Unlocking the Future of Drug Development: Generative AI, Digital Twins, and Beyond

Zamara Mariam, Sarfaraz K. Niazi, Matthias Magoola
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引用次数: 0

Abstract

This article delves into the intersection of generative AI and digital twins within drug discovery, exploring their synergistic potential to revolutionize pharmaceutical research and development. Through various instances and examples, we illuminate how generative AI algorithms, capable of simulating vast chemical spaces and predicting molecular properties, are increasingly integrated with digital twins of biological systems to expedite drug discovery. By harnessing the power of computational models and machine learning, researchers can design novel compounds tailored to specific targets, optimize drug candidates, and simulate their behavior within virtual biological environments. This paradigm shift offers unprecedented opportunities for accelerating drug development, reducing costs, and, ultimately, improving patient outcomes. As we navigate this rapidly evolving landscape, collaboration between interdisciplinary teams and continued innovation will be paramount in realizing the promise of generative AI and digital twins in advancing drug discovery.
开启药物开发的未来:生成式人工智能、数字双胞胎及其他
本文深入探讨了生成式人工智能和数字孪生在药物发现中的交叉点,探讨了它们在彻底改变药物研究与开发方面的协同潜力。通过各种实例和例子,我们阐明了能够模拟广阔化学空间和预测分子特性的生成式人工智能算法如何越来越多地与生物系统的数字孪生集成,以加快药物发现。通过利用计算模型和机器学习的力量,研究人员可以设计出针对特定靶点的新型化合物,优化候选药物,并模拟它们在虚拟生物环境中的行为。这种模式的转变为加快药物开发、降低成本以及最终改善患者预后提供了前所未有的机遇。在我们驾驭这一快速发展的格局时,跨学科团队之间的合作和持续创新将是实现生成式人工智能和数字双胞胎在推进药物发现方面的前景的关键。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.70
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