Submitted:
14 August 2025
Posted:
17 August 2025
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Abstract
Keywords:
1. Introduction
2. Modeling the Cognitive Processes of Experts in Staging Age-Related Macular Degeneration Based On Imaging Biomarkers
2.1. Presentation of OCT Data as an Image and a Set of Imaging Biomarkers
2.2. Analysis of the Primary OCT Data Set
- Examples of retinal OCT without AMD disease (N) (25% of the total data set),
- Early stage AMD (S) (8% of the total data set),
- Intermediate stage of AMD between dry and wet stage (P) (34% of the total data set).
- Late stage of dry (atrophic) AMD (SI) (7% of the total data set),
- Late stage of wet (neovascular) AMD (V) (17% of the total data set),
- Late stage of AMD is presence of subretinal fibrosis SF (VI) (9% of the total data set).
- Migration of pigment epithelium (mpes) indicates changes in the retinal pigment epithelium and potential progression towards atrophy.
- External retinal tubulation formations (nrt) indicate reorganization of the outer layers of the retina, and progression develops in the late stages of AMD.
- Nonexudative fluid (nezh) occurs at an intermediate stage of AMD.
2.3. Assessing the Efficiency of Direct Classification and Pattern Detection in OCT Images
- Accuracy: Reflects the DNN’s overall correctness in identifying IBs across all AMD stages.
- Precision: Indicates the reliability of the DNN’s positive IB detections.
- F1-score: Balances precision and recall, which is crucial for handling rare or imbalanced IBs.
- Specificity: Measures the correct identification of an IB’s absence, reducing false positives.
- Sensitivity (Recall): Ensures that critical IBs are not overlooked, which is vital for detecting early signs of AMD progression
- High Clinical + High Statistical Significance: The IB is highly relevant for diagnosing AMD stages and is supported by sufficient data to train an effective classifier. These are ideal candidates for inclusion.
- Low Clinical + High Statistical Significance: The IB is statistically sound but has low clinical relevance for AMD staging, making its inclusion potentially redundant.
- High Clinical + Low Statistical Significance: The IB is clinically critical but rare in the dataset. This low statistical representation hinders the development of an effective classifier without techniques like data augmentation.
- Low Clinical + Low Statistical Significance: The IB lacks both clinical and statistical relevance, suggesting it should be excluded from the dataset.
3. Creation of a Dataset and a Classification Algorithm Based On the Patterns of the Target Class
3.1. Calculating the Statistical and Clinical Significance of IBs
3.2. Optimal Selection of IBs Based On Their Statistical and Clinical Significance
- Ensuring maximum classifier performance: High performance characteristics of binary classifiers are preferred.
- Ensuring maximum clinical value: Preference should be given to IBs that are assessed as "Present," "Common," or "Defining features" for at least one stage of AMD.
-
Statistical Performance:where is a transformation function that enhances the impact of high-performing IBs:where refers to the steepness parameter and threshold , and M is the maximum penalty parameter. To assess the statistical significance of IB, , we use the Juden J-index.In the context of diagnostics, a minimum acceptable level of sensitivity and specificity is considered to be 80% [80,81]. The threshold value for statistical performance was determined to be . The steepness parameter is defined as because a steeper sigmoid results in a larger derivative near the threshold. It ensures that slight deviations in performance are represented as significant changes in the transformed output. Such an approach provides meaningful gradients for optimization, which is essential for robust parameter estimation and model convergence [82]. From the equation , it follows that in order to penalize a low value of the Judens index, it is required that . Since statistical efficiency is a more critical factor for enabling the training of the Information Bottleneck search classifier on OCT images, the penalty value was chosen to be greater than the corresponding element of the equation used for calculating clinical significance: .
- Clinical Significance:where is the average clinical significance of IB across all stages, is the clinical significance of IB for disease stage j, n is the number of disease stages, is a bonus factor for balanced coverage, and is a transformation function for clinical significance:where M is the maximum boost parameter and is the mid-point parameter. The parameter M is determined according to the same principle as when evaluating Statistical Performance, but with a lower value: . This is due to the fact that Clinical Significance has a slightly lower priority. If the Statistical Performance value is low, the classifier’s performance may be insufficient, and the IBs allocation algorithm will not be able to perform its functions effectively. The midpoint parameter was set to "Present" to encourage those who determine the stage of IBs. The coefficient 5 in a transformation function for clinical significance 5 controls the steepness of the arctangent function around . The 0.5 addition serves to normalize the arctangent output.
- Performance Threshold. Ensures the cumulative statistical performance exceeds a minimum threshold:
- Stage Coverage. Ensures adequate clinical coverage across all disease stages:
- Selection: [td, md, gv, ga, fopes, irzh, srzh, sr];
- Aggregated Transformed Performance: 0.0000;
- Aggregated Clinical Significance: 1.0000.
3.3. Fuzzy Logic-Based Interpretable AMD Stage Classification
3.3.1. Architecture Integration and Confidence Calibration
3.3.2. Fuzzy Logic Implementation for Expert Rule Modeling
4. Results
- Bar chart representation of IB confidence scores, enabling clinicians to quickly assess which image features were detected with high reliability
- Radar chart visualization of AMD stage probabilities, providing a unique "diagnostic fingerprint" for each case that facilitates comparison across different stages
5. Discussion
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
References
- Stalhammar, G.; Lardner, E.; Georgsson, M.; Seregard, S. Increasing demand for ophthalmic pathology: time trends in a laboratory with nationwide coverage. BMC Ophthalmol. 2023, 23, 88. [CrossRef]
- V, S. To Study the Morbidity Pattern of Patients Attending the Ophthalmology OPD of Tertiary Eye Care Centre with Reference to Age. Open Access Journal of Ophthalmology 2023, 8, 1–5. [CrossRef]
- Madi, H.A.; Keller, J. Increasing frequency of hospital admissions for retinal detachment and vitreo-retinal surgery in England 2000-2018 2020. [Online; accessed 2024-08-30], . [CrossRef]
- Victor, A.A. The Role of Imaging in Age-Related Macular Degeneration.
- Hu, Y.; Gao, Y.; Gao, W.; Luo, W.; Yang, Z.; Xiong, F.; Chen, Z.; Lin, Y.; Xia, X.; Yin, X.; et al. AMD-SD: An Optical Coherence Tomography Image Dataset for Wet AMD Lesions Segmentation. Sci. Data 2024, 11, 1014. [CrossRef]
- Lopukhova, E.A.; Ibragimova, R.R.; Idrisova, G.M.; Lakman, I.A.; Mukhamadeev, T.R.; Grakhova, E.P.; Bilyalov, A.R.; Kutluyarov, R.V. Machine Learning Algorithms for the Analysis of Age-Related Macular Degeneration Based on Optical Coherence Tomography: A Systematic Review. J. Biomed. Photonics Eng. 2023, 9, 020202.
- Aznabaev, B.M.; Mukhamadeev, T.R.; Dibaev, T.I. Optical coherence tomography+ angiography in the diagnosis, therapy and surgery of eye diseases; August, 2019.
- ErgünŞahin, B.; Güneş, E.D.; Kocabıyıkoğlu, A.; Keskin, A. How does workload affect test ordering behavior of physicians? An empirical investigation. Prod. Oper. Manag. 2022, 31, 2664–2680. [CrossRef]
- Winder, M.; Owczarek, A.J.; Chudek, J.; Pilch-Kowalczyk, J.; Baron, J. Are We Overdoing It? Changes in Diagnostic Imaging Workload during the Years 2010–2020 including the Impact of the SARS-CoV-2 Pandemic. Healthcare 2021, 9, 1557. [CrossRef]
- Duncan, J.R. Information overload: when less is more in medical imaging. Diagnosis 2017, 4, 179–183. [CrossRef]
- Chen, J.Y.; Vedantham, S.; Lexa, F.J. Burnout and work-work imbalance in radiology- wicked problems on a global scale. A baseline pre-COVID-19 survey of US neuroradiologists compared to international radiologists and adjacent staff. Eur. J. Radiol. 2022, 155, 110153. [CrossRef]
- Jain (Deemed-To-Be-University), Bangalore, India.; Choudhury, T.K. Enhancing Diagnostic: Machine Learning in Medical Image Analysis. Int. J. Sci. Res. Eng. Manag. 2024, 08, 1–5. [CrossRef]
- Lukmanov, A.; Agaev, V.; Tsypkin, D. Automation in Healthcare: Advantages, Prospects, Perceptual Barriers. City Healthc. 2024, 5, 181–188. [CrossRef]
- Li, J. Reliability and Efficiency of Human - Automation Interaction in Automated Decision Support Systems. Highlights Sci. Eng. Technol. 2024, 106, 431–435. [CrossRef]
- Sindhu, P.; Sivakumar, M., Healthcare Integrating Automation and Robotics-Based Industry 5.0 Advancement:. In Advances in Medical Technologies and Clinical Practice; Murugan, T.; W., J.; P., V., Eds.; IGI Global, 2024; pp. 254–264. [CrossRef]
- A, S.; Shanmugapriya, D.P.; J, S.; K, M., A Roadmap to Smart Healthcare Automation Sensors and Technologies. In Futuristic Trends in IOT Volume 2 Book 15; Godihal, D.J.H.; Sharma, D.S.K.; Mudgil, S.; J, S.; Allam, D.V.; Mishra, D.P.; Dhanalakshmi, D.; Srikanth, B.; Chaware, D.S.M.; Karthik, D.G.; et al., Eds.; Iterative International Publishers, Selfypage Developers Pvt Ltd, 2023; pp. 43–51. [CrossRef]
- At the crossroads of technology and medicine: prospects of automation in medical practice with the use of neural networks. Infokommunikacionnye Tehnol. 2024, pp. 89–93. [CrossRef]
- Amaral, A.C.K.B.; Cuthbertson, B.H. The efficiency of computerised clinical decision support systems. Lancet 2024, 403, 410–411. [CrossRef]
- Umare Thool, K.B.; Wankhede, P.A.; Yella, V.R.; Tamijeselvan, S.; Suganthi, D.; Rastogi, R. Artificial Intelligence in Medical Imaging Data Analytics using CT Images. In Proceedings of the 2023 4th International Conference on Electronics and Sustainable Communication Systems (ICESC), IEEE, Coimbatore, India, jul 6 2023; pp. 1619–1625. [Online; accessed 2024-09-02], . [CrossRef]
- Przystalski, K.; Thanki, R.M., Computer Vision for Medical Data Analysis. In Explainable Machine Learning in Medicine; Springer International Publishing: Cham, 2024; pp. 53–66. collection-title: Synthesis Lectures on Engineering, Science, and Technology. [CrossRef]
- Sarvakar, K.; Yadav, R.; Patel, A.; Patel, C.D.; Rana, K.; Borisagar, V., Advanced Analytics and Machine Learning Algorithms for Healthcare Decision Support Systems: A Study. In Advances in Healthcare Information Systems and Administration; Murugan, T.; W., J.; P., V., Eds.; IGI Global, 2024; pp. 16–50. [CrossRef]
- Chaddad, A.; Peng, J.; Xu, J.; Bouridane, A. Survey of Explainable AI Techniques in Healthcare. Sensors 2023, 23, 634. [CrossRef]
- Nazmul Alam, M.; Kabir, M.S. Explainable AI in Healthcare: Enhancing Transparency and Trust upon Legal and Ethical Consideration 2023.
- Badhoutiya, A.; Verma, R.P.; Shrivastava, A.; Laxminarayanamma, K.; Rao, A.L.N.; Khan, A.K. Random Forest Classification in Healthcare Decision Support for Disease Diagnosis. In Proceedings of the 2023 International Conference on Artificial Intelligence for Innovations in Healthcare Industries (ICAIIHI), IEEE, Raipur, India, dec 29 2023; pp. 1–7. [Online; accessed 2024-09-16], . [CrossRef]
- Choi, H.W.; Abdirayimov, S. Demonstrating the Power of SHAP Values in AI-Driven Classification of Marvel Characters. J. Multimed. Inf. Syst. 2024, 11, 167–172. [CrossRef]
- Chauvie, S.; Mazzoni, L.N.; O’Doherty, J. A Review on the Use of Imaging Biomarkers in Oncology Clinical Trials: Quality Assurance Strategies for Technical Validation. Tomography 2023, 9, 1876–1902. [CrossRef]
- Cho, W.C.; Zhou, F.; Li, J.; Hua, L.; Liu, F. Editorial: Biomarker Detection Algorithms and Tools for Medical Imaging or Omics Data. Front. Genet. 2022, 13. [CrossRef]
- Chiu, F.Y.; Yen, Y. Imaging Biomarkers for Clinical Applications in Neuro-Oncology: Current Status and Future Perspectives. Biomark. Res. 2023, 11, 35. [CrossRef]
- Pai, S.; Bontempi, D.; Hadzic, I.; Prudente, V.; Sokač, M.; Chaunzwa, T.L.; Bernatz, S.; Hosny, A.; Mak, R.H.; Birkbak, N.J.; et al. Foundation Model for Cancer Imaging Biomarkers. Nat. Mach. Intell. 2024, 6, 354–367. [CrossRef]
- Reeja, S.R.; Mounika, S.; Mohanty, S.N. Biomarkers Classification for Various Brain Disease using Artificial Intelligence Approach-A Study 2023. [Online; accessed 2024-08-30], . [CrossRef]
- Trueblood, J.S.; Holmes, W.R.; Seegmiller, A.C.; Douds, J.; Compton, M.; Szentirmai, E.; Woodruff, M.; Huang, W.; Stratton, C.; Eichbaum, Q. The impact of speed and bias on the cognitive processes of experts and novices in medical image decision-making. Cogn. Res. Princ. Implic. 2018, 3, 28. [CrossRef]
- Rasouli, S.; Alkurdi, D.; Jia, B. The Role of Artificial Intelligence in Modern Medical Education and Practice: A Systematic Literature Review 2024. [Online; accessed 2024-08-30], . [CrossRef]
- Deshmukh, A. Artificial Intelligence in Medical Imaging: Applications of Deep Learning for Disease Detection and Diagnosis. Univers. Res. Rep. 2024, 11, 31–36. [CrossRef]
- Zhou, X.; Zhang, J.; Deng, X.M.; Fu, F.M.; Wang, J.M.; Zhang, Z.Y.; Zhang, X.Q.; Luo, Y.X.; Zhang, S.Y. Precision diagnostics of COVID-19 and Mycoplasma pneumoniae through random forest and biomarkers integration 2024. [Online; accessed 2024-09-16], . [CrossRef]
- Ltifi, H.; Benmohamed, E.; Kolski, C.; Ben Ayed, M. Adapted Visual Analytics Process for Intelligent Decision-Making: Application in a Medical Context. Int. J. Inf. Technol. Decis. Mak. 2020, 19, 241–282. [CrossRef]
- Stahl, A. The Diagnosis and Treatment of Age-Related Macular Degeneration. Deutsches Ärzteblatt international 2020. [CrossRef]
- Wong, T.Y.; Lanzetta, P.; Bandello, F.; Eldem, B.; Navarro, R.; Lövestam-Adrian, M.; Loewenstein, A. Current Concepts and Modalities for Monitoring the Fellow Eye in Neovascular Age-Related Macular Degeneration: An Expert Panel Consensus. Retina 2020, 40, 599–611. [CrossRef]
- Ferris, F.L.; Wilkinson, C.; Bird, A.; Chakravarthy, U.; Chew, E.; Csaky, K.; Sadda, S.R. Clinical Classification of Age-related Macular Degeneration. Ophthalmology 2013, 120, 844–851. [CrossRef]
- Handa, J.T.; Bowes Rickman, C.; Dick, A.D.; Gorin, M.B.; Miller, J.W.; Toth, C.A.; Ueffing, M.; Zarbin, M.; Farrer, L.A. A Systems Biology Approach towards Understanding and Treating Non-Neovascular Age-Related Macular Degeneration. 10. [CrossRef]
- Lopukhova, E.A.; Yusupov, E.S.; Ibragimova, R.R.; Idrisova, G.M.; Mukhamadeev, T.R.; Grakhova, E.P.; Kutluyarov, R.V. Hybrid Integent Staging of Age-Related Macular Degeneration for Decision-Making on Patient Management Tactics. 15, 1945. [CrossRef]
- Sirocchi, C.; Bogliolo, A.; Montagna, S. Medical-Informed Machine Learning: Integrating Prior Knowledge into Medical Decision Systems. BMC Med. Inform. Decis. Mak. 2024, 24, 186. [CrossRef]
- Guo, C.; Pleiss, G.; Sun, Y.; Weinberger, K.Q. On Calibration of Modern Neural Networks. In Proceedings of the International Conference on Machine Learning. PMLR, pp. 1321–1330.
- Liang, S.; Li, Y.; Srikant, R. Enhancing The Reliability of Out-of-distribution Image Detection in Neural Networks.
- Age-Related Eye Disease Study Research Group. A Randomized, Placebo-Controlled, Clinical Trial of High-Dose Supplementation with Vitamins C and E, Beta Carotene, and Zinc for Age-Related Macular Degeneration and Vision Loss: AREDS Report No. 8. 119, 1417–1436. [CrossRef]
- Lad, E.M.; Finger, R.P.; Guymer, R. Biomarkers for the Progression of Intermediate Age-Related Macular Degeneration. Ophthalmol. Ther. 2023, 12, 2917–2941. [CrossRef]
- Vallino, V.; Berni, A.; Coletto, A.; Serafino, S.; Bandello, F.; Reibaldi, M.; Borrelli, E. Structural OCT and OCT Angiography Biomarkers Associated with the Development and Progression of Geographic Atrophy in AMD. 262, 3421–3436. [CrossRef]
- Garcia-Layana, A.; Cabrera-López, F.; García-Arumí, J.; Arias-Barquet, L.; Ruiz-Moreno, J.M. Early and Intermediate Age-Related Macular Degeneration: Update and Clinical Review. Clin. Interv. Aging 2017, Volume 12, 1579–1587. [CrossRef]
- Waldstein, S.M.; Vogl, W.D.; Bogunovic, H.; Sadeghipour, A.; Riedl, S.; Schmidt-Erfurth, U. Characterization of Drusen and Hyperreflective Foci as Biomarkers for Disease Progression in Age-Related Macular Degeneration Using Artificial Intelligence in Optical Coherence Tomography. JAMA Ophthalmol. 2020, 138, 740–747. [CrossRef]
- Romano, F.; Ding, X.; Yuan, M.; Vingopoulos, F.; Garg, I.; Choi, H.; Alvarez, R.; Tracy, J.H.; Finn, M.; Razavi, P.; et al. Progressive Choriocapillaris Changes on Optical Coherence Tomography Angiography Correlate With Stage Progression in AMD. 65, 21. [CrossRef]
- Asani, B.; Holmberg, O.; Schiefelbein, J.B.; Hafner, M.; Herold, T.; Spitzer, H.; Siedlecki, J.; Kern, C.; Kortuem, K.U.; Frishberg, A.; et al. Evaluation of OCT Biomarker Changes in Treatment-Naive Neovascular AMD Using a Deep Semantic Segmentation Algorithm. 38, 3180–3186. [CrossRef]
- Tenbrock, L.; Wolf, J.; Boneva, S.; Schlecht, A.; Agostini, H.; Wieghofer, P.; Schlunck, G.; Lange, C. Subretinal Fibrosis in Neovascular Age-Related Macular Degeneration: Current Concepts, Therapeutic Avenues, and Future Perspectives. Cell Tissue Res. 2022, 387, 361–375. [CrossRef]
- Bird, A.C.; Phillips, R.L.; Hageman, G.S. Geographic Atrophy: A Histopathological Assessment. JAMA Ophthalmol. 2014, 132, 338–345. [CrossRef]
- Fang, V.; Gomez-Caraballo, M.; Lad, E.M. Biomarkers for Nonexudative Age-Related Macular Degeneration and Relevance for Clinical Trials: A Systematic Review. Mol. Diagn. Ther. 2021, 25, 691–713. [CrossRef]
- Flores, R.; Carneiro, Â.; Tenreiro, S.; Seabra, M.C. Retinal Progression Biomarkers of Early and Intermediate Age-Related Macular Degeneration. Life 2021, 12, 36. [CrossRef]
- Saha, S.; Nassisi, M.; Wang, M.; Lindenberg, S.; Kanagasingam, Y.; Sadda, S.; Hu, Z.J. Automated Detection and Classification of Early AMD Biomarkers Using Deep Learning. 9, 10990. [CrossRef]
- Latifi-Navid, H.; Barzegar Behrooz, A.; Jamehdor, S.; Davari, M.; Latifinavid, M.; Zolfaghari, N.; Piroozmand, S.; Taghizadeh, S.; Bourbour, M.; Shemshaki, G.; et al. Construction of an Exudative Age-Related Macular Degeneration Diagnostic and Therapeutic Molecular Network Using Multi-Layer Network Analysis, a Fuzzy Logic Model, and Deep Learning Techniques: Are Retinal and Brain Neurodegenerative Disorders Related? 16, 1555. [CrossRef]
- Vinković, M.; Kopić, A.; Benašić, T. Anti-VEGF Treatment and Optical Coherence Tomography Biomarkers in Wet Age-Related Macular Degeneration. [CrossRef]
- Sharma, A.; Parachuri, N.; Kumar, N.; Bandello, F.; Kuppermann, B.D.; Loewenstein, A.; Regillo, C.; Chakravarthy, U. Fluid-Based Prognostication in n-AMD: Type 3 Macular Neovascularisation Needs an Analysis in Isolation. 105, 297–298. [CrossRef]
- Gill, K.; Yoo, H.S.; Chakravarthy, H.; Granville, D.J.; Matsubara, J.A. Exploring the Role of Granzyme B in Subretinal Fibrosis of Age-Related Macular Degeneration. 15. [CrossRef]
- Miladinović, A.; Biscontin, A.; Ajčević, M.; Kresevic, S.; Accardo, A.; Marangoni, D.; Tognetto, D.; Inferrera, L. Evaluating Deep Learning Models for Classifying OCT Images with Limited Data and Noisy Labels. Sci. Rep. 2024, 14, 30321. [CrossRef]
- Wu, Z.; Zhuo, R.; Liu, X.; Wu, B.; Wang, J. Enhancing Surgical Decision-Making in NEC with ResNet18: A Deep Learning Approach to Predict the Need for Surgery through x-Ray Image Analysis. Front. Pediatr. 2024, 12, 1405780. [CrossRef]
- Alex, V.; Khened, M.; Ayyachamy, S.; Krishnamurthi, G. Medical Image Retrieval Using Resnet-18 for Clinical Diagnosis. In Proceedings of the Medical Imaging 2019: Imaging Informatics for Healthcare, Research, and Applications; Bak, P.R.; Chen, P.H., Eds., San Diego, United States, 2019; p. 35. [CrossRef]
- Rahman Siddiquee, M.M.; Shah, J.; Chong, C.; Nikolova, S.; Dumkrieger, G.; Li, B.; Wu, T.; Schwedt, T.J. Headache Classification and Automatic Biomarker Extraction from Structural MRIs Using Deep Learning. Brain Commun. 2022, 5, fcac311. [CrossRef]
- Imran, H.M.; Asad, M.A.A.; Abdullah, T.A.; Chowdhury, S.I.; Alamin, M. Few Shot Learning for Medical Imaging: A Review of Categorized Images. pp. 1–7. [CrossRef]
- Malhotra, A. Single-Shot Image Recognition Using Siamese Neural Networks. In Proceedings of the 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE). IEEE, pp. 2550–2553. [CrossRef]
- Xian, Y.; Lampert, C.; Schiele, B.; Akata, Z. Zero-Shot Learning - A Comprehensive Evaluation of the Good, the Bad and the Ugly. PP. [CrossRef]
- Xu, C.; Zheng, H.; Liu, K.; Chen, Y.; Ye, C.; Niu, C.; Jin, S.; Li, Y.; Gao, H.; Hu, J.; et al. Deep Learning for Retina Structural Biomarker Classification Using OCT Images.
- Lu, C.; Wang, X.; Yang, A.; Liu, Y.; Dong, Z. A Few-Shot-Based Model-Agnostic Meta-Learning for Intrusion Detection in Security of Internet of Things. 10, 21309–21321. [CrossRef]
- Wang, H.; Tong, X.; Wang, P.; Xu, Z.; Song, L. Few-Shot Transfer Learning Method Based on Meta-Learning and Graph Convolution Network for Machinery Fault Diagnosis. p. 09544062221148033. [CrossRef]
- Zhao, Z.; Ding, H.; Cai, D.; Yan, Y. Gated Multi-Scale Attention Transformer For Few-Shot Medical Image Segmentation. pp. 1–5. [CrossRef]
- Tang, S.; Yan, S.; Qi, X.; Gao, J.; Ye, M.; Zhang, J.; Zhu, X. Few-Shot Medical Image Segmentation with High-Fidelity Prototypes. 100, 103412, . [CrossRef]
- Wang, J.; Wang, T.; Xu, J.; Zhang, Z.; Wang, H.; Li, H. Zero-Shot Diagnosis of Unseen Pulmonary Diseases via Spatial Domain Adaptive Correction and Guidance by ChatGPT-4o. pp. 2597–2604. [CrossRef]
- Hong, J.H.; Cho, S.B. A Probabilistic Multi-Class Strategy of One-vs.-Rest Support Vector Machines for Cancer Classification. 71, 3275–3281. [CrossRef]
- Jang, J.; Kim, C. One-vs-Rest Network-based Deep Probability Model for Open Set Recognition.
- Flanagan, A.R.; Glavin, F.G. A Systematic Review of Multi-Class and One-vs-Rest Classification Techniques for Near-Infrared Spectra of Crop Cultivars. pp. 1–8. [CrossRef]
- Youden, W.J. Index for Rating Diagnostic Tests. Cancer 1950, 3, 32–35.
- Shreffler, J.; Huecker, M.R. Diagnostic Testing Accuracy: Sensitivity, Specificity, Predictive Values and Likelihood Ratios. In StatPearls; StatPearls Publishing: Treasure Island (FL), 2025.
- English, P.A.; Williams, J.A.; Martini, J.F.; Motzer, R.J.; Valota, O.; Buller, R.E. A Case for the Use of Receiver Operating Characteristic Analysis of Potential Clinical Efficacy Biomarkers in Advanced Renal Cell Carcinoma. Future Oncol. 2016, 12, 175–182. [CrossRef]
- Nebro, A.J.; Galeano-Brajones, J.; Luna, F.; Coello Coello, C.A. Is NSGA-II Ready for Large-Scale Multi-Objective Optimization? 27, 103. [CrossRef]
- Glascoe, F.P. Screening for Developmental and Behavioral Problems. 11, 173–179. [CrossRef]
- Vanderheyden, A.M. Technical Adequacy of Response to Intervention Decisions. 77, 335–350. [CrossRef]
- McDowall, L.M.; Dampney, R.A.L. Calculation of Threshold and Saturation Points of Sigmoidal Baroreflex Function Curves. 291, H2003–H2007. [CrossRef]
- Mukhoti, J.; Kulharia, V.; Sanyal, A.; Golodetz, S.; Torr, P.H.S.; Dokania, P.K. Calibrating Deep Neural Networks using Focal Loss. ArXiv 2020, abs/2002.09437.
- Leão, W. Attended Temperature Scaling: A Practical Approach for Calibrating Deep Neural Networks.
- Dabah, L.; Tirer, T. On Temperature Scaling and Conformal Prediction of Deep Classifiers. [CrossRef]
- Mamalakis, M.; de Vareilles, H.; Murray, G.; Lio, P.; Suckling, J. The Explanation Necessity for Healthcare AI 2024. version: 1, . [CrossRef]
- Metta, C.; Beretta, A.; Pellungrini, R.; Rinzivillo, S.; Giannotti, F. Towards Transparent Healthcare: Advancing Local Explanation Methods in Explainable Artificial Intelligence. Bioengineering 2024, 11, 369. [CrossRef]




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