Center of Bioinformatics, College of Life Sciences, Northwest A&F University, Yangling, Shaanxi, China.
Center of Bioinformatics, College of Life Sciences, Northwest A&F University, Yangling, Shaanxi, China.
Eur J Med Chem. 2024 Dec 15;280:116925. doi: 10.1016/j.ejmech.2024.116925. Epub 2024 Oct 4.
Cancer is one of the biggest medical challenges we face today. It is characterized by abnormal, uncontrolled growth of cells that can spread to different parts of the body. Cancer is extremely complex, with genetic variations and the ability to adapt and evolve. This means we must continuously pursue innovative approaches to developing new cancer drugs. While traditional drug discovery methods have led to important breakthroughs, they also have significant limitations that make it difficult to efficiently create new, cost-effective cancer therapies. Integrating computational tools into the cancer drug discovery process is a major step forward. By harnessing computing power, we can overcome some of the inherent barriers of traditional methods. This review examines the range of computational techniques now being used, such as molecular docking, QSAR models, virtual screening, and pharmacophore modeling. It looks at recent advances in areas like machine learning and molecular simulations. The review also discusses the current challenges with these technologies and envisions future directions, underscoring how transformative these computational tools can be for creating targeted, new cancer treatments.
癌症是我们今天面临的最大医学挑战之一。它的特征是细胞的异常、不受控制的生长,这些细胞可以扩散到身体的不同部位。癌症极其复杂,存在遗传变异和适应及进化的能力。这意味着我们必须不断寻求创新方法来开发新的癌症药物。虽然传统的药物发现方法已经取得了重要的突破,但它们也存在着显著的局限性,使得高效地创造新的、具有成本效益的癌症疗法变得困难。将计算工具集成到癌症药物发现过程中是向前迈出的重要一步。通过利用计算能力,我们可以克服传统方法固有的一些障碍。本文综述了目前正在使用的一系列计算技术,如分子对接、QSAR 模型、虚拟筛选和药效团模型。它还探讨了机器学习和分子模拟等领域的最新进展。本文还讨论了这些技术目前面临的挑战,并展望了未来的方向,强调了这些计算工具在创造靶向性新癌症治疗方法方面的变革性作用。