Automated Cataract Grading from Smartphone-Acquired External Eye Photographs Using Deep Learning
Abstract
1. Introduction
2. Methods
2.1. Dataset
2.2. Region of Interest Extraction
2.3. Region of Interest Extraction Using the Mediapipe Model
2.4. Implementation of the Iris Extraction Procedure
2.5. Transfer Learning
3. Results
3.1. Model Evaluation Metrics
3.2. Model Output
3.3. Model Analysis
4. Discussion
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
- Vision Loss Expert Group of the Global Burden of Disease Study; Pesudovs, K.; Lansingh, V.C.; Kempen, J.H.; Tapply, I.; Fernandes, A.G.; Cicinelli, M.V.; Arrigo, A.; Leveziel, N.; Resnikoff, S.; et al. Global estimates on the number of people blind or visually impaired by cataract: A meta-analysis from 2000 to 2020. Eye 2024, 38, 2156–2172. [Google Scholar]
- Jiang, B.; Wu, T.; Liu, W.; Liu, G.; Lu, P. Changing trends in the global burden of cataract over the past 30 years: Retrospective data analysis of the Global Burden of Disease Study 2019. JMIR Public Health Surveill. 2023, 9, e47349. [Google Scholar] [CrossRef]
- Zaki, W.M.D.W.; Mutalib, H.A.; Jidesh, P.; Ramlan, L.A.; Hussain, A.; Mustapha, A. Towards a connected mobile cataract screening system: A future approach. J. Imaging 2022, 8, 41. [Google Scholar] [CrossRef]
- Lakshminarayanan, V.; McBride, A.C.; Zelek, J. Smartphone science in eye care and medicine. Opt. Photonics News 2015, 26, 38–45. [Google Scholar] [CrossRef]
- Mosa, A.S.M.; Yoo, I.; Sheets, L. A systematic review of healthcare applications for smartphones. BMC Med. Inform. Decis. Mak. 2012, 12, 67. [Google Scholar] [CrossRef] [PubMed]
- Shaheen, I.; Tariq, A. Survey analysis of automatic detection and grading of cataract using different imaging modalities. In Innovations in Communication and Computing; Springer: Cham, Switzerland, 2019; pp. 35–45. [Google Scholar]
- Harris, M.L.; Hanna, K.J.; Shun-Shin, G.A.; Holden, R.; Brown, N.A.P. Analysis of retro-illumination photographs for use in longitudinal studies of cataract. Eye 1993, 7, 572–577. [Google Scholar] [CrossRef] [PubMed]
- Tsui, P.H.; Huang, C.C.; Zhou, Q.; Shung, K.K. Cataract measurement by estimating the ultrasonic statistical parameter using an ultrasound needle transducer: An in vitro study. Physiol. Meas. 2011, 32, 513–524. [Google Scholar] [CrossRef]
- Keenan, T.D.; Chen, Q.; Agrón, E.; Tham, Y.-C.; Goh, J.H.L.; Lei, X.; Ng, Y.P.; Liu, Y.; Xu, X.; Cheng, C.-Y.; et al. DeepLensNet: Deep learning automated diagnosis and quantitative classification of cataract type and severity. Ophthalmology 2022, 129, 571–584. [Google Scholar] [CrossRef]
- Tham, Y.-C.; Goh, J.H.L.; Anees, A.; Lei, X.; Rim, T.H.; Chee, M.-L.; Wang, Y.X.; Jonas, J.B.; Thakur, S.; Teo, Z.L.; et al. Detecting visually significant cataract using retinal photograph-based deep learning. Nat. Aging 2022, 2, 264–271. [Google Scholar] [PubMed]
- Fuadah, Y.N.; Setiawan, A.W.; Mengko, T.L.R.; Budiman. Mobile cataract detection using optimal combination of statistical texture analysis. In Proceedings of the ICICI-BME, Bandung, Indonesia, 3–5 February 2015; pp. 232–236. [Google Scholar]
- Hu, S.; Wang, X.; Wu, H.; Luan, X.; Qi, P.; Lin, Y.; He, X.; He, W. Unified diagnosis framework for automated nuclear cataract grading based on smartphone slit-lamp images. IEEE Access 2020, 8, 174169–174178. [Google Scholar] [CrossRef]
- Hu, S.; Wu, H.; Luan, X.; Wang, Z.; Adu, M.; Wang, X.; Yan, C.; Li, B.; Li, K.; Zou, Y.; et al. Portable handheld slit-lamp based on a smartphone camera for cataract screening. J. Ophthalmol. 2020, 2020, 1037689. [Google Scholar] [CrossRef] [PubMed]
- Askarian, B.; Ho, P.; Chong, J.W. Detecting cataract using smartphones. IEEE J. Transl. Eng. Health Med. 2021, 9, 3800110. [Google Scholar] [CrossRef]
- Cataract Computer Vision Project V0.1. IAB Resources. 2015. Available online: https://universe.roboflow.com/cataract/cataract-v01 (accessed on 24 June 2025).
- Keshari, R.; Ghosh, S.; Agarwal, A.; Singh, R.; Vatsa, M. Mobile periocular matching with pre-post cataract surgery. In Proceedings of the International Conference on Image Processing (ICIP), Phoenix, AZ, USA, 25–28 September 2016; pp. 3116–3120. [Google Scholar]
- Rana, J.; Galib, S.M. Cataract detection using smartphone. In Proceedings of the 3rd International Conference on Electrical Information and Communication Technology (EICT), Khulna, Bangladesh, 7–9 December 2017; pp. 1–4. [Google Scholar]
- Li, H.; Lim, J.H.; Liu, J.; Wong, T.Y. Towards automatic grading of nuclear cataract. In Proceedings of the Annual International Conference of the IEEE Engineering in Medicine and Biology Society, Lyon, France, 22–26 August 2007; pp. 4961–4964. [Google Scholar]
- Li, H.; Ko, L.; Lim, J.H.; Liu, J.; Wong, D.W.K.; Wong, T.Y. Image based diagnosis of cortical cataract. In Proceedings of the 30th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBS), Vancouver, BC, Canada, 20–25 August 2008; pp. 3904–3907. [Google Scholar]
- MediaPipe Solutions Guide. Google AI for Developers. Available online: https://developers.google.com/edge/mediapipe/solutions/guide (accessed on 24 June 2025).
- Chen, D.Z.; Liu, C.; Wu, J.; Zhu, L.; Ooi, B.C. Prediction of Cataract Severity Using Slit Lamp Images from a Portable Smartphone Device: A Pilot Study. Sensors 2026, 26, 1954. [Google Scholar] [CrossRef]
- Lugaresi, C.; Tang, J.; Nash, H.; McClanahan, C.; Uboweja, E.; Hays, M.; Zhang, F.; Chang, C.-L.; Yong, M.G.; Lee, J.; et al. MediaPipe: A framework for building perception pipelines. arXiv 2019, arXiv:1906.08172. [Google Scholar] [CrossRef]
- Grishchenko, I.; Ablavatski, A.; Kartynnik, Y.; Raveendran, K.; Grundmann, M. Attention mesh: High-fidelity face mesh prediction in real-time. arXiv 2020, arXiv:2006.10962. [Google Scholar] [CrossRef]
- Fan, W.; Shen, R.; Zhang, Q.; Yang, J.J.; Li, J. Principal component analysis based cataract grading and classification. In Proceedings of the 17th International Conference on E-Health Networking, Application and Services (HealthCom), Boston, MA, USA, 14–17 October 2015; IEEE: New York, NY, USA, 2015; pp. 459–462. [Google Scholar]
- Caixinha, M.; Amaro, J.; Santos, M.; Perdigão, F.; Gomes, M.; Santos, J. In-vivo automatic nuclear cataract detection and classification in an animal model by ultrasounds. IEEE Trans. Biomed. Eng. 2016, 63, 2326–2335. [Google Scholar] [CrossRef]
- Iman, M.; Arabnia, H.R.; Rasheed, K. A review of deep transfer learning and recent advancements. Technologies 2023, 11, 40. [Google Scholar] [CrossRef]
- Yang, J.J.; Li, J.; Shen, R.; Zeng, Y.; He, J.; Bi, J.; Li, Y.; Zhang, Q.; Peng, L.; Wang, Q. Exploiting ensemble learning for automatic cataract detection and grading. Comput. Methods Programs Biomed. 2016, 124, 45–57. [Google Scholar] [CrossRef] [PubMed]
- Song, W.A.; Wang, P.; Zhang, X.D.; Wang, Q. Semi-supervised learning based on cataract classification and grading. In Proceedings of the 40th IEEE Annual Computer Software and Applications Conference (COMPSAC), Atlanta, GA, USA, 10–14 June 2016; IEEE: New York, NY, USA, 2016; pp. 641–646. [Google Scholar]
- Jiang, J.; Liu, X.; Zhang, K.; Long, E.; Wang, L.; Li, W.; Liu, L.; Wang, S.; Zhu, M.; Cui, J.; et al. Automatic diagnosis of imbalanced ophthalmic images using a cost-sensitive deep convolutional neural network. Biomed. Eng. Online 2017, 16, 132. [Google Scholar] [CrossRef]
- Zhang, K.; Liu, X.; Jiang, J.; Li, W.; Wang, S.; Liu, L.; Zhou, X.; Wang, L. Prediction of postoperative complications of pediatric cataract patients using data mining. J. Transl. Med. 2019, 17, 2. [Google Scholar] [CrossRef]
- Song, W.A.; Cao, Y.; Qiao, Z.Q.; Wang, Q.; Yang, J.J. An improved semi-supervised learning method on cataract fundus image classification. In Proceedings of the 43rd IEEE Annual Computer Software and Applications Conference (COMPSAC), Milwaukee, WI, USA, 15–19 July 2019; IEEE: New York, NY, USA, 2019; pp. 362–367. [Google Scholar]
- Li, H.Q.; Lim, J.H.; Liu, J.; Mitchell, P.; Tan, A.G.; Wang, J.J.; Wong, T.Y. A computer-aided diagnosis system of nuclear cataract. IEEE Trans. Biomed. Eng. 2010, 57, 1690–1698. [Google Scholar] [CrossRef] [PubMed]
- Huang, W.; Chan, K.L.; Li, H.; Lim, J.H.; Liu, J.; Wong, T.Y. A computer assisted method for nuclear cataract grading from slit-lamp images using ranking. IEEE Trans. Med. Imaging 2011, 30, 94–107. [Google Scholar] [PubMed]
- Chow, Y.C.; Gao, X.; Li, H.; Lim, J.H.; Sun, Y.; Wong, T.Y. Automatic detection of cortical and PSC cataracts using texture and intensity analysis on retro-illumination lens images. In Proceedings of the Annual International Conference of the IEEE Engineering in Medicine and Biology Society, Boston, MA, USA, 30 August–3 September 2011; pp. 5044–5047. [Google Scholar]
- Patwari, M.A.U.; Arif, M.D.; Chowdhury, M.N.; Arefin, A.; Imam, M.I. Detection, categorization, and assessment of eye cataracts using digital image processing. In Proceedings of the First International Conference on Interdisciplinary Research and Development, Bangkok, Thailand, 31 May–1 June 2011. [Google Scholar]
- Gao, X.; Li, H.; Lim, J.H.; Wong, T.Y. Computer-aided cataract detection using enhanced texture features on retro-illumination lens images. In Proceedings of the International Conference on Image Processing (ICIP), Brussels, Belgium, 11–14 September 2011; pp. 1565–1568. [Google Scholar]
- Xu, Y.; Gao, X.; Lin, S.; Wong, D.W.K.; Liu, J.; Xu, D.; Cheng, C.Y.; Cheung, C.Y.; Wong, T.Y. Automatic grading of nuclear cataracts from slit-lamp lens images using group sparsity regression. In Medical Image Computing and Computer-Assisted Intervention—MICCAI 2013, Proceedings of the 16th International Conference, Nagoya, Japan, 22–26 September 2013, Proceedings, Part II; Lecture Notes in Computer Science; Springer: Berlin/Heidelberg, Germany, 2013; Volume 8150, pp. 468–475. [Google Scholar]
- Jesus, D.; Velte, E.; Caixinha, M.; Santos, M.; Santos, J. Using ultrasound frequency dependent attenuation and Nakagami distribution for cataract evaluation. In Proceedings of the 3rd Portuguese Bioengineering Meeting (ENBENG), Braga, Portugal, 20–23 February 2013; IEEE: New York, NY, USA, 2013. [Google Scholar]
- Srivastava, R.; Gao, X.; Yin, F.; Wong, D.W.K.; Liu, J.; Cheung, C.Y.; Wong, T.Y. Automatic nuclear cataract grading using image gradients. J. Med. Imaging 2014, 1, 014502. [Google Scholar] [CrossRef]
- Caixinha, M.; Jesus, D.A.; Velte, E.; Santos, M.J.; Santos, J.B. Using ultrasound backscattering signals and Nakagami statistical distribution to assess regional cataract hardness. IEEE Trans. Biomed. Eng. 2014, 61, 2921–2929. [Google Scholar] [CrossRef]
- Caixinha, M.; Velte, E.; Santos, M.; Santos, J. New approach for objective cataract classification based on ultrasound techniques using multiclass SVM classifiers. In Proceedings of the IEEE International Ultrasonics Symposium (IUS), Chicago, IL, USA, 3–6 September 2014; IEEE: New York, NY, USA, 2014; pp. 2402–2405. [Google Scholar]
- Caixinha, M.; Velte, E.; Santos, M.; Perdigão, F.; Amaro, J.; Gomes, M.; Santos, J. Automatic cataract classification based on ultrasound technique using machine learning: A comparative study. Phys. Procedia 2015, 70, 1221–1224. [Google Scholar] [CrossRef]
- Fuadah, Y.N.; Setiawan, A.W.; Mengko, T.L.R. Performing high accuracy of the system for cataract detection using statistical texture analysis and K-nearest neighbor. In Proceedings of the International Seminar on Intelligent Technology and Its Applications (ISITIA), Surabaya, Indonesia, 20–21 May 2015; IEEE: New York, NY, USA, 2015; pp. 85–88. [Google Scholar]
- Guo, L.; Yang, J.J.; Peng, L.; Li, J.; Liang, Q. A computer-aided healthcare system for cataract classification and grading based on fundus image analysis. Comput. Ind. 2015, 69, 72–80. [Google Scholar] [CrossRef]
- Pathak, S.; Kumar, B. A robust automated cataract detection algorithm using diagnostic opinion based parameter thresholding for telemedicine application. Electronics 2016, 5, 57. [Google Scholar] [CrossRef]
- Wang, L.; Zhang, K.; Liu, X.; Long, E.; Jiang, J.; An, Y.; Zhang, J.; Liu, Z.; Lin, Z.; Li, X.; et al. Comparative analysis of image classification methods for automatic diagnosis of ophthalmic images. Sci. Rep. 2017, 7, 41545. [Google Scholar] [CrossRef]
- Cheng, J. Sparse range-constrained learning and its application for medical image grading. IEEE Trans. Med. Imaging 2018, 37, 2729–2738. [Google Scholar] [CrossRef]
- Khan, A.A.; Akram, M.U.; Tariq, A.; Tahir, F.; Wazir, K. Automated computer aided detection of cataract. In Advances in Intelligent Systems and Computing; Springer: Cham, Switzerland, 2018; pp. 340–349. [Google Scholar]
- Jagadale, A.B.; Sonavane, S.S.; Jadav, D.V. Computer aided system for early detection of nuclear cataract using circle Hough transform. In Proceedings of the International Conference on Trends in Electronics and Informatics (ICOEI), Tirunelveli, India, 23–25 April 2019; IEEE: New York, NY, USA, 2019; pp. 1009–1012. [Google Scholar]
- Zhang, H.; He, Z. Automatic cataract grading methods based on deep learning. Comput. Methods Programs Biomed. 2019, 182, 104978. [Google Scholar] [CrossRef] [PubMed]
- Huo, C.S.; Akhtar, F.; Li, P.Z. A novel grading method of cataract based on AWM. In Proceedings of the IEEE 43rd Annual Computer Software and Applications Conference (COMPSAC), Milwaukee, WI, USA, 15–19 July 2019; IEEE: New York, NY, USA, 2019; pp. 368–373. [Google Scholar]
- Cao, L.C.; Li, H.Q.; Zhang, Y.J.; Zhang, L.; Xu, L. Hierarchical method for cataract grading based on retinal images using improved Haar wavelet. Inf. Fusion 2020, 53, 196–208. [Google Scholar] [CrossRef]
- Zhang, X.Q.; Fang, J.S.; Xiao, Z.J.; Higashita, R.; Chen, W.; Yuan, J.; Liu, J. Classification algorithm of nuclear cataract based on anterior segment coherence tomography image. Comput. Sci. 2022, 49, 204–210. [Google Scholar]



| Author’s Name/Ref No. | Imaging Modality | Use Case | Strengths | Limitations |
|---|---|---|---|---|
| Harris et al. [7] | Retro-Illumination Images | Useful for cortical and posterior subcapsular cataracts. | Effective for examining opacities; enables specific feature extraction. | Limited studies for automated grading; challenges in handling variations in image quality. |
| Tsui et al. [8] | Ultrasonic Nakagami Images | Measures cataract hardness; used in experimental setups | Provides detailed quantitative analysis of lens properties; useful for advanced research. | Requires specialized equipment; primarily tested on porcine lenses; lacks clinical validation on human subjects. |
| Keenan et al. [9] | Slit-Lamp Images | Used for detailed examination of nuclear cataracts. | High-resolution imaging; established grading systems (e.g., LOCS-III, Wisconsin Grading). | Requires expensive equipment and trained professionals; not portable; unsuitable for remote areas. |
| Tham et al. [10] | Retinal (Fundus) Images | Primarily used for other ocular diseases, but applicable to cataracts. | Potential for combined disease detection; well-suited for advanced machine learning algorithms. | Limited success in cataract grading; not cost-effective for cataract-specific analysis |
| Author’s Name/Ref No. | Research Work and Result | Advantages | Disadvantages |
|---|---|---|---|
| Tham et al. [10] | Detecting cataract using smartphones without additional devices and in uncontrolled environments with an accuracy 96.6%, specificity 93.4% and sensitivity 93.75%. | High accuracy in detecting cataracts without requiring specialized attachments; effective in real-world scenarios. | Limited to detection, not grading severity. |
| Fuadah et al. [11] | A portable and recordable slit-lamp device that could be attached to a smartphone, known as Smart Eye Camera (SEC). SEC correlated well with conventional slit-lamp microscopes for nuclear cataract grading. | Results comparable to conventional slit-lamps; reliable for clinical evaluation. | Expensive and requires a lens attachment, making it less practical for widespread rural use. |
| Hu et al. [12] | iPhone X used for cataract grading and attached an external device to the camera as a flashlight with auto-focus capability and maximum resolution. Achieved 98.2% accuracy, 97.8% specificity, and 97.2% sensitivity. | Portable, accurate, and effective for diagnosis. | Requires external hardware (costly and less convenient). |
| Hu et al. [13] | A micro-lens was attached to a smartphone to simulate a slit-lamp. Images taken by the smartphone were fed into a deep learning system, which resulted in real-time and effective screenings. | High accuracy (98.2%); portable and user-friendly device; suitable for low-resource areas | Cost of attachments and reliance on smartphone compatibility. |
| Askarian et al. [14] | Mobile-based cataract detection using statistical texture analysis applied in controlled settings for cataract detection. | Effective in specific conditions with optimal parameter settings; no external attachments required | Not designed for grading cataract severity. Effectiveness in real-world scenarios remains uncertain. |
| Features | ResNet-18 | ResNet-34 | ResNet-50 | ResNet-101 |
|---|---|---|---|---|
| Dropout rate | 0.50 (two layers) | 0.50 (one layer) | 0.50 (one layer) | 0.5 (one layer) |
| L2 Regularization | None | None | 0.01 | 0.05 |
| Trainable layers | Last 10 layers + custom head | Last 5 layers + custom head | Last 5 layers + custom head | Last 5 layers + custom head |
| Optimizer | Not specific | Not specific | Adam with exponential decay (le-4) | Adam with exponential decay (le-4) |
| Model | Cataract Category | Precision | Recall | F1-Score | Support |
|---|---|---|---|---|---|
| ResNet18 | Normal | 0.90 | 0.88 | 0.89 | 40 |
| Immature | 0.82 | 0.87 | 0.84 | 62 | |
| Mature | 0.93 | 0.89 | 0.91 | 70 | |
| ResNet34 | Normal | 0.97 | 0.90 | 0.94 | 40 |
| Immature | 0.83 | 0.93 | 0.88 | 61 | |
| Mature | 0.95 | 0.89 | 0.92 | 71 | |
| ResNet50 | Normal | 0.98 | 1.00 | 0.99 | 45 |
| Immature | 0.97 | 0.89 | 0.93 | 65 | |
| Mature | 0.89 | 0.95 | 0.92 | 62 | |
| ResNet101 | Normal | 1.00 | 0.89 | 0.94 | 35 |
| Immature | 0.84 | 0.94 | 0.89 | 67 | |
| Mature | 0.94 | 0.89 | 0.91 | 70 |
| Model | Class | Precision | Recall | F1-Score |
|---|---|---|---|---|
| ResNet18 | 88% | 88% | 88% | 88% |
| ResNet34 | 91% | 92% | 91% | 91% |
| ResNet50 | 94% | 95% | 95% | 95% |
| ResNet101 | 91% | 93% | 90% | 91% |
| Reference Number | Method | Image Type | Application | Cataract Type | Result |
|---|---|---|---|---|---|
| Current study | ResNet50 | Mobile | Grading & Classification | All types | Prec. 94%, Rec. 95%, F1 95% |
| Jiang et al. [2] | EF + Canny | Retro-illumination | Classification | PSC | 86.3% grad. Acc., 7% avg. err. in opac. ar. |
| Zaki et al. [3] | RF | Slit lamp | Classification | PC | 90% Acc. in PC cataract classif. |
| Mosa et al. [5] | KNN | Ultrasonic | Classification | Cataract | F-measure ≥ 95% (healthy vs. cataract), 76% (initial vs. severe) |
| Tsui et al. [8] | SVM | Slit lamp | Grading | NC | CS-ResCNN achieved 92% Acc., 90% Sens., AUC 97% |
| Keenan et al. [9] | ASM + SVR | Slit lamp | Grading | NC | 95% struct. detect. succ., grad. err. 0.36/5.0 |
| Fuadah et al. [11] | GLCM + KNN | Digital camera | Classification | Cataract | KNN with GLCM feats. (contrast, dissimilarity, uniformity) achieved 97.5% Acc. |
| Hu et al. [13] | PCA + RF | Fundus | Classification | Cataract | 79.8% Acc. (wav.), 82.8% (sketch) |
| Li et al. [32] | ASM + SVR | Slit lamp | Grading | NC | feat. extr. succ. rate = 95%; avg. grad. err. = 0.36 (N = 5000 + images) |
| Huang et al. [33] | ASM + Ranking | Slit lamp | Grading | NC | 95.4% Acc. (w/in 1 Gr.), avg. grad. err. 0.34 |
| Chow et al. [34] | Canny | Retroillumination | Classification | PSC | 42.2% w/in 2% ar. difference to human grad. |
| Patwari et al. [35] | IMF | Digital camera | Classification | Cataract | IMF-based mtd. achieved 94.96% Acc., 95.14% rel. |
| Gao et al. [36] | LDA | Retroillumination | Classification | PSC & CC | 78.5% Sens., 87.8% Spec. |
| Xu et al. [37] | BOF + GSR | Slit lamp | Grading | NC | 85% w/in 0.5 Gr. err., avg. err. 0.34 |
| Jesus et al. [38] | SF + SWLR | Slit lamp | Grading | NC | 87% w/in 0.5 Gr. err., avg. err. 0.33 |
| Srivastava et al. [39] | Bayesian network | Fundus | Classification | Cataract | 88% Acc. (wav. feats.) |
| Caixinha et al. [40] | Nakagami distribution + CRT | Ultrasonic | Classification | Cataract | CRT achieved 100% Sens., 72.6% Spec. (no cataract); 78.4% Sens., 86.5% Spec. (advanced cataract) |
| Caixinha et al. [41] | PCA + SVM | Ultrasonic | Classification | Cataract | 93% Ovr. Acc., 89% Prec., Sens. 89%, Spec. 94% |
| Caixinha et al. [42] | Stacking | Fundus | Classification | Cataract | 92% Acc. (detect.), 84.5% (grad.) |
| Fuadah et al. [43] | GLCM + KNN | Digital camera | Classification | Cataract | KNN with GLCM feats. achieved 94.5% average Acc. |
| Guo et al. [44] | DWT + MDA | Fundus | Classification | Cataract | DWT + MDA achieved 90.9% cataract classif. Acc., 77.1% grad. Acc. |
| Pathak et al. [45] | K-Means | Digital camera | Classification | Cataract | K-Means clustering with thresholding achieved ~98% Acc. in cataract detect. |
| Wang et al. [46] | MRF | Retroillumination | Classification | PSC | 91.2% Sens., 90.1% Spec. for PSC detect. |
| Cheng et al. [47] | SRCL | Slit lamp | Grading | NC | SRCL achieved avg. grad. err. 0.32, >85% w/in 0.5 Gr. |
| Khan et al. [48] | SVM | Digital camera | Classification | Cataract | SVM-based mtd. achieved close to 98% Acc. in cataract detect. |
| Jagadale et al. [49] | Hough circular transform | Slit lamp | Classification | NC | 90.25% Acc. in nuclear cataract detect. |
| Zhang et al. [50] | Multi-feature fusion & Stacking | Fundus | Classification | Cataract | Multi-feat. fusion & stacking achieved 92.66% Acc. (six-level grad.), 94.75% Acc. (four-level grad.) |
| Huo et al. [51] | AWM + SVM | Fundus | Classification | Cataract | AWM + SVM achieved 92% Acc. in cataract classif. w/fundus images |
| Cao et al. [52] | SVM | AS-OCT | Classification | NC | 63.70% Acc., 50% Rec., 31.34% Prec., F1 38.54% |
| Zhang et al. [53] | Haar wavelet + Voting | Fundus | Classification | Cataract | Improved Haar wav. + voting achieved 94.83% Acc. (2-class), 85.98% Acc. (4-class) |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2026 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license.
Share and Cite
Ragothaman, S.; Balaji, J.J.; Lakshminarayanan, V. Automated Cataract Grading from Smartphone-Acquired External Eye Photographs Using Deep Learning. Appl. Sci. 2026, 16, 5844. https://doi.org/10.3390/app16125844
Ragothaman S, Balaji JJ, Lakshminarayanan V. Automated Cataract Grading from Smartphone-Acquired External Eye Photographs Using Deep Learning. Applied Sciences. 2026; 16(12):5844. https://doi.org/10.3390/app16125844
Chicago/Turabian StyleRagothaman, Shriharshinii, Janarthanam Jothi Balaji, and Vasudevan Lakshminarayanan. 2026. "Automated Cataract Grading from Smartphone-Acquired External Eye Photographs Using Deep Learning" Applied Sciences 16, no. 12: 5844. https://doi.org/10.3390/app16125844
APA StyleRagothaman, S., Balaji, J. J., & Lakshminarayanan, V. (2026). Automated Cataract Grading from Smartphone-Acquired External Eye Photographs Using Deep Learning. Applied Sciences, 16(12), 5844. https://doi.org/10.3390/app16125844

