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一种用于识别BRCA患者和优化临床治疗的新型有效模型。

A Novel Effective Models for Identifying BRCA Patients and Optimizing Clinical Treatments.

作者信息

Luo Yi, Liu Li, Hou Zeyu, Xiong Daigang, Chen Rui

机构信息

Department of Thyroid and Breast Surgery, Affiliated Hospital of Zunyi Medical University, Zunyi, Guizhou, 563000, P.R. China.

Department of Thyroid and Breast Surgery, The First Clinical College of Zunyi Medical University, Zunyi, Guizhou, 563000, P.R. China.

出版信息

Anticancer Agents Med Chem. 2025;25(5):357-369. doi: 10.2174/0118715206336019241119070155.

Abstract

OBJECTIVE

This study aimed to develop an effective model that identifies high-risk breast cancer (BRCA) patients and optimizes clinical treatments.

METHODS

This study includes five public datasets, TCGA-BRCA as the training dataset and other cohorts as the validation datasets. Machine learning algorithms for finding key tumor-associated immune gene pairs (TAIGPs). These TAIGPs were used to construct tumor-associated immune gene pair index (TAIGPI) by multivariate analysis and further validated on the validation datasets. In addition, the differences in clinical prognosis, biological characteristics, and treatment benefits between high and low TAIGPI groups were further analyzed.

RESULTS

The TAIGPI was established by 36 TAIGPs. Better clinical outcomes in the low TAIGPI patients, with consistent results, were also obtained in the validation datasets. The study showed that patients in the low TAIGPI group had a high infiltration of immune cells and low proliferative activity of tumor cells. In contrast, patients in the high TAIGPI group exhibited low infiltration of immune cells and high proliferative activity of tumor cells. In addition, patients in the low TAIGPI group are more likely to benefit from chemotherapy, adjuvant chemotherapy, or immunotherapy.

CONCLUSIONS

The TAIGPI can be an effective predictive strategy for the clinical prognosis of breast cancer patients, providing new insights into personalized treatment options for breast cancer patients.

摘要

目的

本研究旨在开发一种有效的模型,用于识别高危乳腺癌(BRCA)患者并优化临床治疗。

方法

本研究包括五个公共数据集,将TCGA-BRCA作为训练数据集,其他队列作为验证数据集。使用机器学习算法寻找关键的肿瘤相关免疫基因对(TAIGP)。通过多变量分析将这些TAIGP用于构建肿瘤相关免疫基因对指数(TAIGPI),并在验证数据集上进一步验证。此外,进一步分析了高TAIGPI组和低TAIGPI组在临床预后、生物学特征和治疗获益方面的差异。

结果

由36个TAIGP建立了TAIGPI。在验证数据集中也获得了低TAIGPI患者更好的临床结果,结果一致。研究表明,低TAIGPI组患者免疫细胞浸润高,肿瘤细胞增殖活性低。相比之下,高TAIGPI组患者免疫细胞浸润低,肿瘤细胞增殖活性高。此外,低TAIGPI组患者更有可能从化疗、辅助化疗或免疫治疗中获益。

结论

TAIGPI可以成为乳腺癌患者临床预后的有效预测策略,为乳腺癌患者的个性化治疗选择提供新的见解。

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