Editorial
Copyright ©The Author(s) 2025.
World J Clin Cases. Feb 16, 2025; 13(5): 101306
Published online Feb 16, 2025. doi: 10.12998/wjcc.v13.i5.101306
Table 1 Overview of diabetic retinopathy diagnostic tools
Tool
Year introduced
Country of origin
Ref.
Advantages
Disadvantages
AI/ML-based
Fundus photographyMid-20th centuryGermanySrinivasan et al[13], 2023Established method for capturing detailed retinal imagesResource-intensive requires specialized personnel, expensive, and not scalable in low-resource settingsNo
Optical coherence tomography1991United StatesHuang et al[24], 1991High-resolution cross-sectional images; effective in detecting diabetic macular edema.High cost, requires specialized training, limited availability in low-resource settingsNo
Fluorescein angiography1961United StatesNorton and Gutman[27], 1965Gold standard for visualizing retinal vasculature; highly precise.Invasive, requires dye injection, potential side effects, limited use in rural and low-income areas.No
Ultrawide-field imagingEarly 2000sCanada, United KingdomNagiel et al[32], 2016Captures up to 200 degrees of the retina; detects peripheral lesions often missed by standard imagingHigh cost, requires specialized training, limited adoption in low-resource settingsNo
Confocal scanning laser ophthalmoscopyLate 1980sGermanyWebb et al[35], 1987Provides high-resolution, high-contrast images; improves diagnostic accuracy for subtle abnormalitiesHigh cost, requires specialized training, limited adoption, particularly in low-resource settingsNo
Multispectral Imaging2012CanadaMa et al[36], 2023Enhances contrast and detail in retinal images by capturing muliple wavelengths of lightHigh cost, limited availability, not widely adopted in low-resource settingsNo
Smartphone-based retinal imagingEarly 2010sUnited KingdomKim et al[37], 2018Cost-effective, portable, accessible; useful in remote and low-resource settingsVariable image quality depending on lighting and operator skill; requires adequate trainingNo
Hyperspectral imagingEarly 2010sCanadaAkbari and Kosugi[39], 2009Captures detailed biochemical information; high accuracy in tissue composition analysis; valuable for early detectionComplex, expensive, not widely available, limited adoption in clinical practiceNo
Photoacoustic imagingEarly 2010sUnited StatesHu and Wang[43], 2010Combines laser-induced ultrasound with optical imaging; provides functional assessment of the retinaStill in research phase, high cost, complex, limited clinical applicationNo
TeleophthalmologyEarly 2000sUnited StatesWhited[44], 2006Expands access to DR screening, particularly in underserved areas; allows remote retinal imaging and analysisDependent on internet connectivity, requires high-quality imaging devices and trained personnel, lack of direct patient interactionNo
AI and ML algorithms2018, 2020United StatesEsmaeilzadeh[48], 2024High sensitivity and specificity; automates retinal image analysis; provides immediate diagnostic feedbackHigh initial investment, requires continuous algorithm updates, data privacy concerns, integration challenges in clinical workflowsYes
Table 2 Summary of artificial intelligence/machine learning techniques in diabetic retinopathy detection
Technique
Description
Advantages
Limitations
CNNsDeep learning model for image analysis; learns hierarchical featuresHigh accuracy, effective for image dataRequires large datasets, computationally intensive
Support vector machinesSupervised learning model; used for classifying pre-extracted featuresRobust with small datasets, interpretable resultsLess effective with large-scale image data
Random forestsEnsemble learning method using decision trees; used for feature-based classificationGood performance with noisy dataRequires feature extraction, less flexible than CNNs
Table 3 Comparison of artificial intelligence/machine learning models and traditional screening methods for diabetic retinopathy
Screening method
Accuracy
Sensitivity
Specificity
Key points
CNNsHighHighHighCapable of analysing complex retinal images with high accuracy and scalability
Support vector machinesModerateModerateModerateEffective in classifying pre-extracted features but less scalable than CNNs
Random forestsModerateModerateModerateGood for feature extraction-based classification; robust but less flexible
Traditional manual fundus examinationVariableLow to moderateLow to moderateDependent on the skill of the ophthalmologist; less accessible and scalable
Table 4 Artificial intelligence-driven personalized management strategies in diabetic retinopathy
AI application
Ref.
Description
Impact on patient care
Predicting disease progressionKong and Song[73], 2024Analyse vast and diverse datasets, including retinal images, genetic information, blood glucose levels, and other patient-specific variables, to identify subtle patterns and predict the likelihood of disease advancement with higher accuracyAllows for timely intervention and personalized treatment plans
Optimizing treatment regimensPatibandla et al[74], 2024Analyse patient data to predict the effectiveness of different treatment options, such as laser therapy or anti-VEGF injections, and recommend the most suitable approach for each individualEnsures patients receive the most effective treatments based on individual data
Personalizing follow-up schedulesSilva et al[75], 2024Determine the optimal frequency of eye exams and other monitoring measures, ensuring timely detection of any changes in a patient's conditionHelps in timely detection of changes in the patient's condition
Table 5 Challenges and solutions for artificial intelligence/machine learning implementation in diabetic retinopathy screening
Challenge
Ref.
Description
Potential solution
Data standardization and interoperabilityMandl et al[76], 2024Difficulty in integrating AI tools with diverse electronic health record systemsDevelop universal data standards and use fast healthcare interoperability resources APIs
Clinicians need AI tools that seamlessly integrate into their existing workflows without adding complexity or disrupting patient care
Ensuring scalability, security, and ongoing technical support are critical considerations
Ethical and regulatory concernsGoldberg et al[77], 2024Issues related to data privacy, algorithmic bias, and lack of clear regulatory guidelinesPromote diverse datasets, establish clear regulatory frameworks, and ensure data security
Scalability and maintenanceMarvasti et al[78], 2024Challenges in deploying AI systems across large healthcare networksUse cloud-based platforms for scalability and provide ongoing technical support