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Effect of Size and Heterogeneity of Samples on Biomarker Discovery: Synthetic and Real Data Assessment

Author

Listed:
  • Barbara Di Camillo
  • Tiziana Sanavia
  • Matteo Martini
  • Giuseppe Jurman
  • Francesco Sambo
  • Annalisa Barla
  • Margherita Squillario
  • Cesare Furlanello
  • Gianna Toffolo
  • Claudio Cobelli

Abstract

Motivation: The identification of robust lists of molecular biomarkers related to a disease is a fundamental step for early diagnosis and treatment. However, methodologies for the discovery of biomarkers using microarray data often provide results with limited overlap. These differences are imputable to 1) dataset size (few subjects with respect to the number of features); 2) heterogeneity of the disease; 3) heterogeneity of experimental protocols and computational pipelines employed in the analysis. In this paper, we focus on the first two issues and assess, both on simulated (through an in silico regulation network model) and real clinical datasets, the consistency of candidate biomarkers provided by a number of different methods. Methods: We extensively simulated the effect of heterogeneity characteristic of complex diseases on different sets of microarray data. Heterogeneity was reproduced by simulating both intrinsic variability of the population and the alteration of regulatory mechanisms. Population variability was simulated by modeling evolution of a pool of subjects; then, a subset of them underwent alterations in regulatory mechanisms so as to mimic the disease state. Results: The simulated data allowed us to outline advantages and drawbacks of different methods across multiple studies and varying number of samples and to evaluate precision of feature selection on a benchmark with known biomarkers. Although comparable classification accuracy was reached by different methods, the use of external cross-validation loops is helpful in finding features with a higher degree of precision and stability. Application to real data confirmed these results.

Suggested Citation

  • Barbara Di Camillo & Tiziana Sanavia & Matteo Martini & Giuseppe Jurman & Francesco Sambo & Annalisa Barla & Margherita Squillario & Cesare Furlanello & Gianna Toffolo & Claudio Cobelli, 2012. "Effect of Size and Heterogeneity of Samples on Biomarker Discovery: Synthetic and Real Data Assessment," PLOS ONE, Public Library of Science, vol. 7(3), pages 1-8, March.
  • Handle: RePEc:plo:pone00:0032200
    DOI: 10.1371/journal.pone.0032200
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    References listed on IDEAS

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    1. Zucknick Manuela & Richardson Sylvia & Stronach Euan A, 2008. "Comparing the Characteristics of Gene Expression Profiles Derived by Univariate and Multivariate Classification Methods," Statistical Applications in Genetics and Molecular Biology, De Gruyter, vol. 7(1), pages 1-34, February.
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    Cited by:

    1. Giuseppe Jurman & Samantha Riccadonna & Roberto Visintainer & Cesare Furlanello, 2012. "Algebraic Comparison of Partial Lists in Bioinformatics," PLOS ONE, Public Library of Science, vol. 7(5), pages 1-20, May.

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