Hausheer Frederick H, Kochat Harry, Parker Aulma R, Ding Daoyuan, Yao Shije, Hamilton Susan E, Petluru Pavankumar N, Leverett Betsy D, Bain Stacey H, Saxe Jeffrey D
BioNumerik Pharmaceuticals, Inc., Suite 400, 8122 Datapoint Drive, San Antonio, TX 78229, USA.
Cancer Chemother Pharmacol. 2003 Jul;52 Suppl 1:S3-15. doi: 10.1007/s00280-003-0653-5. Epub 2003 Jun 18.
Any approach applied to drug discovery and development by the medical community and pharmaceutical industry has a direct impact on the future availability of improved, novel, and curative therapies for patients with cancer. By definition, drug discovery is a complex learning process whereby research efforts are directed toward uncovering and assimilating new knowledge to create and develop a drug for the purpose of providing benefit to a defined patient population. Accordingly, a highly desirable technology or approach to drug discovery should facilitate both effective learning and the application of newly discovered observations that can be exploited for therapeutic benefit. However, some believe that drug discovery is largely accomplished by serendipity and therefore appropriately addressed by screening a large number of compounds. Clearly, this approach has not generated an abundance of new drugs for cancer patients and suggests that a tangibly different approach in drug discovery is warranted. We employ an alternative approach to drug discovery, which is based on the elucidation and exploitation of biological, pharmacological, and biochemical mechanisms that have not been previously recognized or fully understood. Mechanism-based drug discovery involves the combined application of physics-based computer simulations and laboratory experimentation. There is increasing evidence that agreement between simulations based on the laws of physics and experimental observations results in a higher probability that such observations are more accurate and better understood as compared with either approach used alone. Physics-based computer simulation applied to drug discovery is now considered by experts in the field to be one of the ultimate methodologies for drug discovery. However, the ability to perform truly comprehensive physics-based molecular simulations remains limited by several factors, including the enormous computer-processing power that is required to perform the formidable mathematical operations and data processing (e.g. memory bandwidth, data storage and retrieval). Another major consideration is the development of software that can generate an appropriate and increasingly complex physical representation of the atomic arrangements of biological systems. During the past 17 years, we have made tremendous progress in addressing some of these obstacles by developing and optimizing physics-based computer programs for the purpose of obtaining increasingly accurate and precise information and by improving the speed of computation. To perform physics-based simulations that involve complex systems of biological and pharmaceutical interest, we have developed methods that enable us to exceed Moore's law. This has been accomplished by parallel processing as well as other methods that have enabled us to study more complex and relevant molecular systems of interest. This paper provides an overview of our approach to drug discovery and describes a novel drug, currently in clinical development, which has directly resulted from the application of this approach.
医学界和制药行业应用于药物发现与开发的任何方法,都直接影响着未来癌症患者能否获得改良的、新型的和治愈性的疗法。从定义上讲,药物发现是一个复杂的学习过程,在此过程中,研究工作旨在揭示和吸收新知识,以创造和开发一种药物,为特定患者群体带来益处。因此,一种非常理想的药物发现技术或方法应有助于有效学习,并应用新发现的可用于治疗益处的观察结果。然而,一些人认为药物发现很大程度上是靠偶然机遇完成的,因此通过筛选大量化合物就能妥善解决。显然,这种方法并未为癌症患者带来大量新药,这表明药物发现需要一种截然不同的方法。我们采用了一种替代的药物发现方法,该方法基于对以前未被认识或充分理解的生物学、药理学和生物化学机制的阐明与利用。基于机制的药物发现涉及基于物理的计算机模拟与实验室实验的联合应用。越来越多的证据表明,基于物理定律的模拟与实验观察结果之间的一致性,使得这些观察结果比单独使用任何一种方法更有可能更准确且更易于理解。该领域的专家现在认为,应用于药物发现的基于物理的计算机模拟是药物发现的终极方法之一。然而,进行真正全面的基于物理的分子模拟的能力仍然受到几个因素的限制,包括执行艰巨的数学运算和数据处理所需的巨大计算机处理能力(例如内存带宽、数据存储和检索)。另一个主要考虑因素是开发能够生成生物系统原子排列的适当且日益复杂的物理表示的软件。在过去的17年里,我们通过开发和优化基于物理的计算机程序,以获取越来越准确和精确的信息,并提高计算速度,在克服其中一些障碍方面取得了巨大进展。为了进行涉及生物和制药领域复杂系统的基于物理的模拟,我们开发了一些方法,使我们能够超越摩尔定律。这是通过并行处理以及其他方法实现的,这些方法使我们能够研究更复杂和相关的感兴趣的分子系统。本文概述了我们的药物发现方法,并描述了一种目前正在临床开发中的新型药物,该药物直接源于这种方法的应用。