Real External Predictivity of QSAR Models: How To Evaluate It? Comparison of Different Validation Criteria and Proposal of Using the Concordance Correlation Coefficient

一致相关系数 数量结构-活动关系 一致性 相关系数 度量(数据仓库) 相关性 数据挖掘 皮尔逊积矩相关系数 计算机科学 统计 数学 机器学习 医学 几何学 内科学
作者
Nicola Chirico,Paola Gramatica
出处
期刊:Journal of Chemical Information and Modeling [American Chemical Society]
卷期号:51 (9): 2320-2335 被引量:685
标识
DOI:10.1021/ci200211n
摘要

The main utility of QSAR models is their ability to predict activities/properties for new chemicals, and this external prediction ability is evaluated by means of various validation criteria. As a measure for such evaluation the OECD guidelines have proposed the predictive squared correlation coefficient Q2F1 (Shi et al.). However, other validation criteria have been proposed by other authors: the Golbraikh-Tropsha method, r2m (Roy), Q2F2 (Schüürmann et al.), Q2F3 (Consonni et al.). In QSAR studies these measures are usually in accordance, though this is not always the case, thus doubts can arise when contradictory results are obtained. It is likely that none of the aforementioned criteria is the best in every situation, so a comparative study using simulated data sets is proposed here, using threshold values suggested by the proponents or those widely used in QSAR modeling. In addition, a different and simple external validation measure, the concordance correlation coefficient (CCC), is proposed and compared with other criteria. Huge data sets were used to study the general behavior of validation measures, and the concordance correlation coefficient was shown to be the most restrictive. On using simulated data sets of a more realistic size, it was found that CCC was broadly in agreement, about 96% of the time, with other validation measures in accepting models as predictive, and in almost all the examples it was the most precautionary. The proposed concordance correlation coefficient also works well on real data sets, where it seems to be more stable, and helps in making decisions when the validation measures are in conflict. Since it is conceptually simple, and given its stability and restrictiveness, we propose the concordance correlation coefficient as a complementary, or alternative, more prudent measure of a QSAR model to be externally predictive.
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