Literature DB >> 31304857

A Review of Machine Learning Techniques for Keratoconus Detection and Refractive Surgery Screening.

Shawn R Lin1, John G Ladas2, Gavin G Bahadur3, Saba Al-Hashimi3, Roberto Pineda1.   

Abstract

Various machine learning techniques have been developed for keratoconus detection and refractive surgery screening. These techniques utilize inputs from a range of corneal imaging devices and are built with automated decision trees, support vector machines, and various types of neural networks. In general, these techniques demonstrate very good differentiation of normal and keratoconic eyes, as well as good differentiation of normal and form fruste keratoconus. However, it is difficult to directly compare these studies, as keratoconus represents a wide spectrum of disease. More importantly, no public dataset exists for research purposes. Despite these challenges, machine learning in keratoconus detection and refractive surgery screening is a burgeoning field of study, with significant potential for continued advancement as imaging devices and techniques become more sophisticated.

Keywords:  Machine learning; artificial intelligence; corneal ectasia; keratoconus; refractive surgery screening

Mesh:

Year:  2019        PMID: 31304857     DOI: 10.1080/08820538.2019.1620812

Source DB:  PubMed          Journal:  Semin Ophthalmol        ISSN: 0882-0538            Impact factor:   1.975


  6 in total

1.  Use of machine learning to achieve keratoconus detection skills of a corneal expert.

Authors:  Eyal Cohen; Dor Bank; Nir Sorkin; Raja Giryes; David Varssano
Journal:  Int Ophthalmol       Date:  2022-08-11       Impact factor: 2.029

2.  Explainable Machine Learning Approach as a Tool to Understand Factors Used to Select the Refractive Surgery Technique on the Expert Level.

Authors:  Tae Keun Yoo; Ik Hee Ryu; Hannuy Choi; Jin Kuk Kim; In Sik Lee; Jung Sub Kim; Geunyoung Lee; Tyler Hyungtaek Rim
Journal:  Transl Vis Sci Technol       Date:  2020-02-12       Impact factor: 3.283

Review 3.  Machine Learning Algorithms to Detect Subclinical Keratoconus: Systematic Review.

Authors:  Howard Maile; Ji-Peng Olivia Li; Daniel Gore; Marcello Leucci; Padraig Mulholland; Scott Hau; Anita Szabo; Ismail Moghul; Konstantinos Balaskas; Kaoru Fujinami; Pirro Hysi; Alice Davidson; Petra Liskova; Alison Hardcastle; Stephen Tuft; Nikolas Pontikos
Journal:  JMIR Med Inform       Date:  2021-12-13

4.  Artificial Intelligence-Based Diagnostic Model for Detecting Keratoconus Using Videos of Corneal Force Deformation.

Authors:  Zuoping Tan; Xuan Chen; Kangsheng Li; Yan Liu; Huazheng Cao; Jing Li; Vishal Jhanji; Haohan Zou; Fenglian Liu; Riwei Wang; Yan Wang
Journal:  Transl Vis Sci Technol       Date:  2022-09-01       Impact factor: 3.048

5.  EMKLAS: A New Automatic Scoring System for Early and Mild Keratoconus Detection.

Authors:  Jose S Velázquez-Blázquez; José M Bolarín; Francisco Cavas-Martínez; Jorge L Alió
Journal:  Transl Vis Sci Technol       Date:  2020-05-27       Impact factor: 3.283

6.  Unsupervised learning for large-scale corneal topography clustering.

Authors:  Pierre Zéboulon; Guillaume Debellemanière; Damien Gatinel
Journal:  Sci Rep       Date:  2020-10-12       Impact factor: 4.379

  6 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.