Department of Human Molecular Genetics and Biochemistry, Sackler Faculty of Medicine, Tel-Aviv University, Tel-Aviv 69978, Israel.
Pharmacogenomics. 2010 Mar;11(3):327-40. doi: 10.2217/pgs.10.27.
While powerful in silico tools are emerging for predicting drug targets and pathways, general in vitro tools for assessing such predictions are lacking. We present a novel in vitro method for distinguishing shared versus distinct drug pathways based on comparative cell growth inhibition profiles across a small panel of human lymphoblastoid cell lines (LCLs) from individual donors.
MATERIALS & METHODS: LCLs from unrelated healthy donors were examined in parallel for growth inhibition profiles of various drugs, including antidepressants (paroxetine, fluoxetine, fluvoxamine, citalopram, amitriptyline and imipramine); anticancer drugs (5-fluorouracil, 6-mercaptopurine, azathioprine, methotrexate and resveratrol); steroid drugs (dexamethasone, beclomethasone and prednisolone); and antipsychotic drugs (haloperidol and clozapine). Cell growth was assessed by the colorimetric 2,3-bis(2-methoxy-4-nitro-5-sulfophenly)-5-[(phenylamino) carbonyl]-2H-tetrazolium hydroxide method following 72 h of drug exposure.
LCLs from unrelated individuals exhibited a wide range of sensitivities to growth inhibition by a given drug, which were independent of basal cell replication rates. Yet, each individual cell line demonstrated a consistent sensitivity to multiple drugs from the same family. High goodness-of-fit values (R(2) > 0.6) were consistently observed for plots comparing the growth-inhibition profiles for paired drugs sharing a similar pathway, for example antidepressants, steroid drugs, antipsychotics, or 6-mercaptopurine compared with azathioprine, but not for drugs with different pathways. The method's utility is demonstrated by the observation that chlorpheniramine, an antihistamine drug long suspected to also possess antidepressant-like properties, exhibits a growth-inhibition profile very similar to antidepressants.
Comparing the growth-inhibition profiles of drugs (or compounds) of interest with the profiles of drugs with known pathways may assist in drug pathway classification. The method is useful for in vitro assessment of in silico-generated drug pathway predictions and for distinguishing shared versus distinct pathways for compounds of interest. Comparative transcriptomics analysis of human lymphoblastoid cell lines exhibiting 'edge' sensitivities can subsequently be utilized in the search for drug response biomarkers for personalized pharmacotherapy. The limitations and advantages of the method are discussed.
虽然有强大的计算机模拟工具可用于预测药物靶点和途径,但缺乏通用的体外工具来评估这些预测。我们提出了一种新的体外方法,基于比较来自个体供体的一小部分人类淋巴母细胞系(LCL)的细胞生长抑制谱,用于区分共享和独特的药物途径。
平行检测来自无关健康供体的 LCL 对各种药物的生长抑制谱,包括抗抑郁药(帕罗西汀、氟西汀、氟伏沙明、西酞普兰、阿米替林和丙咪嗪);抗癌药物(5-氟尿嘧啶、6-巯基嘌呤、硫唑嘌呤、甲氨蝶呤和白藜芦醇);甾体药物(地塞米松、倍氯米松和泼尼松龙);和抗精神病药物(氟哌啶醇和氯氮平)。在药物暴露 72 小时后,通过比色 2,3-双(2-甲氧基-4-硝基-5-磺基苯)-5-[(苯氨基)羰基]-2H-四唑鎓氢氧化物方法评估细胞生长。
来自无关个体的 LCL 对给定药物的生长抑制表现出广泛的敏感性,这种敏感性与基础细胞复制率无关。然而,每个细胞系对来自同一家族的多种药物表现出一致的敏感性。对于共享相似途径的配对药物(例如,抗抑郁药、甾体药物、抗精神病药或 6-巯基嘌呤与硫唑嘌呤相比),生长抑制谱的比较图显示出高拟合值(R²>0.6),但对于具有不同途径的药物则不然。该方法的实用性通过以下观察结果得到证明:氯苯那敏,一种长期被怀疑具有抗抑郁样特性的抗组胺药物,其生长抑制谱与抗抑郁药非常相似。
将感兴趣的药物(或化合物)的生长抑制谱与已知途径的药物的谱进行比较,可能有助于药物途径分类。该方法可用于体外评估计算机模拟生成的药物途径预测,并区分感兴趣化合物的共享和独特途径。随后,可以对表现出“边缘”敏感性的人类淋巴母细胞系进行比较转录组学分析,以寻找用于个性化药物治疗的药物反应生物标志物。讨论了该方法的局限性和优点。