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Bayesian mixture models for complex high dimensional count data in phage display experiments

Author

Listed:
  • Yuan Ji
  • Guosheng Yin
  • Kam‐Wah Tsui
  • Mikhail G. Kolonin
  • Jessica Sun
  • Wadih Arap
  • Renata Pasqualini
  • Kim‐Anh Do

Abstract

Summary. Phage display is a biological process that is used to screen random peptide libraries for ligands that bind to a target of interest with high affinity. On the basis of a count data set from an innovative multistage phage display experiment, we propose a class of Bayesian mixture models to cluster peptide counts into three groups that exhibit different display patterns across stages. Among the three groups, the investigators are particularly interested in that with an ascending display pattern in the counts, which implies that the peptides are likely to bind to the target with strong affinity. We apply a Bayesian false discovery rate approach to identify the peptides with the strongest affinity within the group. A list of peptides is obtained, among which important ones with meaningful functions are further validated by biologists. To examine the performance of the Bayesian model, we conduct a simulation study and obtain desirable results.

Suggested Citation

  • Yuan Ji & Guosheng Yin & Kam‐Wah Tsui & Mikhail G. Kolonin & Jessica Sun & Wadih Arap & Renata Pasqualini & Kim‐Anh Do, 2007. "Bayesian mixture models for complex high dimensional count data in phage display experiments," Journal of the Royal Statistical Society Series C, Royal Statistical Society, vol. 56(2), pages 139-152, March.
  • Handle: RePEc:bla:jorssc:v:56:y:2007:i:2:p:139-152
    DOI: 10.1111/j.1467-9876.2007.00570.x
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    Cited by:

    1. Luis G. León-Novelo & Peter Müller & Wadih Arap & Mikhail Kolonin & Jessica Sun & Renata Pasqualini & Kim-Anh Do, 2013. "Semiparametric Bayesian Inference for Phage Display Data," Biometrics, The International Biometric Society, vol. 69(1), pages 174-183, March.

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