Dhar S, Nygren P, Csoka K, Botling J, Nilsson K, Larsson R
Department of Oncology, University Hospital, Uppsala University, Sweden.
Br J Cancer. 1996 Sep;74(6):888-96. doi: 10.1038/bjc.1996.453.
Differential drug response in a human cell line panel representing defined types of cytotoxic drug resistance was measured using the non-clonogenic fluorometric microculture cytotoxicity assay (FMCA). In total 37 drugs were analysed; eight topoisomerase II inhibitors, eight anti-metabolites, eight alkylating agents, eight tubulin-active agents and five compounds with other or unknown mechanisms of action, including one topoisomerase I inhibitor. Correlation analysis of log IC50 values obtained from the panel showed a high degree of similarity among the drugs with a similar mechanism of action. The mean percentage of mechanistically similar drugs included among the ten highest correlations, when each drug was compared with the remaining data set, was 100%, 92%, 88% and 52% for the topoisomerase II inhibitors, alkylators, tubulinactive agents and anti-metabolites respectively. Classification of drugs into the four categories representing different mechanisms of action using a probabilistic neural network (PNN) analysis resulted in 29 (91%) correct predictions. The results indicate the feasibility of using a limited number of cell lines for prediction of mechanism of action of anti-cancer drugs. The present approach may be well suited for initial classification and evaluation of novel anti-cancer drugs and as a potential tool to guide lead compound optimisation.
使用非克隆荧光微量培养细胞毒性测定法(FMCA),在一组代表特定类型细胞毒性药物抗性的人类细胞系中测量了差异药物反应。总共分析了37种药物;8种拓扑异构酶II抑制剂、8种抗代谢物、8种烷化剂、8种微管蛋白活性剂以及5种作用机制其他或未知的化合物,包括1种拓扑异构酶I抑制剂。对该细胞系获得的log IC50值进行相关性分析,结果显示作用机制相似的药物之间具有高度相似性。当将每种药物与其余数据集进行比较时,在相关性最高的十种药物中,作用机制相似的药物的平均百分比分别为:拓扑异构酶II抑制剂100%、烷化剂92%、微管蛋白活性剂88%、抗代谢物52%。使用概率神经网络(PNN)分析将药物分为代表不同作用机制的四类,结果有29种(91%)预测正确。结果表明,使用有限数量的细胞系预测抗癌药物的作用机制是可行的。本方法可能非常适合对新型抗癌药物进行初步分类和评估,并作为指导先导化合物优化的潜在工具。