Application of Bayesian classifier in diagnosis of lung cancer by multiple autoantibody biomarkers
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Supported by Mountain Climbing Project of Shanghai Municipality (06DZ19503).

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    Abstract:

    Objective To establish a Bayesian classifier-based lung cancer prediction model, and to discuss its predictive efficiency. Methods Using the reaction data of previously screened 6 phage peptide clones with the sera of 90 lung cancer patients and 90 healthy controls, we established a Bayesian classifier-based lung cancer prediction model, with the data analyzed by BinReg 2.0 software. The predictive efficiencies of different models (Bayesian classifier-based prediction model,Logistic regression, principal component regression, and support vector machine) were evaluated by receiver operating characteristic (ROC) curves. Results The sensitivity and specificity of Bayesian classifier-based lung cancer prediction model were 92.00% and 96.00%, respectively. And the model satisfactorily distinguished lung cancer patients and healthy controls. Conclusion Our Bayesian classifier-based lung cancer prediction model can accurately predict the risk of lung cancer.

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History
  • Received:February 27,2013
  • Revised:July 19,2013
  • Adopted:November 18,2013
  • Online: December 23,2013
  • Published:
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