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使用短期试验进行聚类分析以预测化学品的致癌性。

Cluster analysis in predicting the carcinogenicity of chemicals using short-term assays.

作者信息

Pet-Edwards J, Rosenkranz H S, Chankong V, Haimes Y Y

出版信息

Mutat Res. 1985 May;153(3):167-85. doi: 10.1016/0165-1110(85)90012-0.

Abstract

Cluster analysis can be a useful tool for exploratory data analysis to uncover natural groupings in data, and initiate new ideas and hypotheses about such groupings. When applied to short-term assay results, it provides and improves estimates for the sensitivity and specificity of assays, provides indications of association between assays and, in turn, which assays can be substituted for one another in a battery, and allows a data base containing test results on chemicals of unknown carcinogenicity to be linked to a data base for which animal carcinogenicity data are available. Cluster analysis was applied to the Gene-Tox data base (which contains short-term test results on chemicals of both known and unknown carcinogenicity). The results on chemicals of known carcinogenicity were different from those obtained when the entire data base was analyzed. This suggests that the associations (and possibly the sensitivities and specificities) which are based on chemicals of known carcinogenicity may not be representative of the true measures. Cluster analysis applied to the total data base should be useful in improving these estimates. Many of the associations between the assays which were found through the use of cluster analysis could be 'validated' based on previous knowledge of the mechanistic basis of the various tests, but some of the associations were unsuspected. These associations may be a reflection of a non-ideal data base. As additional data becomes available and new clustering techniques for handling non-ideal data bases are developed, results from such analyses could play an increasing role in strengthening prediction schemes which utilize short-term tests results to screen chemicals for carcinogenicity, such as the carcinogenicity and battery selection (CPBS) method (Chankong et al., 1985).

摘要

聚类分析可以作为探索性数据分析的一个有用工具,用于揭示数据中的自然分组,并引发关于此类分组的新想法和假设。当应用于短期检测结果时,它能提供并改进检测灵敏度和特异性的估计值,显示检测之间的关联,进而表明哪些检测在一组检测中可以相互替代,还能将一个包含未知致癌性化学物质检测结果的数据库与一个有动物致癌性数据的数据库相链接。聚类分析被应用于基因毒性数据库(其中包含已知和未知致癌性化学物质的短期检测结果)。已知致癌性化学物质的结果与分析整个数据库时获得的结果不同。这表明基于已知致癌性化学物质得出的关联(以及可能的灵敏度和特异性)可能无法代表真实的测量结果。应用于整个数据库的聚类分析应有助于改进这些估计。通过聚类分析发现的许多检测之间的关联可以基于对各种检测机制基础的先前了解进行“验证”,但有些关联是未曾预料到的。这些关联可能反映了一个不理想的数据库。随着更多数据的获取以及用于处理不理想数据库的新聚类技术的开发,此类分析的结果在加强利用短期检测结果筛选化学物质致癌性的预测方案(如致癌性和检测组合选择(CPBS)方法,Chankong等人,1985年)中可能会发挥越来越大的作用。

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