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Consensus versus Individual QSARs in Classification: Comparison on a Large-Scale Case Study

机译:与分类中的个人QSARS共识:大规模案例研究比较

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Consensus strategies have been widely applied in many different scientific fields, based on the assumption that the fusion of several sources of information increases the outcome reliability. Despite the widespread application of consensus approaches, their advantages in quantitative structure-activity relationship (QSAR) modeling have not been thoroughly evaluated, mainly due to the lack of appropriate large-scale data sets. In this study, we evaluated the advantages and drawbacks of consensus approaches compared to single classification QSAR models. To this end, we used a data set of three properties (androgen receptor binding, agonism, and antagonism) for approximately 4000 molecules with predictions performed by more than 20 QSAR models, made available in a large-scale collaborative project. The individual QSAR models were compared with two consensus approaches, majority voting and the Bayes consensus with discrete probability distributions, in both protective and nonprotective forms. Consensus strategies proved to be more accurate and to better cover the analyzed chemical space than individual QSARs on average, thus motivating their widespread application for property prediction. Scripts and data to reproduce the results of this study are available for download.
机译:基于多种信息源的融合增加了结果可靠性,共识策略已广泛应用于许多不同的科学领域。尽管存在共识方法的广泛应用,但它们在定量结构 - 活动关系(QSAR)建模方面尚未彻底评估,主要是由于缺乏适当的大规模数据集。在本研究中,与单分类QSAR模型相比,我们评估了共识方法的优缺点。为此,我们使用了三种性质(雄激素受体结合,激动症,激动瘤和拮抗作用)的数据集,其具有超过20个QSAR模型进行的预测,在大规模的协作项目中提供。将个体QSAR模型与两种共识方法,大多数投票和贝叶斯共识进行比较,以防护和非保护形式。被证明的共识策略被证明更准确,并且更好地覆盖分析的化学空间平均值,从而激励其广泛应用于性质预测。重现本研究结果的脚本和数据可用于下载。

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