Cunningham Albert R, Moss Shanna T, Iype Seena A, Qian Gefei, Qamar Shahid, Cunningham Suzanne L
James Graham Brown Cancer Center, Department of Medicine, University of Louisville, 529 South Jackson Street, Louisville, Kentucky 40202, USA.
Chem Res Toxicol. 2008 Oct;21(10):1970-82. doi: 10.1021/tx8001725. Epub 2008 Aug 30.
Structure-activity relationship (SAR) models are powerful tools to investigate the mechanisms of action of chemical carcinogens and to predict the potential carcinogenicity of untested compounds. We describe here the application of the cat-SAR (categorical-SAR) program to two learning sets of rat mammary carcinogens. One set of developed models was based on a comparison of rat mammary carcinogens to rat noncarcinogens (MC-NC), and the second set compared rat mammary carcinogens to rat nonmammary carcinogens (MC-NMC). On the basis of a leave-one-out validation, the best rat MC-NC model achieved a concordance between experimental and predicted values of 84%, a sensitivity of 79%, and a specificity of 89%. Likewise, the best rat MC-MNC model achieved a concordance of 78%, a sensitivity of 82%, and a specificity of 74%. The MC-NMC model was based on a learning set that contained carcinogens in both the active (i.e., mammary carcinogens) and the inactive (i.e., carcinogens to sites other than the mammary gland) categories and was able to distinguish between these different types of carcinogens (i.e., tissue specific), not simply between carcinogens and noncarcinogens. On the basis of a structural comparison between this model and one for Salmonella mutagens, there was, as expected, a significant relationship between the two phenomena since a high proportion of breast carcinogens are Salmonella mutagens. However, when analyzing the specific structural features derived from the MC-NC learning set, a dichotomy was observed between fragments associated with mammary carcinogenesis and mutagenicity and others that were associated with estrogenic activity. Overall, these findings suggest that the MC-NC and MC-NMC models are able to identify structural attributes that may in part address the question of "why do some carcinogens cause breast cancer", which is a different question than "why do some chemicals cause cancer".
构效关系(SAR)模型是研究化学致癌物作用机制以及预测未测试化合物潜在致癌性的有力工具。我们在此描述了cat-SAR(分类SAR)程序在两组大鼠乳腺致癌物学习集上的应用。一组开发的模型基于大鼠乳腺致癌物与大鼠非致癌物(MC-NC)的比较,第二组则将大鼠乳腺致癌物与大鼠非乳腺致癌物(MC-NMC)进行了比较。基于留一法验证,最佳的大鼠MC-NC模型在实验值和预测值之间的一致性达到了84%,灵敏度为79%,特异性为89%。同样,最佳的大鼠MC-MNC模型的一致性为78%,灵敏度为82%,特异性为74%。MC-NMC模型基于一个学习集,该学习集包含活性(即乳腺致癌物)和非活性(即除乳腺外其他部位的致癌物)两类致癌物,并且能够区分这些不同类型的致癌物(即组织特异性),而不仅仅是区分致癌物和非致癌物。基于该模型与沙门氏菌诱变剂模型的结构比较,正如预期的那样,由于高比例的乳腺癌致癌物是沙门氏菌诱变剂,这两种现象之间存在显著关系。然而,在分析从MC-NC学习集中得出的特定结构特征时,观察到与乳腺致癌作用和诱变性相关的片段与其他与雌激素活性相关的片段之间存在二分法。总体而言,这些发现表明MC-NC和MC-NMC模型能够识别出部分可能解决“为什么某些致癌物会导致乳腺癌”这一问题的结构属性,这与“为什么某些化学物质会导致癌症”是不同的问题。