Mohan Chethampadi Gopi
Department of Pharmacoinformatics, National Institute of Pharmaceutical Education and Research, Punjab, India.
Comb Chem High Throughput Screen. 2011 Jun 1;14(5):417-26. doi: 10.2174/138620711795508395.
Computational tools for predicting toxicity have been envisioned to have the potential to broadly impact up on the attrition rate of compounds in pre-clinical drug discovery and development. An integrated approach of computer-assisted, predictive, and physico-chemical properties of a compound, along with its in vitro and in vivo analysis, needs to be routinely exercised in the lead identification and lead optimization processes. Starting with a good lead can save a lot of money and it can significantly reduce the entire drug discovery process. The journey towards triple R's- reduce, replace and refine, further proves to be successful in predicting adverse drug reactions in patients (or animals) enrolled in clinical trials. However, the impact of predictive toxicity analysis was modest and relatively narrow in scope, due to the limited domain knowledge in this field. It is important to note that advances within medical science and newer approaches in drug development will require predictive toxicology applications to be viable. The field of computational toxicology has been heading in a direction more relevant to human diseases by reducing the adverse drug reactions. Therefore, efforts must be directed to integrating these tools relevant to the goal of preventing undesired toxicity in pre-clinical trials followed by different phases of clinical trials.
预测毒性的计算工具被认为有可能广泛影响临床前药物发现和开发中化合物的淘汰率。在先导化合物识别和优化过程中,需要常规运用一种综合方法,该方法结合化合物的计算机辅助、预测性和物理化学性质以及其体外和体内分析。从一个好的先导化合物开始可以节省大量资金,并能显著缩短整个药物发现过程。朝着“3R”(减少、替代和优化)方向发展,在预测参与临床试验的患者(或动物)的药物不良反应方面进一步证明是成功的。然而,由于该领域的领域知识有限,预测毒性分析的影响较小且范围相对较窄。需要注意的是,医学科学的进步和药物开发的新方法将要求预测毒理学应用切实可行。计算毒理学领域一直朝着通过减少药物不良反应与人类疾病更相关的方向发展。因此,必须致力于整合这些工具,以实现预防临床前试验及后续不同阶段临床试验中不良毒性的目标。