Chen Jing, Ling Chen
Department of Laboratory Medicine, The First Hospital of Jiaxing, Affiliated Hospital of Jiaxing University, Jiaxing, China.
Transl Cancer Res. 2023 Feb 28;12(2):387-397. doi: 10.21037/tcr-23-129. Epub 2023 Feb 27.
There is currently a lack of biological markers to determine the risk of lymph node metastasis in breast cancer. A single long non-coding RNA (lncRNA) cannot accurately describe the heterogeneity of tumors. Thus, more accurate algorithms are needed to screen key pathogenic lncRNAs, and quantitative models are needed to describe the heterogeneity of breast cancer.
A whole transcriptome sequencing data set of breast cancer tissue samples was downloaded from The Cancer Genome Atlas database (n=1,091). A weighted correlation network analysis was conducted to identify the hub lncRNAs associated with lymph node metastasis. A logistic regression analysis was conducted to construct the risk score model. The relationship between the risk scores and the key lncRNAs and the infiltration of the immune cell subtypes was also explored.
A total of 3 common lncRNAs were identified between the differentially expressed lncRNA set and the hub lncRNA set; that is, zinc finger protein 582-antisense RNA 1 (ZNF582-AS1), metastasis-associated lung adenocarcinoma transcript 1 (MALAT1), and actin filament associated protein 1-antisense RNA 1 (AFAP1-AS1). The following formula was used to calculate the risk score: risk score =1.31 + 0.51 * ZNF582-AS1 - 0.66 * MALAT1 - 0.50 * AFAP1-AS1. The receiver operating characteristic curve showed that the areas under the curve for the risk score, ZNF582-AS1, MALAT1, and AFAP1-AS1 were 0.975, 0.793, 0.685, and 0764, respectively (P<0.05). The risk score was positively correlated with immune cell subtype infiltration.
ZNF582-AS1, MALAT1, and AFAP1-AS1 are the key lncRNAs involved in the lymph node metastasis of breast cancer. Our risk score model, which was based on ZNF582-AS1, MALAT1 and AFAP1-AS1, can accurately predict the risk of breast cancer lymph node metastasis. ZNF582-AS1, MALAT1, and AFAP1-AS1 are potential biomarkers for the lymph node metastasis of breast cancer.
目前缺乏用于确定乳腺癌淋巴结转移风险的生物标志物。单一的长链非编码RNA(lncRNA)无法准确描述肿瘤的异质性。因此,需要更精确的算法来筛选关键致病lncRNA,还需要定量模型来描述乳腺癌的异质性。
从癌症基因组图谱数据库下载了乳腺癌组织样本的全转录组测序数据集(n = 1091)。进行加权相关网络分析以鉴定与淋巴结转移相关的枢纽lncRNA。进行逻辑回归分析以构建风险评分模型。还探讨了风险评分与关键lncRNA以及免疫细胞亚型浸润之间的关系。
在差异表达lncRNA集和枢纽lncRNA集之间共鉴定出3种常见lncRNA,即锌指蛋白582反义RNA1(ZNF582 - AS1)、转移相关肺腺癌转录本1(MALAT1)和肌动蛋白丝相关蛋白1反义RNA1(AFAP1 - AS1)。使用以下公式计算风险评分:风险评分=1.31 + 0.51×ZNF582 - AS1 - 0.66×MALAT1 - 0.50×AFAP1 - AS1。受试者工作特征曲线显示,风险评分、ZNF582 - AS1、MALAT1和AFAP1 - AS1的曲线下面积分别为0.975、0.793、0.685和0.764(P<0.05)。风险评分与免疫细胞亚型浸润呈正相关。
ZNF582 - AS1、MALAT1和AFAP1 - AS1是参与乳腺癌淋巴结转移的关键lncRNA。我们基于ZNF582 - AS1、MALAT1和AFAP1 - AS1的风险评分模型能够准确预测乳腺癌淋巴结转移风险。ZNF582 - AS1、MALAT1和AFAP1 - AS1是乳腺癌淋巴结转移的潜在生物标志物。