Hindumathi V, Kranthi T, Rao S B, Manimaran P
C R Rao Advanced Institute of Mathematics, Statistics and Computer Science, University of Hyderabad Campus, Prof. C R Rao Road, Gachibowli, Hyderabad - 500046, India.
Mol Biosyst. 2014 Jun;10(6):1450-60. doi: 10.1039/c4mb00004h. Epub 2014 Mar 20.
With rapidly changing technology, prediction of candidate genes has become an indispensable task in recent years mainly in the field of biological research. The empirical methods for candidate gene prioritization that succors to explore the potential pathway between genetic determinants and complex diseases are highly cumbersome and labor intensive. In such a scenario predicting potential targets for a disease state through in silico approaches are of researcher's interest. The prodigious availability of protein interaction data coupled with gene annotation renders an ease in the accurate determination of disease specific candidate genes. In our work we have prioritized the cervix related cancer candidate genes by employing Csaba Ortutay and his co-workers approach of identifying the candidate genes through graph theoretical centrality measures and gene ontology. With the advantage of the human protein interaction data, cervical cancer gene sets and the ontological terms, we were able to predict 15 novel candidates for cervical carcinogenesis. The disease relevance of the anticipated candidate genes was corroborated through a literature survey. Also the presence of the drugs for these candidates was detected through Therapeutic Target Database (TTD) and DrugMap Central (DMC) which affirms that they may be endowed as potential drug targets for cervical cancer.
随着技术的迅速发展,近年来,候选基因预测已成为生物研究领域一项不可或缺的任务。用于候选基因优先级排序的经验方法有助于探索遗传决定因素与复杂疾病之间的潜在途径,但这些方法非常繁琐且劳动强度大。在这种情况下,通过计算机方法预测疾病状态的潜在靶点引起了研究人员的兴趣。蛋白质相互作用数据的大量可得以及基因注释使得准确确定疾病特异性候选基因变得更加容易。在我们的工作中,我们采用了Csaba Ortutay及其同事通过图论中心性度量和基因本体来识别候选基因的方法,对宫颈癌相关候选基因进行了优先级排序。借助人类蛋白质相互作用数据、宫颈癌基因集和本体术语,我们能够预测出15个宫颈癌发生的新候选基因。通过文献调查证实了预期候选基因与疾病的相关性。此外,通过治疗靶点数据库(TTD)和药物图谱中心(DMC)检测到了这些候选基因对应的药物,这表明它们可能被赋予作为宫颈癌潜在药物靶点的特性。