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首页> 外文期刊>Environmental health perspectives. >A novel two-step hierarchical quantitative structure-activity relationship modeling work flow for predicting acute toxicity of chemicals in rodents.
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A novel two-step hierarchical quantitative structure-activity relationship modeling work flow for predicting acute toxicity of chemicals in rodents.

机译:一种新颖的两步分层定量结构-活性关系建模工作流程,用于预测啮齿动物中化学品的急性毒性。

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BACKGROUND: Accurate prediction of in vivo toxicity from in vitro testing is a challenging problem. Large public-private consortia have been formed with the goal of improving chemical safety assessment by the means of high-throughput screening. OBJECTIVE: A wealth of available biological data requires new computational approaches to link chemical structure, in vitro data, and potential adverse health effects. METHODS AND RESULTS: A database containing experimental cytotoxicity values for in vitro half-maximal inhibitory concentration (IC(50)) and in vivo rodent median lethal dose (LD(50)) for more than 300 chemicals was compiled by Zentralstelle zur Erfassung und Bewertung von Ersatz- und Ergaenzungsmethoden zum Tierversuch (ZEBET; National Center for Documentation and Evaluation of Alternative Methods to Animal Experiments). The application of conventional quantitative structure-activity relationship (QSAR) modeling approaches to predict mouse or rat acute LD(50) values from chemical descriptors of ZEBET compounds yielded no statistically significant models. The analysis of these data showed no significant correlation between IC(50) and LD(50). However, a linear IC(50) versus LD(50) correlation could be established for a fraction of compounds. To capitalize on this observation, we developed a novel two-step modeling approach as follows. First, all chemicals are partitioned into two groups based on the relationship between IC(50) and LD(50) values: One group comprises compounds with linear IC(50) versus LD(50) relationships, and another group comprises the remaining compounds. Second, we built conventional binary classification QSAR models to predict the group affiliation based on chemical descriptors only. Third, we developed k-nearest neighbor continuous QSAR models for each subclass to predict LD(50) values from chemical descriptors. All models were extensively validated using special protocols. CONCLUSIONS: The novelty of this modeling approach is that it uses the relationships between in vivo and in vitro data only to inform the initial construction of the hierarchical two-step QSAR models. Models resulting from this approach employ chemical descriptors only for external prediction of acute rodent toxicity.
机译:背景:从体外测试准确预测体内毒性是一个具有挑战性的问题。为了通过高通量筛选提高化学安全性评估的目标,已经形成了大型的公私联合体。目的:大量可用的生物学数据需要新的计算方法来链接化学结构,体外数据和潜在的不良健康影响。方法和结果:Zentralstelle zur Erfassung和Bewertung建立了一个数据库,该数据库包含300多种化学药品的体外半数最大抑制浓度(IC(50))和体内啮齿类动物平均致死剂量(LD(50))的细胞毒性值。 von Ersatz-和Ergaenzungsmethoden zum Tierversuch(ZEBET;国家动物实验替代方法的文献记录和评估中心)。常规定量结构-活性关系(QSAR)建模方法的应用从ZEBET化合物的化学描述符预测小鼠或大鼠急性LD(50)值时,没有产生统计学上的显着模型。对这些数据的分析表明,IC(50)和LD(50)之间没有显着相关性。但是,可以为一部分化合物建立线性IC(50)与LD(50)相关性。为了利用这种观察,我们开发了一种新颖的两步建模方法,如下所示。首先,根据IC(50)和LD(50)值之间的关系将所有化学物质分为两组:一组包含具有线性IC(50)与LD(50)关系的化合物,另一组包含其余化合物。其次,我们建立了常规的二进制分类QSAR模型,仅基于化学描述符来预测族群隶属关系。第三,我们为每个子类开发了k最近邻连续QSAR模型,以根据化学描述符预测LD(50)值。所有模型均使用特殊协议进行了广泛验证。结论:该建模方法的新颖性在于它仅利用体内和体外数据之间的关系来告知分层两步QSAR模型的初始构造。这种方法产生的模型仅将化学描述符用于急性啮齿动物毒性的外部预测。

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