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首页> 外文期刊>Biochemistry (Moscow). Supplement, Series B. Biomedical chemistry >Calculations of acute intravenous toxicity in mice based on local regression models in superoverlapping clusters (LRMSC)
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Calculations of acute intravenous toxicity in mice based on local regression models in superoverlapping clusters (LRMSC)

机译:基于超重叠簇(LRMSC)局部回归模型的小鼠急性静脉毒性计算

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摘要

Modeling of quantitative structure - activity relationships (QSAR) between physicochemical descriptors of organic chemicals and their acute intravenous toxicity in mice have been presented. This approach includes three steps: structure-similarity chemicals selection for every compound-of-interest (clusterization); construction of quantitative structure - toxicity models for every cluster (without including of compounds-of-interest); application of the obtained QSAR equations for chemical-of-interest toxicity estimation. This approach has been applied for calculations of acute intravenous toxicity for 10241 organic chemicals. For 7759 compounds possessing structural neighbors with the Tanimoto index (Tc) of 0.30 and above the standard deviation of the calculated vs. experimental log(1/LD _(50)) values was 0.51 at the estimation of the experimental determination error of ±0.50 (log(1/LD _(50)) value). Calculations performed for remaining compounds (24%) were not as good as those made for the former group, possibly due to lack of reasonable number of structurally related analogues. It's suggested that this QSAR approach can be useful for prediction of biological activity and toxicity of large sets of chemical compounds.
机译:已经提出了有机化学物质的物理化学描述子与其在小鼠中的急性静脉毒性之间的定量构效关系(QSAR)的模型。该方法包括三个步骤:为每种目标化合物选择结构相似的化学品(聚类);建立定量结构-每个簇的毒性模型(不包括目标化合物); QSAR方程在目标化学毒性估计中的应用。该方法已用于计算10241种有机化学品的急性静脉毒性。对于具有结构邻域的7759种化合物,其Tanimoto指数(Tc)为0.30且在实验确定误差估计为±0.50的情况下,所计算的vs.实验log(1 / LD _(50))的标准偏差为0.51 (log(1 / LD _(50))值)。其余化合物(24%)的计算结果不如前一组计算,这可能是由于缺乏合理数量的结构相关类似物。建议这种QSAR方法可用于预测大量化合物的生物活性和毒性。

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