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Anti-cancer Drug Development: Computational Strategies to Identify and Target Proteins Involved in Cancer Metabolism.

机译:抗癌药物开发:识别和靶向参与癌症代谢的蛋白质的计算策略。

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Cancer remains a fundamental burden to public health despite substantial efforts aimed at developing effective chemotherapeutics and significant advances in chemotherapeutic regimens. The major challenge in anti-cancer drug design is to selectively target cancer cells with high specificity. Research into treating malignancies by targeting altered metabolism in cancer cells is supported by computational approaches, which can take a leading role in identifying candidate targets for anti-cancer therapy as well as assist in the discovery and optimisation of anti-cancer agents. Natural products appear to have privileged structures for anti-cancer drug development and the bulk of this particularly valuable chemical space still remains to be explored. In this review we aim to provide a comprehensive overview of current strategies for computer-guided anti-cancer drug development. We start with a discussion of state-of-the art bioinformatics methods applied to the identification of novel anti-cancer targets, including machine learning techniques, the Connectivity Map and biological network analysis. This is followed by an extensive survey of molecular modelling and cheminformatics techniques employed to develop agents targeting proteins involved in the glycolytic, lipid, NAD+, mitochondrial (TCA cycle), amino acid and nucleic acid metabolism of cancer cells. A dedicated section highlights the most promising strategies to develop anti-cancer therapeutics from natural products and the role of metabolism and some of the many targets which are under investigation are reviewed. Recent success stories are reported for all the areas covered in this review. We conclude with a brief summary of the most interesting strategies identified and with an outlook on future directions in anti-cancer drug development.
机译:尽管致力于开发有效的化学疗法并在化学疗法方面取得了重大进展,但是癌症仍然是公共卫生的基本负担。抗癌药物设计的主要挑战是以高特异性选择性靶向癌细胞。通过靶向癌细胞中新陈代谢的改变来治疗恶性肿瘤的研究得到了计算机方法的支持,该方法可以在确定抗癌疗法的候选靶点方面发挥主导作用,并有助于发现和优化抗癌剂。天然产物似乎具有抗癌药物开发的特权结构,而这一特别有价值的化学空间的大部分仍有待探索。在这篇综述中,我们旨在提供有关计算机指导的抗癌药物开发当前策略的全面概述。我们首先讨论用于识别新型抗癌目标的最新生物信息学方法,包括机器学习技术,连接图和生物网络分析。接下来是对分子建模和化学信息学技术的广泛研究,这些技术用于开发针对与癌细胞的糖酵解,脂质,NAD +,线粒体(TCA循环),氨基酸和核酸代谢有关的蛋白质的药物。专门的章节重点介绍了从天然产物开发抗癌治疗剂的最有前途的策略以及新陈代谢的作用,并对正在研究的许多目标中的一些进行了综述。报告了本次审查涵盖的所有领域的最新成功案例。最后,我们简要概述了确定的最有趣的策略,并展望了抗癌药物开发的未来方向。

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