| Literature DB >> 35700021 |
Junqiang Zhao1,2, Yi Lu2, Yong Qian3, Yuxin Luo4, Weihua Yang4.
Abstract
BACKGROUND: Patients with retinal diseases may exhibit serious complications that cause severe visual impairment owing to a lack of awareness of retinal diseases and limited medical resources. Understanding how artificial intelligence (AI) is used to make predictions and perform relevant analyses is a very active area of research on retinal diseases. In this study, the relevant Science Citation Index (SCI) literature on the AI of retinal diseases published from 2012 to 2021 was integrated and analyzed.Entities:
Keywords: artificial intelligence; bibliometric; citespace, VOSviewer; data visualization; eye; retinal; retinal disease; visual impairment
Mesh:
Year: 2022 PMID: 35700021 PMCID: PMC9240965 DOI: 10.2196/37532
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 7.076
Figure 1Frame flow diagram for the detailed selection criteria and bibliometric analysis steps of applying artificial intelligence (AI) to the study of retinal diseases in the Web of Science Core Collection database.
Figure 2Trends in the number of publications on applying artificial intelligence to the study of retinal diseases from 2012 to 2021.
Figure 3The cooperation of countries or regions that contributed to publications on applying artificial intelligence to the study of retinal diseases from 2012 to 2021.
Figure 4The cooperation of countries or regions that contributed to publications on applying artificial intelligence to the study of retinal diseases from 2012 to 2021.
The top 10 countries or regions and institutions with publications on the application of artificial intelligence in retinal diseases from 2012 to 2021.
| Rank | Count | Centrality | H-index | |
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| 1. People’s Republic of China | 634 | 0.16 | 42 |
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| 2. United States | 620 | 0.57 | 56 |
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| 3. India | 309 | 0.04 | 33 |
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| 4. England | 205 | 1.00 | 33 |
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| 5. South Korea | 150 | 0.00 | 24 |
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| 6. Germany | 132 | 0.04 | 24 |
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| 7. Australia | 120 | 0.00 | 30 |
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| 8. Japan | 98 | 0.00 | 19 |
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| 9. Singapore | 98 | 0.49 | 20 |
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| 10. Canada | 74 | 0.06 | 19 |
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| 1. Sun Yat Sen University | 62 | 0.05 | 16 |
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| 2. Chinese Academy of Science | 51 | 008 | 14 |
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| 3. Johns Hopkins University | 49 | 0.13 | 16 |
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| 4. Oregon Health and Science University | 48 | 0.01 | 16 |
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| 5. Stanford University | 47 | 0.03 | 18 |
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| 6. Medical University of Vienna | 42 | 0.06 | 19 |
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| 7. Singapore National Eye Centre | 39 | 0.11 | 18 |
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| 8. National University of Singapore | 38 | 0.07 | 20 |
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| 9. Shanghai Jiao Tong University | 38 | 0.00 | 10 |
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| 10. University College London | 37 | 0.12 | 21 |
Figure 5Network map of institutions that contributed to publications on the application of artificial intelligence in retinal diseases from 2012 to 2021.
The top 10 citing journals and cited journals of publications on the application of artificial intelligence in retinal diseases from 2012 to 2021.
| Rank | Count | |
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| 1. Translational Vision Science Technology | 100 |
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| 2. Scientific Reports | 86 |
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| 3. IEEE Access | 85 |
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| 4. Biomedical Optics Express | 67 |
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| 5. PLoS One | 53 |
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| 6. IEEE Transactions on Medical Imaging | 48 |
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| 7. American Journal of Ophthalmology | 41 |
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| 8. Computer Methods and Programs in Biomedicine | 40 |
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| 9. British Journal of Ophthalmology | 36 |
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| 10. Eye | 31 |
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| 1. Ophthalmology | 1140 |
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| 2. Investigative Ophthalmology & Visual Science | 1083 |
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| 3. IEEE Transactions on Medical Imaging | 974 |
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| 4. Lecture Notes in Computer Science | 855 |
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| 5. British Journal of Ophthalmology | 778 |
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| 6. PLoS One | 775 |
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| 7. Medical Image Analysis | 714 |
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| 8. JAMA (Journal of the American Medical Association) | 681 |
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| 9. American Journal of Ophthalmology | 673 |
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| 10. JAMA Ophthalmology | 647 |
Figure 6The dual-map overlay of journals that contributed to publications on the application of artificial intelligence in retinal diseases from 2012 to 2021. Red represents the greatest influence.
Figure 7Network map of the research categories of publications on the application of artificial intelligence in retinal diseases from 2012 to 2021.
The top 10 research categories of publications on the application of artificial intelligence in retinal diseases from 2012 to 2021.
| Rank | Research category | Count | H-index |
| 1 | Ophthalmology | 489 | 40 |
| 2 | Engineering Electrical Electronic | 332 | 33 |
| 3 | Engineering Biomedical | 318 | 42 |
| 4 | Computer Science Artificial Intelligence | 265 | 34 |
| 5 | Computer Science Interdisciplinary Applications | 250 | 40 |
| 6 | Radiology Nuclear Medicine Medical Imaging | 246 | 42 |
| 7 | Computer Science Information Systems | 206 | 23 |
| 8 | Multidisciplinary Sciences | 185 | 25 |
| 9 | Medical Informatics | 173 | 30 |
| 10 | Mathematical Computational Biology | 139 | 24 |
The top 20 keywords on the application of artificial intelligence in retinal diseases from 2012 to 2021.
| Rank | Keyword | Count |
| 1 | Diabetic retinopathy | 380 |
| 2 | Classification | 271 |
| 3 | Image | 270 |
| 4 | Validation | 224 |
| 5 | Segmentation | 213 |
| 6 | Optical coherence tomography | 154 |
| 7 | Diagnosis | 152 |
| 8 | System | 133 |
| 9 | Prevalence | 124 |
| 10 | Macular degeneration | 118 |
| 11 | Algorithm | 111 |
| 12 | Retinal image | 110 |
| 13 | Disease | 106 |
| 14 | Model | 105 |
| 15 | Neural network | 104 |
| 16 | Blood vessel | 103 |
| 17 | Retinopathy | 101 |
| 18 | Eye | 99 |
| 19 | Progression | 82 |
| 20 | Automated detection | 77 |
Figure 8Network map of the 50 top-ranking keywords divided into four clusters.
Figure 9Top 15 keywords with the strongest citation bursts of publications on the application of artificial intelligence in retinal diseases from 2012 to 2021. Red indicates the emergence of keywords.
Figure 10Reference cocitation map of publications on the application of artificial intelligence in retinal diseases from 2012 to 2021.
The top 10 publications on the application of artificial intelligence (AI) in retinal diseases from 2012 to 2021.
| Rank | Reference | Title of cocited reference | Count | Interpretation of the findings |
| 1 | Gulshan et al [ | Development and validation of a deep learning algorithm for the detection of DRa in retinal fundus photographs | 506 | For diagnosing referable DR, a deep machine learning method had good sensitivity and specificity |
| 2 | Ting et al [ | Development and validation of a deep learning system for DR and related eye diseases using retinal images from multiethnic populations with diabetes | 270 | The deep learning system demonstrated high sensitivity and specificity for detecting DR and related eye disorders |
| 3 | Lam et al [ | Automated Identification of DR using deep learning | 214 | A high-reliability data-driven AI-based grading technique for screening and identifying fundus pictures taken from patients with diabetes. For further assessment and therapy, these patients should be referred to an ophthalmologist |
| 4 | Ronneberger et al [ | U-Net: convolutional networks for biomedical image segmentation | 208 | This research provides a network and training technique that heavily depends on data augmentation to make better use of existing annotated samples |
| 5 | He et al [ | Deep residual learning for image recognition | 173 | This research proposes a residual learning paradigm for network training |
| 6 | Kermany et al [ | Identifying medical diagnoses and treatable diseases by image-based deep learning | 163 | This paper describes the development of a diagnostic tool for screening patients with common treatable blinding retinal disorders based on a deep-learning architecture |
| 7 | LeCun et al [ | Deep learning | 162 | AI will advance as a result of systems that combine representation learning and complicated reasoning |
| 8 | De Fauw et al [ | Clinically applicable deep learning for diagnosis and referral in retinal disease | 160 | When using tissue segmentations from a different type of device, a unique deep learning architecture was used to a clinically diverse data set to retain referral accuracy |
| 9 | Abràmoff et al [ | Improved automated detection of DR on a publicly available dataset through the integration of deep learning | 159 | Deep learning–enhanced algorithms have the potential to improve the effectiveness of DR screening, thereby preventing vision loss and blindness from this dreadful disease |
| 10 | Esteva et al [ | Dermatologist-level classification of skin cancer with deep neural networks | 145 | This research shows how deep learning works in dermatology and how it can be applied to other fields, including ophthalmology, otolaryngology, radiography, and pathology |
aDR: diabetic retinopathy.