Department of Healthcare Biotechnology, Atta-ur-Rahman School of Applied Biosciences, National University of Sciences and Technology, Islamabad 44000, Pakistan.
Department of Biological Sciences, Capital University of Science & Technology, Islamabad 44000, Pakistan.
Biomed Res Int. 2020 Dec 28;2020:1354381. doi: 10.1155/2020/1354381. eCollection 2020.
Breast cancer is the most prevailing disease among women. It actually develops from breast tissue and has heterogeneous and complex nature that constitutes multiple tumor quiddities. These features are associated with different histological forms, distinctive biological characteristics, and clinical patterns. The predisposition of breast cancer has been attributed to a number of genetic factors, associated with the worst outcomes. Unfortunately, their behavior with relevance to clinical significance remained poorly understood. So, there is a need to further explore the nature of the disease at the transcriptome level. The focus of this study was to explore the influence of Krüppel-like factor 3 (KLF3), tumor protein D52 (TPD52), microRNA 124 (miR-124), and protein kinase C epsilon (PKC) expression on breast cancer. Moreover, this study was also aimed at predicting the tertiary structure of KLF3 protein. Expression of genes was analyzed through real-time PCR using the delta cycle threshold method, and statistical significance was calculated by two-way ANOVA in Graphpad Prism. For the construction of a 3D model, various bioinformatics software programs, Swiss Model and UCSF Chimera, were employed. The expression of KLF3, miR-124, and PKC genes was decreased (fold change: 0.076443, 0.06969, and 0.011597, respectively). However, there was 2-fold increased expression of TPD52 with value < 0.001 relative to control. Tertiary structure of KLF3 exhibited 80.72% structure conservation with its template KLF4 and was 95.06% structurally favored by a Ramachandran plot. These genes might be predictors of stage, metastasis, receptor, and treatment status and used as new biomarkers for breast cancer diagnosis. However, extensive investigations at the tissue level and in are required to further strengthen their role as a potential biomarker for prognosis of breast cancer.
乳腺癌是女性中最常见的疾病。它实际上是从乳腺组织发展而来的,具有异质性和复杂性,构成了多种肿瘤特征。这些特征与不同的组织学形式、独特的生物学特性和临床模式有关。乳腺癌的易感性归因于许多遗传因素,这些因素与最差的结果有关。不幸的是,它们与临床意义相关的行为仍未被充分理解。因此,有必要在转录组水平进一步探索疾病的本质。本研究的重点是探讨 Krüppel 样因子 3(KLF3)、肿瘤蛋白 D52(TPD52)、微小 RNA124(miR-124)和蛋白激酶 C ɛ(PKC)表达对乳腺癌的影响。此外,本研究还旨在预测 KLF3 蛋白的三级结构。通过 delta 循环阈值法实时 PCR 分析基因表达,Graphpad Prism 中的双因素方差分析计算统计学意义。为了构建 3D 模型,使用了各种生物信息学软件程序,包括 Swiss Model 和 UCSF Chimera。KLF3、miR-124 和 PKC 基因的表达降低(倍数变化:0.076443、0.06969 和 0.011597)。然而,与对照相比,TPD52 的表达增加了 2 倍, 值<0.001。KLF3 的三级结构与其模板 KLF4 具有 80.72%的结构保守性,并且在 Ramachandran 图中具有 95.06%的结构优势。这些基因可能是分期、转移、受体和治疗状态的预测因子,并可作为乳腺癌诊断的新生物标志物。然而,需要在组织水平和 上进行广泛的研究,以进一步加强它们作为乳腺癌预后潜在生物标志物的作用。