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Modern drug discovery technologies: opportunities and challenges in lead discovery.

机译:现代药物发现技术:线索发现中的机遇与挑战。

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The identification of promising hits and the generation of high quality leads are crucial steps in the early stages of drug discovery projects. The definition and assessment of both chemical and biological space have revitalized the screening process model and emphasized the importance of exploring the intrinsic complementary nature of classical and modern methods in drug research. In this context, the widespread use of combinatorial chemistry and sophisticated screening methods for the discovery of lead compounds has created a large demand for small organic molecules that act on specific drug targets. Modern drug discovery involves the employment of a wide variety of technologies and expertise in multidisciplinary research teams. The synergistic effects between experimental and computational approaches on the selection and optimization of bioactive compounds emphasize the importance of the integration of advanced technologies in drug discovery programs. These technologies (VS, HTS, SBDD, LBDD, QSAR, and so on) are complementary in the sense that they have mutual goals, thereby the combination of both empirical and in silico efforts is feasible at many different levels of lead optimization and new chemical entity (NCE) discovery. This paper provides a brief perspective on the evolution and use of key drug design technologies, highlighting opportunities and challenges.
机译:鉴定有前途的命中和产生高质量的潜在客户是药物开发项目早期阶段的关键步骤。化学和生物空间的定义和评估使筛选过程模型焕发出新活力,并强调了探索经典和现代方法在药物研究中固有互补性的重要性。在这种情况下,组合化学的广泛使用和先进的筛选方法用于发现先导化合物,已经产生了对作用于特定药物靶标的有机小分子的大量需求。现代药物发现涉及在多学科研究团队中使用多种技术和专业知识。实验方法和计算方法之间对生物活性化合物的选择和优化的协同作用强调了在药物发现计划中整合先进技术的重要性。这些技术(VS,HTS,SBDD,LBDD,QSAR等)在具有共同目标的意义上是互补的,因此,在铅优化和新化学的许多不同水平上,经验和计算机技术的结合是可行的实体(NCE)发现。本文简要介绍了关键药物设计技术的发展和使用,重点介绍了机遇和挑战。

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