Literature DB >> 15711463

Preliminary results of neural networks and zernike polynomials for classification of videokeratography maps.

Luis Alberto Carvalho1.   

Abstract

PURPOSE: Our main goal in this work was to develop an artificial neural network (NN) that could classify specific types of corneal shapes using Zernike coefficients as input. Other authors have implemented successful NN systems in the past and have demonstrated their efficiency using different parameters. Our claim is that, given the increasing popularity of Zernike polynomials among the eye care community, this may be an interesting choice to add complementing value and precision to existing methods. By using a simple and well-documented corneal surface representation scheme, which relies on corneal elevation information, one can generate simple NN input parameters that are independent of curvature definition and that are also efficient.
METHODS: We have used the Matlab Neural Network Toolbox (MathWorks, Natick, MA) to implement a three-layer feed-forward NN with 15 inputs and 5 outputs. A database from an EyeSys System 2000 (EyeSys Vision, Houston, TX) videokeratograph installed at the Escola Paulista de Medicina-Sao Paulo was used. This database contained an unknown number of corneal types. From this database, two specialists selected 80 corneas that could be clearly classified into five distinct categories: (1) normal, (2) with-the-rule astigmatism, (3) against-the-rule astigmatism, (4) keratoconus, and (5) post-laser-assisted in situ keratomileusis. The corneal height (SAG) information of the 80 data files was fit with the first 15 Vision Science and it Applications (VSIA) standard Zernike coefficients, which were individually used to feed the 15 neurons of the input layer. The five output neurons were associated with the five typical corneal shapes. A group of 40 cases was randomly selected from the larger group of 80 corneas and used as the training set.
RESULTS: The NN responses were statistically analyzed in terms of sensitivity [true positive/(true positive + false negative)], specificity [true negative/(true negative + false positive)], and precision [(true positive + true negative)/total number of cases]. The mean values for these parameters were, respectively, 78.75, 97.81, and 94%.
CONCLUSION: Although we have used a relatively small training and testing set, results presented here should be considered promising. They are certainly an indication of the potential of Zernike polynomials as reliable parameters, at least in the cases presented here, as input data for artificial intelligence automation of the diagnosis process of videokeratography examinations. This technique should facilitate the implementation and add value to the classification methods already available. We also discuss briefly certain special properties of Zernike polynomials that are what we think make them suitable as NN inputs for this type of application.

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Mesh:

Year:  2005        PMID: 15711463     DOI: 10.1097/01.opx.0000153193.41554.a1

Source DB:  PubMed          Journal:  Optom Vis Sci        ISSN: 1040-5488            Impact factor:   1.973


  6 in total

1.  Automated decision tree classification of corneal shape.

Authors:  Michael D Twa; Srinivasan Parthasarathy; Cynthia Roberts; Ashraf M Mahmoud; Thomas W Raasch; Mark A Bullimore
Journal:  Optom Vis Sci       Date:  2005-12       Impact factor: 1.973

2.  Automated keratoconus detection using height data of anterior and posterior corneal surfaces.

Authors:  Kenichiro Bessho; Naoyuki Maeda; Teruhito Kuroda; Takashi Fujikado; Yasuo Tano; Tetsuro Oshika
Journal:  Jpn J Ophthalmol       Date:  2006 Sep-Oct       Impact factor: 2.447

3.  Four discriminant models for detecting keratoconus pattern using Zernike coefficients of corneal aberrations.

Authors:  Makoto Saika; Naoyuki Maeda; Yoko Hirohara; Toshifumi Mihashi; Takashi Fujikado; Kohji Nishida
Journal:  Jpn J Ophthalmol       Date:  2013-08-27       Impact factor: 2.447

4.  Evaluation of machine learning classifiers in keratoconus detection from orbscan II examinations.

Authors:  Murilo Barreto Souza; Fabricio Witzel Medeiros; Danilo Barreto Souza; Renato Garcia; Milton Ruiz Alves
Journal:  Clinics (Sao Paulo)       Date:  2010       Impact factor: 2.365

5.  Keratoconus severity identification using unsupervised machine learning.

Authors:  Siamak Yousefi; Ebrahim Yousefi; Hidenori Takahashi; Takahiko Hayashi; Hironobu Tampo; Satoru Inoda; Yusuke Arai; Penny Asbell
Journal:  PLoS One       Date:  2018-11-06       Impact factor: 3.240

6.  Evaluating the Performance of Various Machine Learning Algorithms to Detect Subclinical Keratoconus.

Authors:  Ke Cao; Karin Verspoor; Srujana Sahebjada; Paul N Baird
Journal:  Transl Vis Sci Technol       Date:  2020-04-24       Impact factor: 3.283

  6 in total

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