Literature DB >> 27055215

Evaluation of a Machine-Learning Classifier for Keratoconus Detection Based on Scheimpflug Tomography.

Irene Ruiz Hidalgo1, Pablo Rodriguez, Jos J Rozema, Sorcha Ní Dhubhghaill, Nadia Zakaria, Marie-José Tassignon, Carina Koppen.   

Abstract

PURPOSE: To evaluate the performance of a support vector machine algorithm that automatically and objectively identifies corneal patterns based on a combination of 22 parameters obtained from Pentacam measurements and to compare this method with other known keratoconus (KC) classification methods.
METHODS: Pentacam data from 860 eyes were included in the study and divided into 5 groups: 454 KC, 67 forme fruste (FF), 28 astigmatic, 117 after refractive surgery (PR), and 194 normal eyes (N). Twenty-two parameters were used for classification using a support vector machine algorithm developed in Weka, a machine-learning computer software. The cross-validation accuracy for 3 different classification tasks (KC vs. N, FF vs. N and all 5 groups) was calculated and compared with other known classification methods.
RESULTS: The accuracy achieved in the KC versus N discrimination task was 98.9%, with 99.1% sensitivity and 98.5% specificity for KC detection. The accuracy in the FF versus N task was 93.1%, with 79.1% sensitivity and 97.9% specificity for the FF discrimination. Finally, for the 5-groups classification, the accuracy was 88.8%, with a weighted average sensitivity of 89.0% and specificity of 95.2%.
CONCLUSIONS: Despite using the strictest definition for FF KC, the present study obtained comparable or better results than the single-parameter methods and indices reported in the literature. In some cases, direct comparisons with the literature were not possible because of differences in the compositions and definitions of the study groups, especially the FF KC.

Entities:  

Mesh:

Year:  2016        PMID: 27055215     DOI: 10.1097/ICO.0000000000000834

Source DB:  PubMed          Journal:  Cornea        ISSN: 0277-3740            Impact factor:   2.651


  20 in total

1.  ABCD progression display for keratoconus progression: a sensitivity-specificity study.

Authors:  Asaf Achiron; Roy Yavnieli; Alon Tiosano; Uri Elbaz; Yoav Nahum; Eitan Livny; Irit Bahar
Journal:  Eye (Lond)       Date:  2022-07-22       Impact factor: 4.456

2.  Machine learning helps improve diagnostic ability of subclinical keratoconus using Scheimpflug and OCT imaging modalities.

Authors:  Ce Shi; Mengyi Wang; Tiantian Zhu; Ying Zhang; Yufeng Ye; Jun Jiang; Sisi Chen; Fan Lu; Meixiao Shen
Journal:  Eye Vis (Lond)       Date:  2020-09-10

3.  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

4.  Keratoconus detection using deep learning of colour-coded maps with anterior segment optical coherence tomography: a diagnostic accuracy study.

Authors:  Kazutaka Kamiya; Yuji Ayatsuka; Yudai Kato; Fusako Fujimura; Masahide Takahashi; Nobuyuki Shoji; Yosai Mori; Kazunori Miyata
Journal:  BMJ Open       Date:  2019-09-27       Impact factor: 2.692

Review 5.  Current status and future trends of clinical diagnoses via image-based deep learning.

Authors:  Jie Xu; Kanmin Xue; Kang Zhang
Journal:  Theranostics       Date:  2019-10-12       Impact factor: 11.556

6.  Keratoconus Screening Based on Deep Learning Approach of Corneal Topography.

Authors:  Bo-I Kuo; Wen-Yi Chang; Tai-Shan Liao; Fang-Yu Liu; Hsin-Yu Liu; Hsiao-Sang Chu; Wei-Li Chen; Fung-Rong Hu; Jia-Yush Yen; I-Jong Wang
Journal:  Transl Vis Sci Technol       Date:  2020-09-25       Impact factor: 3.283

7.  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

Review 8.  Application of artificial intelligence in anterior segment ophthalmic diseases: diversity and standardization.

Authors:  Xiaohang Wu; Lixue Liu; Lanqin Zhao; Chong Guo; Ruiyang Li; Ting Wang; Xiaonan Yang; Peichen Xie; Yizhi Liu; Haotian Lin
Journal:  Ann Transl Med       Date:  2020-06

9.  Keratoconus Detection Based on a Single Scheimpflug Image.

Authors:  Alejandra Consejo; Jędrzej Solarski; Karol Karnowski; Jos J Rozema; Maciej Wojtkowski; D Robert Iskander
Journal:  Transl Vis Sci Technol       Date:  2020-06-26       Impact factor: 3.283

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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