Genomic strategies for drug repurposing.

Kirtan Dave, Dhaval Patel, Nischal Dave, Mukul Jain
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引用次数: 0

Abstract

Functional genomics, a multidisciplinary subject, investigates the functions of genes and their products in biological systems to better understand diseases and find new drugs. Drug repurposing is an economically efficient approach that entails discovering novel therapeutic applications for already-available medications. Genomics enables the identification of illness and therapeutic molecular characteristics and interactions, which in turn facilitates the process of drug repurposing. Techniques like gene expression profiling and Mendelian randomization are helpful in identifying possible medication candidates. Progress in computer science allows for the investigation and modeling of gene expression networks that involve large amounts of data. The amalgamation of data concerning DNA, RNA, and protein functions bears similarity to pharmacogenomics, a crucial aspect in crafting cancer therapeutics. Functional genomics in drug discovery, particularly for cancer, is still not thoroughly investigated, despite the existence of a significant amount of literature on the subject. Next-generation sequencing and proteomics present highly intriguing opportunities. Publicly available databases and mining techniques facilitate the development of cancer treatments based on functional genomics. Broadening the exploration and utilization of functional genomics holds significant potential for advancing drug discovery and repurposing, particularly within the realm of oncology.

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药物再利用的基因组策略。
功能基因组学是一门多学科学科,研究生物系统中基因及其产物的功能,以更好地了解疾病和寻找新药。药物再利用是一种经济有效的方法,它需要为现有药物发现新的治疗用途。基因组学能够识别疾病和治疗的分子特征和相互作用,这反过来又促进了药物再利用的过程。基因表达谱分析和孟德尔随机化等技术有助于确定可能的候选药物。计算机科学的进步有助于对涉及大量数据的基因表达网络进行研究和建模。有关 DNA、RNA 和蛋白质功能的数据合并与药物基因组学有相似之处,而药物基因组学是制定癌症疗法的一个重要方面。功能基因组学在药物研发(尤其是癌症药物研发)中的应用尚未得到深入研究,尽管已有大量相关文献。下一代测序和蛋白质组学提供了非常有趣的机会。公共数据库和挖掘技术有助于开发基于功能基因组学的癌症治疗方法。扩大对功能基因组学的探索和利用,为推进药物发现和再利用(尤其是在肿瘤学领域)提供了巨大的潜力。
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来源期刊
CiteScore
3.50
自引率
0.00%
发文量
46
审稿时长
11 weeks
期刊介绍: As the official publication of the National Cancer Institute, Cairo University, the Journal of the Egyptian National Cancer Institute (JENCI) is an open access peer-reviewed journal that publishes on the latest innovations in oncology and thereby, providing academics and clinicians a leading research platform. JENCI welcomes submissions pertaining to all fields of basic, applied and clinical cancer research. Main topics of interest include: local and systemic anticancer therapy (with specific interest on applied cancer research from developing countries); experimental oncology; early cancer detection; randomized trials (including negatives ones); and key emerging fields of personalized medicine, such as molecular pathology, bioinformatics, and biotechnologies.
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