualized precise treatment. This article summarized the key technical approaches, recent advances in spatial transcriptomics and its applications in breast cancer, and discusses the limitations of current spatial transcriptomics methods and the prospects for future development, with a view to advancing the application of this technology in clinical practice. [ABSTRACT FROM AUTHOR]
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Database: Complementary Index
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