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Anterior Segment Eye Abnormality Detection

Published: 13 July 2023 Publication History

Abstract

Vision is the most critical sense helping us to understand the world around us. Ophthalmology is an area of medicine that deals with the eye and vision. In many remote areas, people do not have access to ophthalmologists, and many go blind for preventable reasons. Awareness about eye health and early diagnosis is essential in eye health to prevent blindness. An artificial intelligence (AI) algorithm that can quickly detect eye disease is valuable and necessary. Anterior segment eye images are essential and easily obtained without additional equipment. In this study, I aimed to build an artificial intelligence algorithm to detect eye diseases from mobile photographs. I extracted and combined anterior segment eye photos from various publicly available datasets and labeled 3938 images as Normal (healthy) and 1094 images as Abnormal (unhealthy). I increased the data diversity by augmenting it with random flips and rotations: and then prepared it for AI training. I re-trained the algorithms trained in ImageNet Visual Recognition Challenge with the transfer learning method. I compared custom and pre-trained models. After evaluating the performance of the models with the test set, 98% accuracy and 97% F1 score were obtained with the Inception-ResNetV2 model.

References

[1]
AKRAM, A. and DEBNATH, R. 2020. An automated eye disease recognition system from visual content of facial imagesusing machine learning techniques. TURKISH JOURNAL OF ELECTRICAL ENGINEERING & COMPUTER SCIENCES. 28, 2 (Mar. 2020).
[2]
Asghar, M. 2019. Assessment of Deep Learning Methodology for Self-Organizing 5G Networks. Applied Sciences. 9, (Nov. 2019), 2975.
[3]
Bakpo 2011. Diagnosing Skin Diseases Using an Artificial Neural Network. Artificial Neural Networks. K. Suzuki, ed. IntechOpen.
[4]
Cai, W. 2021. EyeHealer: A large-scale anterior eye segment dataset with eye structure and lesion annotations. Precision Clinical Medicine. 4, (Nov. 2021).
[5]
Cen, L.-P. 2021. Automatic detection of 39 fundus diseases and conditions in retinal photographs using deep neural networks. Nature Communications. 12, 1 (2021), 4828.
[6]
Chaloeivoot, T. and Phiphobmongkol, S. 2016. Building Detection from Terrestrial Images. Journal of Image and Graphics. 4, 1 (2016).
[7]
Dong, L. 2021. Artificial intelligence for the detection of age-related macular degeneration in color fundus photographs: A systematic review and meta-analysis. EClinicalMedicine. 35, (2021), 100875.
[8]
Eye care, vision impairment and blindness: 2022. https://www.who.int/health-topics/blindness-and-vision-loss#tab=tab_1. Accessed: 2022-11-21.
[9]
EyeRounds atlas University of Iowa Carver College of Medicine: https://eyerounds.org. Accessed: 2021-10-30.
[10]
de Fauw, J. 2018. Clinically applicable deep learning for diagnosis and referral in retinal disease. Nature Medicine. 24, 9 (Sep. 2018).
[11]
Female and male eyes: 2021. https://www.kaggle.com/pavelbiz/eyes-rtte. Accessed: 2021-10-30.
[12]
Hamamoto, R. 2022. Introducing AI to the molecular tumor board: one direction toward the establishment of precision medicine using large-scale cancer clinical and biological information. Experimental Hematology & Oncology. 11, 1 (2022), 82.
[13]
Hasegawa, R. 2020. Robust Japanese Road Sign Detection and Recognition in Complex Scenes Using Convolutional Neural Networks. Journal of Image and Graphics. 8, 3 (2020).
[14]
He, K. 2015. Deep Residual Learning for Image Recognition. CoRR. abs/1512.03385, (2015).
[15]
Huang, S. 2016. A New Synthetical Method of Feature Enhancement and Detection for SAR Image Targets. Journal of Image and Graphics. 4, 2 (2016).
[16]
Huynh, B.Q. 2016. Digital mammographic tumor classification using transfer learning from deep convolutional neural networks. Journal of Medical Imaging. 3, 3 (Aug. 2016).
[17]
International Centre for Eye Health, London School of Hygiene & Tropical Medicine : www.flickr.com/communityeyehealth. Accessed: 2021-10-30.
[18]
Janghel, R.R. 2010. Breast cancer diagnosis using Artificial Neural Network models. The 3rd International Conference on Information Sciences and Interaction Sciences. (2010), 89–94.
[19]
Kamel Rahimi, A. 2022. Machine learning models for diabetes management in acute care using electronic medical records: A systematic review. International Journal of Medical Informatics. 162, (2022), 104758.
[20]
Khan, R. 2018. An Efficient Contour Based Fine-Grained Algorithm for Multi Category Object Detection. Journal of Image and Graphics. 6, 2 (2018).
[21]
Khandekar, R. 2014. Resources for eye care at secondary and tertiary level government institutions in Saudi Arabia. Middle East African Journal of Ophthalmology. 21, 2 (2014).
[22]
Kim, D.H. and Mackinnon, T. 2018. Artificial intelligence in fracture detection: transfer learning from deep convolutional neural networks. Clinical radiology. 73 5, (2018), 439–445.
[23]
Liu, Y. 2021. Survey of Video Based Small Target Detection. Journal of Image and Graphics. 9, 4 (2021).
[24]
Marques, A.P. 2021. Global economic productivity losses from vision impairment and blindness. EClinicalMedicine. 35, (May 2021).
[25]
Masud, M. 2022. Convolutional neural network-based models for diagnosis of breast cancer. Neural Computing and Applications. 34, 14 (Jul. 2022).
[26]
Ng, H.-W. 2015. Deep Learning for Emotion Recognition on Small Datasets using Transfer Learning. Proceedings of the 2015 ACM on International Conference on Multimodal Interaction (New York, NY, USA, Nov. 2015).
[27]
Oda, M. 2020. Automated eye disease classification method from anterior eye image using anatomical structure focused image classification technique.
[28]
Proença, H. and Alexandre, L.A. 2005. UBIRIS: A Noisy Iris Image Database. International Conference on Image Analysis and Processing (2005).
[29]
Rampun, A. 2014. Detection of Prostate Abnormality within the Peripheral Zone Using Grey Level Distribution. Journal of Image and Graphics. (2014).
[30]
Russakovsky, O. 2015. ImageNet Large Scale Visual Recognition Challenge. International Journal of Computer Vision. 115, (2015), 211–252.
[31]
Sandler, M. 2018. Inverted Residuals and Linear Bottlenecks: Mobile Networks for Classification, Detection and Segmentation. CoRR. abs/1801.04381, (2018).
[32]
Spiess, F. 2021. People Detection with Depth Silhouettes and Convolutional Neural Networks on a Mobile Robot. Journal of Image and Graphics. 9, 4 (2021).
[33]
Szegedy, C. 2015. Going deeper with convolutions. 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR). (2015), 1–9.
[34]
Szegedy, C. 2017. Inception-v4, Inception-ResNet and the Impact of Residual Connections on Learning. Proceedings of the Thirty-First AAAI Conference on Artificial Intelligence (2017), 4278–4284.
[35]
Szegedy, C. 2016. Rethinking the Inception Architecture for Computer Vision. 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR). (2016), 2818–2826.
[36]
Trokielewicz, M. 2015. Assessment of iris recognition reliability for eyes affected by ocular pathologies. (Oct. 2015).
[37]
Trokielewicz, M. 2017. Implications of Ocular Pathologies for Iris Recognition Reliability. Image Vision Comput. 58, C (Feb. 2017), 158–167.
[38]
Utaminingrum, F. 2020. Combining Multiple Feature for Robust Traffic Sign Detection. Journal of Image and Graphics. (2020).
[39]
World Health Organization 2019. World report on vision.

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ICIIT '23: Proceedings of the 2023 8th International Conference on Intelligent Information Technology
February 2023
310 pages
ISBN:9781450399616
DOI:10.1145/3591569
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 the author(s) 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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Published: 13 July 2023

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  • Scientific and Technological Research Council of Türkiye

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