Literature DB >> 28368992

Validation of an Objective Keratoconus Detection System Implemented in a Scheimpflug Tomographer and Comparison With Other Methods.

Irene Ruiz Hidalgo1, Jos J Rozema, Alain Saad, Damien Gatinel, Pablo Rodriguez, Nadia Zakaria, Carina Koppen.   

Abstract

PURPOSE: To validate a recently developed program for automatic and objective keratoconus detection (Keratoconus Assistant [KA]) by applying it to a new population and comparing it with other methods described in the literature.
METHODS: KA uses machine learning and 25 Pentacam-derived parameters to classify eyes into subgroups, such as keratoconus, keratoconus suspect, postrefractive surgery, and normal eyes. To validate this program, it was applied to 131 eyes diagnosed separately by experienced corneal specialists from 2 different centers (Fondation Rothschild, Paris, and Antwerp University Hospital [UZA]). The agreement of the KA classification with 7 other indices from the literature was assessed using interrater reliability and confusion matrices. The agreement of the 2 clinical classifications was also assessed.
RESULTS: For keratoconus, KA agreed in 92.6% of cases with the clinical diagnosis by UZA and in 98.0% of cases with the diagnosis by Rothschild. In keratoconus suspect and forme fruste detection, KA agreed in 65.2% (UZA) and 100% (Rothschild) of cases with the clinical assessments. This corresponds with a moderate agreement with a clinical assessment (κ = 0.594 and κ = 0.563 for Rothschild and UZA, respectively). The agreement with the other classification methods ranged from moderate (κ = 0.432; Score) to low (κ = 0.158; KISA%). Both clinical assessments agreed substantially (κ = 0.759) with each other.
CONCLUSIONS: KA is effective at detecting early keratoconus and agrees with trained clinical judgment. As keratoconus detection depends on the method used, we recommend using multiple methods side by side.

Mesh:

Year:  2017        PMID: 28368992     DOI: 10.1097/ICO.0000000000001194

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


  11 in total

1.  Systematic Bibliometric and Visualized Analysis of Research Hotspots and Trends on the Application of Artificial Intelligence in Ophthalmic Disease Diagnosis.

Authors:  Junqiang Zhao; Yi Lu; Shaojun Zhu; Keran Li; Qin Jiang; Weihua Yang
Journal:  Front Pharmacol       Date:  2022-06-08       Impact factor: 5.988

2.  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

3.  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

4.  The impact of artificial intelligence in medicine on the future role of the physician.

Authors:  Abhimanyu S Ahuja
Journal:  PeerJ       Date:  2019-10-04       Impact factor: 2.984

5.  Understanding the advent of artificial intelligence in ophthalmology.

Authors:  Abhimanyu S Ahuja; Lawrence S Halperin
Journal:  J Curr Ophthalmol       Date:  2019-05-28

Review 6.  Pentacam® Corneal Tomography for Screening of Refractive Surgery Candidates: A Review of the Literature, Part I.

Authors:  Mahsaw N Motlagh; Majid Moshirfar; Michael S Murri; David F Skanchy; Hamed Momeni-Moghaddam; Yasmyne C Ronquillo; Phillip C Hoopes
Journal:  Med Hypothesis Discov Innov Ophthalmol       Date:  2019

7.  Classification of Color-Coded Scheimpflug Camera Corneal Tomography Images Using Deep Learning.

Authors:  Hazem Abdelmotaal; Magdi M Mostafa; Ali N R Mostafa; Abdelsalam A Mohamed; Khaled Abdelazeem
Journal:  Transl Vis Sci Technol       Date:  2020-12-18       Impact factor: 3.283

Review 8.  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

9.  Keratoconus Severity Classification Using Features Selection and Machine Learning Algorithms.

Authors:  Mustapha Aatila; Mohamed Lachgar; Hrimech Hamid; Ali Kartit
Journal:  Comput Math Methods Med       Date:  2021-11-16       Impact factor: 2.238

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
View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.