Nandi Sisir, Vracko Marjan, Bagchi Manish C
Structural Biology and Bioinformatics Division, Indian Institute of Chemical Biology, 4 Raja S.C. Mullick Road, Jadavpur, Calcutta, India.
Chem Biol Drug Des. 2007 Nov;70(5):424-36. doi: 10.1111/j.1747-0285.2007.00575.x.
Phenol and its congeners are known to induce caspase-mediated apoptosis activity and cytotoxicity on various cancer cell lines. Apoptosis, scavenging of radicals, antioxidant, and pro-oxidant characteristics are primarily responsible for the antitumor activities of phenolic compounds. Quantitative structure-activity relationship studies on the cellular apoptosis and cytotoxicity of phenolic compounds have been investigated recently by Selassie and colleagues (J Med Chem; 48:7234, 2005) wherein models were developed for various carcinogenic cell lines. These quantitative structure-activity relationship models are based on few experimentally obtained physicochemical parameters such as Verloop's sterimol descriptor, hydrophobicity, Hammett electronic parameter, and octanol/water partition coefficient. The paper deals with structure-activity relationships of phenols and its derivatives for the development of predictive models from the standpoint of theoretical structural parameters and ridge regression methodology. The quantitative structure-activity relationship studies developed here for the caspase-mediated apoptosis activity and cytotoxicity on murine leukemia cell line (L1210), human promylolytic cell line (HL-60), human breast cancer cell line (MCF-7), parenteral human acute lymphoblastic cells (CCRF-CEM), and multidrug-resistant subline of CCRF-resistant to vinblastine (CEM/VLB) cells utilize physicochemical molecular descriptors calculated solely from the structure of phenolic compounds under investigation along with the descriptors used by Selassie and group. It is seen that such quantitative structure-activity relationships can provide a better quality predictive model for the phenolic compounds. The biological activities of the nine sets of phenolic compounds have been calculated based on ridge regression analysis that clearly gives a better significant correlation compared to the activities predicted by Selassie and co-workers. Counter-propagation artificial neural network studies have been introduced in the present investigation for a better understanding of multidimensional rational patterns in more complex data sets. The counter-propagation artificial neural network studies were performed on the same data set and with the same descriptors as have been carried out in developing ridge regression models and the result of counter-propagation neural network models produces very interesting findings in terms of leave-one-out test. Finally, an attempt has been made for a comparative study of the relative effectiveness of linear statistical methods versus nonlinear techniques, such as counter-propagation neural networks in modeling structure-activity studies of the phenolic compounds.
已知苯酚及其同系物可诱导半胱天冬酶介导的凋亡活性,并对多种癌细胞系产生细胞毒性。凋亡、自由基清除、抗氧化和促氧化特性是酚类化合物抗肿瘤活性的主要原因。最近,塞拉西及其同事对酚类化合物的细胞凋亡和细胞毒性进行了定量构效关系研究(《药物化学杂志》;48:7234,2005年),其中针对各种致癌细胞系建立了模型。这些定量构效关系模型基于少数实验获得的物理化学参数,如韦洛普的立体化学描述符、疏水性、哈米特电子参数和正辛醇/水分配系数。本文从理论结构参数和岭回归方法的角度探讨了酚类及其衍生物的构效关系,以建立预测模型。本文针对半胱天冬酶介导的对小鼠白血病细胞系(L1210)、人早幼粒细胞系(HL-60)、人乳腺癌细胞系(MCF-7)、人急性淋巴细胞原代细胞(CCRF-CEM)以及对长春碱耐药的CCRF多药耐药亚系(CEM/VLB)细胞的凋亡活性和细胞毒性所开展的定量构效关系研究,利用了仅根据所研究酚类化合物的结构计算得出的物理化学分子描述符,以及塞拉西团队所使用的描述符。可以看出,这种定量构效关系能够为酚类化合物提供质量更好的预测模型。基于岭回归分析计算了九组酚类化合物的生物活性,与塞拉西及其同事预测的活性相比,其明显具有更好的显著相关性。本研究引入了反向传播人工神经网络研究,以便更好地理解更复杂数据集中的多维合理模式。反向传播人工神经网络研究是在与建立岭回归模型相同的数据集上,使用相同的描述符进行的,反向传播神经网络模型的结果在留一法检验方面产生了非常有趣的发现。最后,尝试对线性统计方法与非线性技术(如反向传播神经网络)在酚类化合物构效关系研究建模中的相对有效性进行比较研究。