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

被引:9
|
作者
Cohen, Eyal [1 ,2 ]
Bank, Dor [3 ]
Sorkin, Nir [1 ,2 ]
Giryes, Raja [3 ]
Varssano, David [1 ,2 ]
机构
[1] Tel Aviv Sourasky Med Ctr, Dept Ophthalmol, 6 Weizmann St, IL-64239 Tel Aviv, Israel
[2] Tel Aviv Univ Sackler, Fac Med, Tel Aviv, Israel
[3] Tel Aviv Univ, Sch Elect Engn, Tel Aviv, Israel
关键词
Machine learning; Artificial intelligence; Random forest; Keratoconus; Detection; Galilei; Dual Scheimpflug; Placido; TOPOGRAPHY; GLAUCOMA;
D O I
10.1007/s10792-022-02404-4
中图分类号
R77 [眼科学];
学科分类号
100212 ;
摘要
Purpose To construct an automatic machine-learning derived algorithm discriminating between normal corneas and suspect irregular or keratoconic corneas. Methods A total of 8526 corneal tomography images of 4904 eyes obtained between November 2010 and July 2017 using a combined Scheimpflug/Placido tomographer were retrospectively evaluated. Each image was evaluated for acquisition quality and was labeled as normal, suspect irregular or keratoconic by a cornea specialist. Two algorithms were built. The first was based on 94 instrument-derived output parameters, and the second integrated keratoconus prediction indices of the device with the 94 instrument-derived output parameters. Both models were compared with the tomographer's keratoconus detection algorithms. Out of the 8526 images evaluated, 7104 images of 3787 eyes had sufficient acquisition quality. Of those, 5904 examinations were randomly chosen for construction of the models using the random forest algorithm. The models were then validated using the remaining 1200 examinations. Results Both RF algorithms had a larger AUC compared with any of the tomographer's KC detection algorithms (p < 10(-9)). The first constructed model had 90.2% accuracy, sensitivity of 94.2%, and specificity of 89.6% (Youden 0.838). Calculated AUC was 0.964. The second model had 91.5% accuracy, sensitivity of 94.7%, and specificity of 89.8% (Youden 0.846). Calculated AUC was 0.969. Conclusion Using the RF machine-learning algorithm, accuracy of discrimination between normal, suspect irregular and keratoconic corneas approximates that of an experienced corneal expert. Applying machine learning to corneal tomography can facilitate keratoconus screening in large populations as well as off-site screening of refractive surgery candidates.
引用
收藏
页码:3837 / 3847
页数:11
相关论文
共 50 条
  • [41] The Use of Deep Learning and Machine Learning on LongitudinalElectronic Health Records for the Early Detection and Preventionof Diseases:Scoping Review
    Swinckels, Laura
    Ennis, Frank C.
    Ziesemer, Kirsten A.
    Scheerman, Janneke F. M.
    Bijwaard, Harmen
    de Keijzer, Ander
    Bruers, Josef Jan
    JOURNAL OF MEDICAL INTERNET RESEARCH, 2024, 26
  • [42] Expert System for the Machine Learning Pipeline in Manufacturing
    Frye, M.
    Krauss, J.
    Schmitt, R. H.
    IFAC PAPERSONLINE, 2021, 54 (01): : 128 - 133
  • [43] Ethical implications of the use of machine learning as a mediator in the development of metacognitive skills in children and adolescents
    Perez Alvarez, Miguel Angel
    INTERNATIONAL REVIEW OF INFORMATION ETHICS, 2021, 30
  • [44] Machine learning with a reduced dimensionality representation of comprehensive Pentacam tomography parameters to identify subclinical keratoconus
    Cao, Ke
    Verspoor, Karin
    Chan, Elsie
    Daniell, Mark
    Sahebjada, Srujana
    Baird, Paul N.
    COMPUTERS IN BIOLOGY AND MEDICINE, 2021, 138
  • [45] Evaluation of Anterior and Posterior Corneal Higher Order Aberrations for the Detection of Keratoconus and Suspect Keratoconus
    Salman, Abdelrahman
    Kailani, Obeda
    Marshall, John
    Ghabra, Marwan
    Balamoun, Ashraf Armia
    Darwish, Taym R.
    Badla, Abdul Aziz
    Alhaji, Hala
    TOMOGRAPHY, 2022, 8 (06) : 2864 - 2873
  • [46] Suspect glaucoma detection from corneal densitometry supported by machine learning
    Garcia-Jimenez, Andres
    Consejo, Alejandra
    JOURNAL OF OPTOMETRY, 2022, 15 : S12 - S21
  • [47] A new approach based on Machine Learning for predicting corneal curvature (K1) and astigmatism in patients with keratoconus after intracorneal ring implantation
    Valdes-Mas, M. A.
    Martin-Guerrero, J. D.
    Ruperez, M. J.
    Pastor, F.
    Dualde, C.
    Monserrat, C.
    Peris-Martinez, C.
    COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2014, 116 (01) : 39 - 47
  • [48] Deep learning models based on CNN architecture for early keratoconus detection using corneal topographic maps
    Kallel, Imen Fourati
    Mahfoudhi, Oussema
    Kammoun, Sonda
    MULTIMEDIA TOOLS AND APPLICATIONS, 2023, 83 (16) : 49173 - 49193
  • [49] Healthcare Fraud Detection using Machine Learning
    Prova, Nuzhat Noor Islam
    2024 SECOND INTERNATIONAL CONFERENCE ON INTELLIGENT CYBER PHYSICAL SYSTEMS AND INTERNET OF THINGS, ICOICI 2024, 2024, : 1119 - 1123
  • [50] Keratoconus Diagnostic and Treatment Algorithms Based on Machine-Learning Methods
    Malyugin, Boris
    Sakhnov, Sergej
    Izmailova, Svetlana
    Boiko, Ernest
    Pozdeyeva, Nadezhda
    Axenova, Lyubov
    Axenov, Kirill
    Titov, Aleksej
    Terentyeva, Anna
    Zakaraiia, Tamriko
    Myasnikova, Viktoriya
    DIAGNOSTICS, 2021, 11 (10)