Literature DB >> 7775110

Neural network classification of corneal topography. Preliminary demonstration.

N Maeda1, S D Klyce, M K Smolek.   

Abstract

PURPOSE: Videokeratography is a powerful tool for the diagnosis of corneal shape abnormalities. However, interpretation of the topographic map is sometimes difficult, especially when pathologies with similar topographic patterns are suspected. The neural networks model, an artificial intelligence approach, was applied for automated pattern interpretation in corneal topography, and its usefulness was assessed.
METHODS: One hundred eighty-three topographic maps were selected and classified by human experts into seven categories: normal, with-the-rule astigmatism, keratoconus (mild, moderate, advanced), postphotorefractive keratectomy, and postkeratoplasty. The maps were divided into a training set (108 maps) and a test set (75 maps). For each map, 11 topography-characterizing indices calculated from the data provided by the TMS-1 videokeratoscope, plus the corresponding diagnosis category, were used to train a neural network.
RESULTS: The correct classification was achieved by a trained neural network for all 108 maps in the training set. In the test set, the neural network correctly classified 60 of 75 maps (80%). For every category, accuracy and specificity were greater than 90%, whereas sensitivity ranged from 44% to 100%.
CONCLUSIONS: With further testing and refinement, the neural networks paradigm for computer-assisted interpretation or objective classification of videokeratography may become a useful tool to aid the clinician in the diagnosis of corneal topographic abnormalities.

Entities:  

Mesh:

Year:  1995        PMID: 7775110

Source DB:  PubMed          Journal:  Invest Ophthalmol Vis Sci        ISSN: 0146-0404            Impact factor:   4.799


  24 in total

1.  Keratoconus: an analysis of corneal asymmetry.

Authors:  D M Burns; F M Johnston; D G Frazer; C Patterson; A J Jackson
Journal:  Br J Ophthalmol       Date:  2004-10       Impact factor: 4.638

2.  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

3.  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

4.  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

5.  CLMI: the cone location and magnitude index.

Authors:  Ashraf M Mahmoud; Cynthia J Roberts; Richard G Lembach; Michael D Twa; Edward E Herderick; Timothy T McMahon
Journal:  Cornea       Date:  2008-05       Impact factor: 2.651

6.  Corneal elevation topography: best fit sphere, elevation distance, asphericity, toricity, and clinical implications.

Authors:  Damien Gatinel; Jacques Malet; Thanh Hoang-Xuan; Dimitri T Azar
Journal:  Cornea       Date:  2011-05       Impact factor: 2.651

7.  Characterization of cone size and centre in keratoconic corneas.

Authors:  Ashkan Eliasy; Ahmed Abass; Bernardo T Lopes; Riccardo Vinciguerra; Haixia Zhang; Paolo Vinciguerra; Renato Ambrósio; Cynthia J Roberts; Ahmed Elsheikh
Journal:  J R Soc Interface       Date:  2020-08-05       Impact factor: 4.118

8.  Screening Candidates for Refractive Surgery With Corneal Tomographic-Based Deep Learning.

Authors:  Yi Xie; Lanqin Zhao; Xiaonan Yang; Xiaohang Wu; Yahan Yang; Xiaoman Huang; Fang Liu; Jiping Xu; Limian Lin; Haiqin Lin; Qiting Feng; Haotian Lin; Quan Liu
Journal:  JAMA Ophthalmol       Date:  2020-05-01       Impact factor: 7.389

9.  [Keratoconus detection and classification from parameters of the Corvis®ST : A study based on algorithms of machine learning].

Authors:  Achim Langenbucher; Larissa Häfner; Timo Eppig; Berthold Seitz; Nóra Szentmáry; Elias Flockerzi
Journal:  Ophthalmologe       Date:  2020-09-24       Impact factor: 1.059

10.  Keratoconus detection of changes using deep learning of colour-coded maps.

Authors:  Xu Chen; Jiaxin Zhao; Katja C Iselin; Davide Borroni; Davide Romano; Akilesh Gokul; Charles N J McGhee; Yitian Zhao; Mohammad-Reza Sedaghat; Hamed Momeni-Moghaddam; Mohammed Ziaei; Stephen Kaye; Vito Romano; Yalin Zheng
Journal:  BMJ Open Ophthalmol       Date:  2021-07-13
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