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Probabilistic modeling of systematic errors in two-hybrid experiments.

Publication ,  Conference
Sontag, D; Singh, R; Berger, B
Published in: Pac Symp Biocomput
2007

UNLABELLED: We describe a novel probabilistic approach to estimating errors in two-hybrid (2H) experiments. Such experiments are frequently used to elucidate protein-protein interaction networks in a high-throughput fashion; however, a significant challenge with these is their relatively high error rate, specifically, a high false-positive rate. We describe a comprehensive error model for 2H data, accounting for both random and systematic errors. The latter arise from limitations of the 2H experimental protocol: in theory, the reporting mechanism of a 2H experiment should be activated if and only if the two proteins being tested truly interact; in practice, even in the absence of a true interaction, it may be activated by some proteins - either by themselves or through promiscuous interaction with other proteins. We describe a probabilistic relational model that explicitly models the above phenomenon and use Markov Chain Monte Carlo (MCMC) algorithms to compute both the probability of an observed 2H interaction being true as well as the probability of individual proteins being self-activating/promiscuous. This is the first approach that explicitly models systematic errors in protein-protein interaction data; in contrast, previous work on this topic has modeled errors as being independent and random. By explicitly modeling the sources of noise in 2H systems, we find that we are better able to make use of the available experimental data. In comparison with Bader et al.'s method for estimating confidence in 2H predicted interactions, the proposed method performed 5-10% better overall, and in particular regimes improved prediction accuracy by as much as 76%. SUPPLEMENTARY INFORMATION: http://theory.csail.mit.edu/probmod2H

Duke Scholars

Published In

Pac Symp Biocomput

ISSN

2335-6928

Publication Date

2007

Start / End Page

445 / 457

Location

United States

Related Subject Headings

  • Two-Hybrid System Techniques
  • Protein Interaction Mapping
  • Monte Carlo Method
  • Models, Statistical
  • Markov Chains
  • Humans
  • Computational Biology
  • Animals
  • Algorithms
 

Citation

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Sontag, D., Singh, R., & Berger, B. (2007). Probabilistic modeling of systematic errors in two-hybrid experiments. In Pac Symp Biocomput (pp. 445–457). United States.
Sontag, David, Rohit Singh, and Bonnie Berger. “Probabilistic modeling of systematic errors in two-hybrid experiments.” In Pac Symp Biocomput, 445–57, 2007.
Sontag D, Singh R, Berger B. Probabilistic modeling of systematic errors in two-hybrid experiments. In: Pac Symp Biocomput. 2007. p. 445–57.
Sontag, David, et al. “Probabilistic modeling of systematic errors in two-hybrid experiments.Pac Symp Biocomput, 2007, pp. 445–57.
Sontag D, Singh R, Berger B. Probabilistic modeling of systematic errors in two-hybrid experiments. Pac Symp Biocomput. 2007. p. 445–457.

Published In

Pac Symp Biocomput

ISSN

2335-6928

Publication Date

2007

Start / End Page

445 / 457

Location

United States

Related Subject Headings

  • Two-Hybrid System Techniques
  • Protein Interaction Mapping
  • Monte Carlo Method
  • Models, Statistical
  • Markov Chains
  • Humans
  • Computational Biology
  • Animals
  • Algorithms