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Identifying Diabetic Macular Edema and Other Retinal Diseases by Optical Coherence Tomography Image and Multiscale Deep Learning

Overview
Publisher Dove Medical Press
Specialty Endocrinology
Date 2020 Dec 11
PMID 33304104
Citations 5
Authors
Affiliations
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Abstract

Purpose: Diabetic Macular Edema has been one of the research hotspots all over the world. But as the global population continues to grow, the number of OCT images requiring manual analysis is becoming increasingly unaffordable. Medical images are often fuzzy due to the inherent physical processes of acquiring them. It is difficult for traditional algorithms to use low-quality data. And traditional algorithms usually only provide diagnostic results, which makes the reliability and interpretability of the model face challenges. To solve problem above, we proposed a more intuitive and robust diagnosis model with self-enhancement ability and clinical triage patients' ability.

Methods: We used 38,057 OCT images (Drusen, DME, CNV and Normal) to establish and evaluate the model. All data are OCT images of fundus retina. There were 37,457 samples in the training dataset and 600 samples in the validation dataset. In order to diagnose these images accurately, we propose a multiscale transfer learning algorithm. Firstly, the sample is sent to the automatic self-enhancement module for edge detection and enhancement. Then, the processed data are sent to the image diagnosis module to determine the disease type. This process makes more data more effective and can be accurately classified. Finally, we calculated the accuracy, precision, sensitivity and specificity of the model, and verified the performance of the model from the perspective of clinical application.

Results: The model proposed in this paper can provide the diagnosis results and display the detection targets more intuitively. The model reached 94.5% accuracy, 97.2% precision, 97.7% sensitivity and 97% specificity in the independent testing dataset.

Conclusion: Comparing the performance of relevant work and ablation test, our model achieved relatively good performance. It is proved that the model proposed in this paper has a stronger ability to recognize diseases even in the face of low-quality images. Experiment results also demonstrate its clinical referral capability. It can reduce the workload of medical staff and save the precious time of patients.

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Narrative review of artificial intelligence in diabetic macular edema: Diagnosis and predicting treatment response using optical coherence tomography.

Chakroborty S, Gupta M, Devishamani C, Patel K, Ankit C, Ganesh Babu T Indian J Ophthalmol. 2021; 69(11):2999-3008.

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References
1.
Tilahun M, Gobena T, Dereje D, Welde M, Yideg G . Prevalence of Diabetic Retinopathy and Its Associated Factors among Diabetic Patients at Debre Markos Referral Hospital, Northwest Ethiopia, 2019: Hospital-Based Cross-Sectional Study. Diabetes Metab Syndr Obes. 2020; 13:2179-2187. PMC: 7328291. DOI: 10.2147/DMSO.S260694. View

2.
Perdomo O, Rios H, Rodriguez F, Otalora S, Meriaudeau F, Muller H . Classification of diabetes-related retinal diseases using a deep learning approach in optical coherence tomography. Comput Methods Programs Biomed. 2019; 178:181-189. DOI: 10.1016/j.cmpb.2019.06.016. View

3.
Wang Y, Riordon J, Kong T, Xu Y, Nguyen B, Zhong J . Prediction of DNA Integrity from Morphological Parameters Using a Single-Sperm DNA Fragmentation Index Assay. Adv Sci (Weinh). 2019; 6(15):1900712. PMC: 6685501. DOI: 10.1002/advs.201900712. View

4.
Agua-Agum J, Allegranzi B, Ariyarajah A, Aylward R, Blake I, Barboza P . After Ebola in West Africa--Unpredictable Risks, Preventable Epidemics. N Engl J Med. 2016; 375(6):587-96. DOI: 10.1056/NEJMsr1513109. View

5.
Fang L, Wang C, Li S, Yan J, Chen X, Rabbani H . Automatic classification of retinal three-dimensional optical coherence tomography images using principal component analysis network with composite kernels. J Biomed Opt. 2017; 22(11):1-10. DOI: 10.1117/1.JBO.22.11.116011. View