降级(电信)
标杆管理
生物信息学
生化工程
强制降级
活性成分
数量结构-活动关系
知识库
化学信息学
药物
化学
计算机科学
小分子
药品
机器学习
人工智能
计算化学
药理学
色谱法
高效液相色谱法
业务
工程类
生物化学
医学
营销
基因
甲酸铵
电信
作者
Mark H. Kleinman,Steven W. Baertschi,Karen M. Alsante,Darren L. Reid,Mark D. Mowery,Roman Shimanovich,Chris Foti,William K. Smith,Dan W. Reynolds,Marcela Nefliu,Martin A. Ott
摘要
Zeneth is a new software application capable of predicting degradation products derived from small molecule active pharmaceutical ingredients. This study was aimed at understanding the current status of Zeneth's predictive capabilities and assessing gaps in predictivity. Using data from 27 small molecule drug substances from five pharmaceutical companies, the evolution of Zeneth predictions through knowledge base development since 2009 was evaluated. The experimentally observed degradation products from forced degradation, accelerated, and long-term stability studies were compared to Zeneth predictions. Steady progress in predictive performance was observed as the knowledge bases grew and were refined. Over the course of the development covered within this evaluation, the ability of Zeneth to predict experimentally observed degradants increased from 31% to 54%. In particular, gaps in predictivity were noted in the areas of epimerizations, N-dealkylation of N-alkylheteroaromatic compounds, photochemical decarboxylations, and electrocyclic reactions. The results of this study show that knowledge base development efforts have increased the ability of Zeneth to predict relevant degradation products and aid pharmaceutical research. This study has also provided valuable information to help guide further improvements to Zeneth and its knowledge base.
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