BioMedical Engineering OnLine (Aug 2017)

Identification of informative features for predicting proinflammatory potentials of engine exhausts

  • Chia-Chi Wang,
  • Ying-Chi Lin,
  • Yuan-Chung Lin,
  • Syu-Ruei Jhang,
  • Chun-Wei Tung

DOI
https://doi.org/10.1186/s12938-017-0355-6
Journal volume & issue
Vol. 16, no. S1
pp. 1 – 10

Abstract

Read online

Abstract 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.