• DocumentCode
    1196314
  • Title

    Spatial Modeling and Classification of Corneal Shape

  • Author

    Marsolo, Keith ; Twa, Michael ; Bullimore, Mark A. ; Parthasarathy, Srinivasan

  • Author_Institution
    Dept. of Comput. Sci & Eng., Ohio State Univ., Columbus, OH
  • Volume
    11
  • Issue
    2
  • fYear
    2007
  • fDate
    3/1/2007 12:00:00 AM
  • Firstpage
    203
  • Lastpage
    212
  • Abstract
    One of the most promising applications of data mining is in biomedical data used in patient diagnosis. Any method of data analysis intended to support the clinical decision-making process should meet several criteria: it should capture clinically relevant features, be computationally feasible, and provide easily interpretable results. In an initial study, we examined the feasibility of using Zernike polynomials to represent biomedical instrument data in conjunction with a decision tree classifier to distinguish between the diseased and non-diseased eyes. Here, we provide a comprehensive follow-up to that work, examining a second representation, pseudo-Zernike polynomials, to determine whether they provide any increase in classification accuracy. We compare the fidelity of both methods using residual root-mean-square (rms) error and evaluate accuracy using several classifiers: neural networks, C4.5 decision trees, Voting Feature Intervals, and Nainodotumlve Bayes. We also examine the effect of several meta-learning strategies: boosting, bagging, and Random Forests (RFs). We present results comparing accuracy as it relates to dataset and transformation resolution over a larger, more challenging, multi-class dataset. They show that classification accuracy is similar for both data transformations, but differs by classifier. We find that the Zernike polynomials provide better feature representation than the pseudo-Zernikes and that the decision trees yield the best balance of classification accuracy and interpretability
  • Keywords
    Bayes methods; Zernike polynomials; data analysis; data mining; decision making; decision support systems; decision trees; diseases; eye; learning (artificial intelligence); mean square error methods; medical diagnostic computing; medical information systems; neural nets; pattern classification; C4.5 decision trees; Zernike polynomials; bagging learning; biomedical data; biomedical instrument data representation; boosting learning; clinical decision-making process; corneal shape classification; data analysis; data mining; decision tree classifier; diseased eyes; feature representation; fidelity; interpretability; meta-learning strategies; multiclass dataset; naive Bayes; neural networks; nondiseased eyes; patient diagnosis; random forests learning; residual root-mean-square error method; spatial modeling; voting feature intervals; Bioinformatics; Biomedical computing; Classification tree analysis; Data analysis; Data mining; Decision making; Decision trees; Medical diagnosis; Polynomials; Shape; Corneal shape; decision trees; spatial modeling; Algorithms; Artificial Intelligence; Computer Simulation; Cornea; Corneal Topography; Diagnosis, Computer-Assisted; Feasibility Studies; Humans; Models, Biological; Pattern Recognition, Automated; Reproducibility of Results; Sensitivity and Specificity;
  • fLanguage
    English
  • Journal_Title
    Information Technology in Biomedicine, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1089-7771
  • Type

    jour

  • DOI
    10.1109/TITB.2006.879591
  • Filename
    4118190