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Machine Learning Aprroach for Early Detection of Glaucoma from Visual Fields

Published: 18 May 2020 Publication History

Abstract

Glaucoma is one of the leading causes of blindness and visual impairment in adults and the elderly. Early detection of this disease through regular screening is particularly important in preventing vision loss. To do this, several diagnostic techniques are used ranging from classical techniques centered on an expert to modern diagnostic methods, sometimes completely computerized. The implementation of computerized systems based on the early detection and classification of clinical signs of glaucoma can greatly improve the diagnosis of this disease. Several authors have proposed models allowing the automatic classification of clinical signs of glaucoma. However, not only these models are not efficient enough and remain optimizable but also often do not take into account the problem of data instability in their construction and the performance test measures adapted to evaluate them. In this paper, a predictive model based on the Support Vector Machine (SVM) has been introduced to optimize the automated diagnosis of glaucoma signs using patient visual field data. A comparative study of performance as a function of the parameters of this algorithm, which is particularly effective for this type of problem, has been made. The best results for the data collected at the Glaucoma Center of Semmelweis University in Budapest have proven to significantly improve the performance of the models offered so far especially in terms of precision, accuracy and AUC while reducing execution time.

References

[1]
Junichiro Hayashi, Takamitsu Kunieda, Joshua Cole, Ryusuke Soga, Yuji Hatanaka, Miao Lu, Takeshi Hara and Hiroshi Fujita: "A development of computeraided diagnosis system using fundus images". Proceeding of the 7th International Conference on Virtual Systems and Multi-Media; pp. 429--438, 2001.
[2]
KONONENKO, Igor. Machine learning for medical diagnosis: history, state of the art and perspective. Artificial Intelligence in medicine, vol. 23, no 1, pp. 89--109, 2001.
[3]
STACEY, Michael et MCGREGOR, Carolyn. Temporal abstraction in intelligent clinical data analysis: A survey. Artificial intelligence in medicine, 2007, vol. 39, no 1, p. 1--24.
[4]
Kucur ŞS, Hollo G, Sznitman R (2018) A deep learning approach to automatic detection of early glaucoma from visual fields. PLoS ONE 13(11): e0206081.
[5]
Erler, N. S., Bryan, S. R., Eilers, P. H., Lesaffre, E. M., Lemij, H. G., & Vermeer, K. A. (2014). Optimizing structure-function relationship by maximizing correspondence between glaucomatous visual fields and mathematical retinal nerve fiber models. Investigative ophthalmology & visual science, 55(4), 2350--2357.
[6]
Jindal, A., Dua, A., Kaur, K., Singh, M., Kumar, N., & Mishra, S. (2016). Decision tree and SVM-based data analytics for theft detection in smart grid. IEEE Transactions on Industrial Informatics, 12(3), 1005--1016.
[7]
Chang, Y. W., Hsieh, C. J., Chang, K. W., Ringgaard, M., & Lin, C. J. (2010). Training and testing low-degree polynomial data mappings via linear SVM. Journal of Machine Learning Research, 11(Apr), 1471--1490.
[8]
Weinreb, R. N., & Khaw, P. T (2004). Primary open-angle glaucoma. The Lancet, 363(9422), 1711--1720.
[9]
Weinreb, R. N., Aung, T, & Medeiros, F. A. (2014). The pathophysiology and treatment of glaucoma: a review. Jama, 311(18), 1901--1911.
[10]
Quigley, H. A. (2018). Use of animal models and techniques in glaucoma research: Introduction. In Glaucoma (pp. 1--10). Humana Press, New York, NY.
[11]
Quigley, H. A. (2019). 21st century glaucoma care. Eye, 33(2), 254--260.
[12]
Shrivastava, N. A., Khosravi, A., & Panigrahi, B. K. (2015). Prediction interval estimation of electricity prices using PSO-tuned support vector machines. IEEE Transactions on Industrial Informatics, 11(2), 322--331.
[13]
Keerthi, S. S., & Lin, C.J. (2003). Asymptotic behaviors of support vector machines with Gaussian kernel. Neural computation, 15(7), 1667--1689.
[14]
Lippert, R. A., & Rifkin, R. M. (2006). Infinite-σ limits for Tikhonov regularization. Journal of Machine Learning Research, 7(May), 855--876.
[15]
Tekouabou, S. C. K., Cherif, W., & Silkan, H. (2019, March). A data modeling approach for classification problems: application to bank telemarketing prediction. In Proceedings of the 2nd International Conference on Networking, Information Systems & Security (pp. 1--7).
[16]
Hatanaka, Y., Muramatsu, C., Sawada, A., Hara, T., Yamamoto, T., & Fujita, H. (2012). Glaucoma risk assessment based on clinical data and automated nerve fiber layer defects detection. In 2012 Annual International Conference of the IEEE Engineering in Medicine and Biology Society (pp. 5963--5966). IEEE.
[17]
Koumétio, C. S. T, Cherif, W., & Hassan, S. (2018, October). Optimizing the prediction of telemarketing target calls by a classification technique. In 2018 6th International Conference on Wireless Networks and Mobile Communications (WINCOM) (pp. 1--6). IEEE.
[18]
Bryan, S. R., Vermeer, K. A., Eilers, P. H., Lemij, H. G., & Lesaffre, E. M. (2013). Robust and censored modeling and prediction of progression in glaucomatous visual fields. Investigative ophthalmology & visual science, 54(10), 6694--6700.
[19]
Andersson, S., Heijl, A., Bizios, D., & Bengtsson, B. (2013). Comparison of clinicians and an artificial neural network regarding accuracy and certainty in performance of visual field assessment for the diagnosis of glaucoma. Acta ophthalmologica, 91(5), 413--417.
[20]
Ceccon, S., Garway-Heath, D. F., Crabb, D. P., & Tucker, A. (2013). Exploring early glaucoma and the visual field test: Classification and clustering using bayesian networks. IEEE journal of biomedical and health informatics, 18(3), 1008--1014.
[21]
Sample, P. A, Chan, K., Boden, C., Lee, T W, Blumenthal, E. Z., Weinreb, R. N., ... & Goldbaum, M. H. (2004). Using unsupervised learning with variational bayesian mixture of factor analysis to identify patterns of glaucomatous visual field defects. Investigative ophthalmology & visual science, 45(8), 2596--2605.
[22]
Gulshan, V, Peng, L., Coram, M., Stumpe, M. C., Wu, D., Narayanaswamy, A., ... & Kim, R. (2016). Development and validation of a deep learning algorithm for detection of diabetic retinopathy in retinal fundus photographs. Jama, 316(22), 2402--2410.

Cited By

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  • (2023)Artificial intelligence in glaucoma: opportunities, challenges, and future directionsBioMedical Engineering OnLine10.1186/s12938-023-01187-822:1Online publication date: 16-Dec-2023
  • (2022)Optimizing the early glaucoma detection from visual fields by combining preprocessing techniques and ensemble classifier with selection strategiesExpert Systems with Applications: An International Journal10.1016/j.eswa.2021.115975189:COnline publication date: 1-Mar-2022
  • (2022)Prediction of Glaucoma Using Machine Learning-Based Approaches—A Comparative StudyAdvanced Computing and Intelligent Technologies10.1007/978-981-19-2980-9_40(489-511)Online publication date: 31-Aug-2022

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cover image ACM Other conferences
NISS '20: Proceedings of the 3rd International Conference on Networking, Information Systems & Security
March 2020
528 pages
ISBN:9781450376341
DOI:10.1145/3386723
Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected]

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Association for Computing Machinery

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Publication History

Published: 18 May 2020

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Author Tags

  1. Automation
  2. SVM classifier
  3. classification
  4. data mining
  5. glaucoma
  6. predictive analysis

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Cited By

View all
  • (2023)Artificial intelligence in glaucoma: opportunities, challenges, and future directionsBioMedical Engineering OnLine10.1186/s12938-023-01187-822:1Online publication date: 16-Dec-2023
  • (2022)Optimizing the early glaucoma detection from visual fields by combining preprocessing techniques and ensemble classifier with selection strategiesExpert Systems with Applications: An International Journal10.1016/j.eswa.2021.115975189:COnline publication date: 1-Mar-2022
  • (2022)Prediction of Glaucoma Using Machine Learning-Based Approaches—A Comparative StudyAdvanced Computing and Intelligent Technologies10.1007/978-981-19-2980-9_40(489-511)Online publication date: 31-Aug-2022

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