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Identification of informative features for predicting proinflammatory potentials of engine exhausts

机译:确定信息特征以预测发动机排气的促炎潜力

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Background The immunotoxicity of engine exhausts is of high concern to human health due to the increasing prevalence of immune-related diseases. However, the evaluation of immunotoxicity of engine exhausts is currently based on expensive and time-consuming experiments. It is desirable to develop efficient methods for immunotoxicity assessment. Methods To accelerate the development of safe alternative fuels, this study proposed a computational method for identifying informative features for predicting proinflammatory potentials of engine exhausts. A principal component regression (PCR) algorithm was applied to develop prediction models. The informative features were identified by a sequential backward feature elimination (SBFE) algorithm. Results A total of 19 informative chemical and biological features were successfully identified by SBFE algorithm. The informative features were utilized to develop a computational method named FS-CBM for predicting proinflammatory potentials of engine exhausts. FS-CBM model achieved a high performance with correlation coefficient values of 0.997 and 0.943 obtained from training and independent test sets, respectively. Conclusions The FS-CBM model was developed for predicting proinflammatory potentials of engine exhausts with a large improvement on prediction performance compared with our previous CBM model. The proposed method could be further applied to construct models for bioactivities of mixtures.
机译:背景技术由于免疫相关疾病的流行,发动机排气的免疫毒性与人类健康密切相关。但是,发动机排气的免疫毒性评估目前基于昂贵且费时的实验。期望开发用于免疫毒性评估的有效方法。方法为了加快安全替代燃料的开发,本研究提出了一种计算方法,该方法可用于识别信息特征,以预测发动机排气的促炎潜力。应用主成分回归(PCR)算法开发预测模型。信息特征是通过顺序向后特征消除(SBFE)算法识别的。结果通过SBFE算法成功鉴定出19种信息学和生物学特征。该信息功能被用于开发一种名为FS-CBM的计算方法,用于预测发动机排气的促炎潜力。 FS-CBM模型具有较高的性能,相关系数值分别来自训练集和独立测试集,分别为0.997和0.943。结论FS-CBM模型是用于预测发动机排气的促炎潜力的,与我们以前的CBM模型相比,其预测性能有很大的提高。所提出的方法可以进一步应用于构建混合物生物活性的模型。

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