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Categorical QSAR models for skin sensitization based on local lymph node assay measures and both ground and excited state 4D-fingerprint descriptors

机译:基于局部淋巴结检测方法以及基态和激发态4D指纹描述符的皮肤敏化的QSAR分类模型

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In previous studies we have developed categorical QSAR models for predicting skin-sensitization potency based on 4D-fingerprint (4D-FP) descriptors and in vivo murine local lymph node assay (LLNA) measures. Only 4D-FP derived from the ground state (GMAX) structures of the molecules were used to build the QSAR models. In this study we have generated 4D-FP descriptors from the first excited state (EMAX) structures of the molecules. The GMAX, EMAX and the combined ground and excited state 4D-FP descriptors (GEMAX) were employed in building categorical QSAR models. Logistic regression (LR) and partial least square coupled logistic regression (PLS-CLR), found to be effective model building for the LLNA skin-sensitization measures in our previous studies, were used again in this study. This also permitted comparison of the prior ground state models to those involving first excited state 4D-FP descriptors. Three types of categorical QSAR models were constructed for each of the GMAX, EMAX and GEMAX datasets: a binary model (2-state), an ordinal model (3-state) and a binary-binary model (two-2-state). No significant differences exist among the LR 2-state model constructed for each of the three datasets. However, the PLS-CLR 3-state and 2-state models based on the EMAX and GEMAX datasets have higher predictivity than those constructed using only the GMAX dataset. These EMAX and GMAX categorical models are also more significant and predictive than corresponding models built in our previous QSAR studies of LLNA skin-sensitization measures.
机译:在以前的研究中,我们已经基于4D指纹(4D-FP)描述符和体内鼠局部淋巴结测定(LLNA)措施开发了用于预测皮肤敏化力的分类QSAR模型。仅使用衍生自分子基态(GMAX)结构的4D-FP来构建QSAR模型。在这项研究中,我们从分子的第一激发态(EMAX)结构生成了4D-FP描述子。 GMAX,EMAX以及结合的基态和激发态4D-FP描述子(GEMAX)用于建立分类QSAR模型。在我们先前的研究中,发现逻辑回归(LR)和偏最小二乘耦合逻辑回归(PLS-CLR)被认为是建立LLNA皮肤致敏性措施的有效模型,在本研究中再次使用。这也允许将先前的基态模型与涉及第一激发态4D-FP描述符的那些进行比较。针对GMAX,EMAX和GEMAX数据集分别构建了三种类型的分类QSAR模型:一个二进制模型(2-状态),一个序数模型(3-状态)和一个二进制-二进制模型(两个2状态)。为这三个数据集构建的LR 2状态模型之间没有显着差异。但是,基于EMAX和GEMAX数据集的PLS-CLR 3态和2态模型比仅使用GMAX数据集构建的模型具有更高的可预测性。这些EMAX和GMAX分类模型也比我们之前的LLNA皮肤敏化措施QSAR研究中建立的相应模型更有意义和更具预测性。

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