Application of high-dimensional feature selection: evaluation for genomic prediction in man

نویسندگان

  • M. L. Bermingham
  • R. Pong-Wong
  • A. Spiliopoulou
  • C. Hayward
  • I. Rudan
  • H. Campbell
  • A. F. Wright
  • J. F. Wilson
  • F. Agakov
  • P. Navarro
  • C. S. Haley
چکیده

In this study, we investigated the effect of five feature selection approaches on the performance of a mixed model (G-BLUP) and a Bayesian (Bayes C) prediction method. We predicted height, high density lipoprotein cholesterol (HDL) and body mass index (BMI) within 2,186 Croatian and into 810 UK individuals using genome-wide SNP data. Using all SNP information Bayes C and G-BLUP had similar predictive performance across all traits within the Croatian data, and for the highly polygenic traits height and BMI when predicting into the UK data. Bayes C outperformed G-BLUP in the prediction of HDL, which is influenced by loci of moderate size, in the UK data. Supervised feature selection of a SNP subset in the G-BLUP framework provided a flexible, generalisable and computationally efficient alternative to Bayes C; but careful evaluation of predictive performance is required when supervised feature selection has been used.

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عنوان ژورنال:

دوره 5  شماره 

صفحات  -

تاریخ انتشار 2015