Azim Riasat, Wang Shulin, Dipu Shoaib Ahmed, Islam Nazmin, Ala Muid Munshi Rezwan, Elahe Md Fazla, Li Mei
College of Computer Science and Electronic Engineering, Hunan University, Changsha, Hunan, 410082, PR China; Department of Computer Science & Engineering, United International University, Dhaka, Bangladesh.
College of Computer Science and Electronic Engineering, Hunan University, Changsha, Hunan, 410082, PR China.
Comput Biol Med. 2023 May;158:106871. doi: 10.1016/j.compbiomed.2023.106871. Epub 2023 Apr 3.
With the advancement of new technologies, a huge amount of high dimensional data is being generated which is opening new opportunities and challenges to the study of cancer and diseases. In particular, distinguishing the patient-specific key components and modules which drive tumorigenesis is necessary to analyze. A complex disease generally does not initiate from the dysregulation of a single component but it is the result of the dysfunction of a group of components and networks which differs from patient to patient. However, a patient-specific network is required to understand the disease and its molecular mechanism. We address this requirement by constructing a patient-specific network by sample-specific network theory with integrating cancer-specific differentially expressed genes and elite genes. By elucidating patient-specific networks, it can identify the regulatory modules, driver genes as well as personalized disease networks which can lead to personalized drug design. This method can provide insight into how genes are associating with each other and characterized the patient-specific disease subtypes. The results show that this method can be beneficial for the detection of patient-specific differential modules and interaction between genes. Extensive analysis using existing literature, gene enrichment and survival analysis for three cancer types STAD, PAAD and LUAD shows the effectiveness of this method over other existing methods. In addition, this method can be useful for personalized therapeutics and drug design. This methodology is implemented in the R language and is available at https://github.com/riasatazim/PatientSpecificRNANetwork.
随着新技术的进步,大量的高维数据不断产生,这为癌症和疾病的研究带来了新的机遇和挑战。特别是,区分驱动肿瘤发生的患者特异性关键成分和模块对于分析来说是必要的。一种复杂疾病通常并非由单个成分的失调引发,而是一组成分和网络功能障碍的结果,且不同患者之间存在差异。然而,需要构建患者特异性网络来理解疾病及其分子机制。我们通过整合癌症特异性差异表达基因和精英基因,利用样本特异性网络理论构建患者特异性网络来满足这一需求。通过阐明患者特异性网络,可以识别调控模块、驱动基因以及可导致个性化药物设计的个性化疾病网络。该方法能够深入了解基因之间的关联方式,并对患者特异性疾病亚型进行特征描述。结果表明,该方法有助于检测患者特异性差异模块以及基因之间的相互作用。使用现有文献、基因富集分析以及对三种癌症类型(STAD、PAAD和LUAD)的生存分析进行的广泛分析表明,该方法相对于其他现有方法具有有效性。此外,该方法对于个性化治疗和药物设计可能有用。此方法以R语言实现,可在https://github.com/riasatazim/PatientSpecificRNANetwork获取。