Department of Bioinformatics, Ichrogene Incorporated, Suwon 16229, Korea.
Department of Computer Engineering, Inha University, Incheon 22212, Korea.
Biomolecules. 2022 Jul 13;12(7):979. doi: 10.3390/biom12070979.
Breast cancer is one of the most prevalent cancers in females, with more than 450,000 deaths each year worldwide. Among the subtypes of breast cancer, basal-like breast cancer, also known as triple-negative breast cancer, shows the lowest survival rate and does not have effective treatments yet. Somatic mutations in the TP53 gene frequently occur across all breast cancer subtypes, but comparative analysis of gene correlations with respect to mutations in TP53 has not been done so far. The primary goal of this study is to identify gene correlations in two groups of breast cancer patients and to derive potential prognostic gene pairs for breast cancer. We partitioned breast cancer patients into two groups: one group with a mutated TP53 gene (mTP53) and the other with a wild-type TP53 gene (wtTP53). For every gene pair, we computed the hazard ratio using the Cox proportional hazard model and constructed gene correlation networks (GCNs) enriched with prognostic information. Our GCN is more informative than typical GCNs in the sense that it indicates the type of correlation between genes, the concordance index, and the prognostic type of a gene. Comparative analysis of correlation patterns and survival time of the two groups revealed several interesting findings. First, we found several new gene pairs with opposite correlations in the two GCNs and the difference in their correlation patterns was the most prominent in the basal-like subtype of breast cancer. Second, we obtained potential prognostic genes for breast cancer patients with a wild-type TP53 gene. From a comparative analysis of GCNs of mTP53 and wtTP53, we found several gene pairs that show significantly different correlation patterns in the basal-like breast cancer subtype and obtained prognostic genes for patients with a wild-type TP53 gene. The GCNs and prognostic genes identified in this study will be informative for the prognosis of survival and for selecting a drug target for breast cancer, in particular for basal-like breast cancer. To the best of our knowledge, this is the first attempt to construct GCNs for breast cancer patients with or without mutations in the TP53 gene and to find prognostic genes accordingly.
乳腺癌是女性最常见的癌症之一,全球每年有超过 45 万人因此死亡。在乳腺癌的亚型中,基底样乳腺癌,也称为三阴性乳腺癌,存活率最低,目前还没有有效的治疗方法。TP53 基因的体细胞突变经常发生在所有乳腺癌亚型中,但迄今为止,尚未对 TP53 基因突变与基因相关性进行比较分析。本研究的主要目标是鉴定两组乳腺癌患者的基因相关性,并得出潜在的乳腺癌预后基因对。我们将乳腺癌患者分为两组:一组是 TP53 基因突变(mTP53)患者,另一组是 TP53 基因野生型(wtTP53)患者。对于每一对基因,我们使用 Cox 比例风险模型计算风险比,并构建富集预后信息的基因相关性网络(GCN)。我们的 GCN 比典型的 GCN 更具信息量,因为它指示了基因之间的相关性类型、一致性指数和基因的预后类型。对两组的相关性模式和生存时间进行比较分析,揭示了一些有趣的发现。首先,我们在两个 GCN 中发现了几对具有相反相关性的新基因对,并且它们的相关性模式差异在基底样乳腺癌亚型中最为显著。其次,我们获得了 TP53 基因野生型乳腺癌患者的潜在预后基因。通过对 mTP53 和 wtTP53 的 GCN 进行比较分析,我们发现了一些在基底样乳腺癌亚型中具有显著不同相关性模式的基因对,并获得了 TP53 基因野生型乳腺癌患者的预后基因。本研究中鉴定的 GCN 和预后基因将为乳腺癌患者的生存预后提供信息,并为选择乳腺癌特别是基底样乳腺癌的药物靶点提供信息。据我们所知,这是首次尝试构建 TP53 基因突变或无突变的乳腺癌患者的 GCN,并相应地寻找预后基因。