Istituto di Ricerche Farmacologiche Mario Negri IRCCS, Via La Masa 19, 20156, Milan, Italy.
Mol Inform. 2019 Aug;38(8-9):e1800157. doi: 10.1002/minf.201800157. Epub 2019 Feb 6.
The CORAL software is a tool to build up predictive models for various endpoints by means of Quantitative Structure-Property/Activity Relationships (QSPRs/QSARs). A new criterion for assessment of the predictive potential of QSPR/QSAR models, so-called Index of Ideality of Correlation (IIC) is applied to improve the software. The ability of the IIC to detect models with better predictive potential is checked up with groups of random splits of data into the structured training set and extrenal validation set. To this end, two endpoints are examined (i) Toxicity towards Fathead minnow (Pimephales promelas); and (ii) drug load capasity of samples "micelle-polymer". Applications of the IIC for endpoint represented by traditional Simplified Molecular Input-Line Entry System (SMILES) together with so-called quasi-SMILES has shown the suitability of the IIC be a tool to detect better model.
CORAL 软件是一种通过定量构效关系(QSAR)构建各种终点预测模型的工具。该软件采用了一种新的预测模型评估标准,即所谓的理想相关指数(IIC),以提高预测能力。通过将数据随机分为结构化训练集和外部验证集,检查 IIC 检测具有更好预测能力的模型的能力。为此,研究了两个终点(i)对黑头呆鱼(Pimephales promelas)的毒性;(ii)“胶束-聚合物”样品的药物负载能力。IIC 应用于传统的简化分子输入行输入系统(SMILES)和所谓的准 SMILES 表示的终点,表明 IIC 适合作为检测更好模型的工具。