Department of Pathology, Sir Run Run Shaw Hospital of Zhejiang University School of Medicine, Hangzhou, China.
Aging (Albany NY). 2023 Feb 25;15(4):1177-1198. doi: 10.18632/aging.204552.
The high heterogeneity of triple negative breast cancer (TNBC) is the main clinical challenge for individualized therapy. Considering that fatty acid metabolism (FAM) plays an indispensable role in tumorigenesis and development of TNBC, we proposed a novel FAM-based classification to characterize the tumor microenvironment immune profiles and heterogeneous for TNBC.
Weighted gene correlation network analysis (WGCNA) was performed to identify FAM-related genes from 221 TNBC samples in Molecular Taxonomy of Breast Cancer International Consortium (METABRIC) dataset. Then, non-negative matrix factorization (NMF) clustering analysis was applied to determine FAM clusters based on the prognostic FAM-related genes, which chosen from the univariate/multivariate Cox regression model and the least absolute shrinkage and selection operator (LASSO) regression algorithm. Then, a FAM scoring scheme was constructed to further quantify FAM features of individual TNBC patient based on the prognostic differentially expressed genes (DEGs) between different FAM clusters. Systematically analyses were performed to evaluate the correlation between the FAM scoring system (FS) with survival outcomes, genomic characteristics, tumor microenvironment (TME) features and immunotherapeutic response for TNBC, which were further validated in the Cancer Genome Atlas (TCGA) and GSE58812 datasets. Moreover, the expression level and clinical significancy of the selected FS gene signatures were further validated in our cohort.
1860 FAM-genes were screened out using WGCNA. Three distinct FAM clusters were determined by NMF clustering analysis, which allowed to distinguish different groups of patients with distinct clinical outcomes and tumor microenvironment (TME) features. Then, prognostic gene signatures based on the DEGs between different FAM clusters were identified using univariate Cox regression analysis and Lasso regression algorithm. A FAM scoring scheme was constructed, which could divide TNBC patients into high and low-FS subgroups. Low FS subgroup, characterized by better prognosis and abundance with effective immune infiltration. While patients with higher FS were featured with poorer survival and lack of effective immune infiltration. In addition, two independent immunotherapy cohorts (Imvigor210 and GSE78220) confirmed that patients with lower FS demonstrated significant therapeutic advantages from anti-PD-1/PD-L1 immunotherapy and durable clinical benefits. Further analyses in our cohort found that the differential expression of CXCL13, FBP1 and PLCL2 were significantly associated with clinical outcomes of TNBC samples.
This study revealed FAM plays an indispensable role in formation of TNBC heterogeneity and TME diversity. The novel FAM-based classification could provide a promising prognostic predictor and guide more effective immunotherapy strategies for TNBC.
三阴性乳腺癌(TNBC)的高度异质性是个体化治疗的主要临床挑战。考虑到脂肪酸代谢(FAM)在 TNBC 的发生和发展中起着不可或缺的作用,我们提出了一种新的基于 FAM 的分类方法,以描述 TNBC 的肿瘤微环境免疫特征和异质性。
从分子分类乳腺癌国际联盟(METABRIC)数据集的 221 个 TNBC 样本中进行加权基因相关网络分析(WGCNA),以鉴定 FAM 相关基因。然后,基于预后 FAM 相关基因进行非负矩阵分解(NMF)聚类分析,从单变量/多变量 Cox 回归模型和最小绝对值收缩和选择算子(LASSO)回归算法中选择。然后,构建 FAM 评分方案,根据不同 FAM 簇之间的预后差异表达基因(DEG)进一步量化个体 TNBC 患者的 FAM 特征。系统分析评估 FAM 评分系统(FS)与 TNBC 患者生存结局、基因组特征、肿瘤微环境(TME)特征和免疫治疗反应之间的相关性,进一步在癌症基因组图谱(TCGA)和 GSE58812 数据集进行验证。此外,在我们的队列中进一步验证了所选 FS 基因特征的表达水平和临床意义。
使用 WGCNA 筛选出 1860 个 FAM 基因。通过 NMF 聚类分析确定了三个不同的 FAM 簇,这些簇能够区分具有不同临床结局和肿瘤微环境(TME)特征的不同患者群体。然后,使用单变量 Cox 回归分析和 Lasso 回归算法确定了基于不同 FAM 簇之间 DEG 的预后基因特征。构建了 FAM 评分方案,可将 TNBC 患者分为高和低-FS 亚组。低 FS 亚组的特征是预后更好,有效免疫浸润丰富。而具有较高 FS 的患者则表现出较差的生存和缺乏有效的免疫浸润。此外,两个独立的免疫治疗队列(Imvigor210 和 GSE78220)证实,具有较低 FS 的患者从抗 PD-1/PD-L1 免疫治疗中获得了显著的治疗优势,并具有持久的临床获益。在我们的队列中的进一步分析发现,CXCL13、FBP1 和 PLCL2 的差异表达与 TNBC 样本的临床结局显著相关。
这项研究表明,FAM 在 TNBC 异质性和 TME 多样性的形成中起着不可或缺的作用。新的基于 FAM 的分类方法可为 TNBC 提供有前途的预后预测指标,并指导更有效的免疫治疗策略。