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乳腺癌中心体相关预后特征的鉴定

Identification of a centrosome-related prognostic signature for breast cancer.

作者信息

Fang Zhou, Gao Zhi-Jie, Yu Xin, Sun Sheng-Rong, Yao Feng

机构信息

Department of Breast and Thyroid Surgery, Renmin Hospital of Wuhan University, Wuhan, Hubei, China.

出版信息

Front Oncol. 2023 Mar 22;13:1138049. doi: 10.3389/fonc.2023.1138049. eCollection 2023.

Abstract

BACKGROUND

As the major microtubule organizing center in animal cells, the centrosome is implicated with human breast tumor in multiple ways, such as promotion of tumor cell immune evasion. Here, we aimed to detect the expression of centrosome-related genes (CRGs) in normal and malignant breast tissues, and construct a novel centrosome-related prognostic model to discover new biomarkers and screen drugs for breast cancer.

METHODS

We collected CRGs from the public databases and literature. The differentially expressed CRGs between normal and malignant breast tissues were identified by the DESeq2. Univariate Cox and LASSO regression analyses were conducted to screen candidate prognostic CRGs and develop a centrosome-related signature (CRS) to score breast cancer patients. We further manipulated and visualized data from TCGA, GEO, IMvigor210, TCIA and TIMER to explore the correlation between CRS and patient outcomes, clinical manifestations, mutational landscapes, tumor immune microenvironments, and responses to diverse therapies. Single cell analyses were performed to investigate the difference of immune cell landscape between high- and low-risk group patients. In addition, we constructed a nomogram to guide clinicians in precise treatment.

RESULTS

A total of 726 CRGs were collected from the public databases and literature. , , were screened as the prognostic genes in breast cancer. Next, we constructed a centrosome-related prognostic signature and validated its efficacy based on the genes for predicting the survival of breast cancer patients. The high-risk group patients had poor prognoses, the area under the ROC curve for 1-, 3-, and 5-year overall survival (OS) was 0.77, 0.67, and 0.65, respectively. The predictive capacity of CRS was validated by other datasets from GEO dataset. In addition, high-risk group patients exhibited elevated level of mutational landscapes and decreased level of immune infiltration, especially T and B lymphocytes. In terms of treatment responses, patients in the high-risk group were found to be resistant to immunotherapy but sensitive to chemotherapy. Moreover, we screened a series of candidate anticancer drugs with high sensitivity in the high-risk group.

CONCLUSION

Our work exploited a centrosome-related prognostic signature and developed a predictive nomogram capable of accurately predicting breast cancer OS. The above discoveries provide deeper insights into the vital roles of the centrosome and contribute to the development of personalized treatment for breast cancer.

摘要

背景

作为动物细胞中的主要微管组织中心,中心体在多种方面与人类乳腺肿瘤相关,例如促进肿瘤细胞免疫逃逸。在此,我们旨在检测正常和恶性乳腺组织中中心体相关基因(CRGs)的表达,并构建一种新的中心体相关预后模型,以发现新的生物标志物并筛选乳腺癌药物。

方法

我们从公共数据库和文献中收集CRGs。通过DESeq2鉴定正常和恶性乳腺组织之间差异表达的CRGs。进行单因素Cox和LASSO回归分析以筛选候选预后CRGs,并开发一种中心体相关特征(CRS)来对乳腺癌患者进行评分。我们进一步处理和可视化来自TCGA、GEO、IMvigor210、TCIA和TIMER的数据,以探索CRS与患者预后、临床表现、突变图谱、肿瘤免疫微环境以及对不同疗法的反应之间的相关性。进行单细胞分析以研究高危和低危组患者之间免疫细胞图谱的差异。此外,我们构建了一个列线图以指导临床医生进行精准治疗。

结果

从公共数据库和文献中总共收集了726个CRGs。筛选出 、 、 作为乳腺癌的预后基因。接下来,我们构建了一种中心体相关预后特征,并基于预测乳腺癌患者生存的基因验证了其有效性。高危组患者预后较差,1年、3年和5年总生存(OS)的ROC曲线下面积分别为0.77、0.67和0.65。CRS的预测能力通过来自GEO数据集的其他数据集进行了验证。此外,高危组患者的突变图谱水平升高,免疫浸润水平降低,尤其是T和B淋巴细胞。在治疗反应方面,发现高危组患者对免疫治疗耐药但对化疗敏感。此外,我们在高危组中筛选出了一系列高敏感性的候选抗癌药物。

结论

我们的工作利用了一种中心体相关预后特征,并开发了一种能够准确预测乳腺癌OS的预测列线图。上述发现为中心体的重要作用提供了更深入的见解,并有助于乳腺癌个性化治疗的发展。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bf29/10073657/0b1bfab0b054/fonc-13-1138049-g001.jpg

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