Altaf Reem, Nadeem Humaira, Babar Mustafeez Mujtaba, Ilyas Umair, Muhammad Syed Aun
Department of Pharmaceutical Chemistry, Faculty of Pharmaceutical Sciences, Riphah International University, Islamabad, 44000, Pakistan.
Shifa College of Pharmaceutical Sciences, Shifa Tameer-E-Millat University, Islamabad, 44000, Pakistan.
J Biol Res (Thessalon). 2021 Feb 16;28(1):5. doi: 10.1186/s40709-021-00136-7.
Because of the highly heterogeneous nature of breast cancer, each subtype differs in response to several treatment regimens. This has limited the therapeutic options for metastatic breast cancer disease requiring exploration of diverse therapeutic models to target tumor specific biomarkers.
Differentially expressed breast cancer genes identified through extensive data mapping were studied for their interaction with other target proteins involved in breast cancer progression. The molecular mechanisms by which these signature genes are involved in breast cancer metastasis were also studied through pathway analysis. The potential drug targets for these genes were also identified.
From 50 DEGs, 20 genes were identified based on fold change and p-value and the data curation of these genes helped in shortlisting 8 potential gene signatures that can be used as potential candidates for breast cancer. Their network and pathway analysis clarified the role of these genes in breast cancer and their interaction with other signaling pathways involved in the progression of disease metastasis. The miRNA targets identified through miRDB predictor provided potential miRNA targets for these genes that can be involved in breast cancer progression. Several FDA approved drug targets were identified for the signature genes easing the therapeutic options for breast cancer treatment.
The study provides a more clarified role of signature genes, their interaction with other genes as well as signaling pathways. The miRNA prediction and the potential drugs identified will aid in assessing the role of these targets in breast cancer.
由于乳腺癌具有高度异质性,每种亚型对多种治疗方案的反应各不相同。这限制了转移性乳腺癌的治疗选择,需要探索多种治疗模式以靶向肿瘤特异性生物标志物。
通过广泛的数据映射鉴定出差异表达的乳腺癌基因,研究它们与参与乳腺癌进展的其他靶蛋白的相互作用。还通过通路分析研究了这些特征基因参与乳腺癌转移的分子机制。同时也确定了这些基因的潜在药物靶点。
从50个差异表达基因(DEGs)中,基于倍数变化和p值鉴定出20个基因,对这些基因的数据整理有助于筛选出8个潜在的基因特征,可作为乳腺癌的潜在候选指标。它们的网络和通路分析阐明了这些基因在乳腺癌中的作用以及它们与疾病转移进展中其他信号通路的相互作用。通过miRDB预测器鉴定出的miRNA靶点为这些可能参与乳腺癌进展的基因提供了潜在的miRNA靶点。还为特征基因确定了几个FDA批准的药物靶点,简化了乳腺癌治疗的选择。
该研究更明确了特征基因的作用、它们与其他基因以及信号通路的相互作用。miRNA预测和确定的潜在药物将有助于评估这些靶点在乳腺癌中的作用。