| Literature DB >> 35360739 |
Chenchen Zhang1, Jing Zhao1, Zhe Zhu1, Yanxia Li1, Ke Li1, Yuanping Wang1, Yajuan Zheng1.
Abstract
With the continuous development of computer technology, big data acquisition and imaging methods, the application of artificial intelligence (AI) in medical fields is expanding. The use of machine learning and deep learning in the diagnosis and treatment of ophthalmic diseases is becoming more widespread. As one of the main causes of visual impairment, myopia has a high global prevalence. Early screening or diagnosis of myopia, combined with other effective therapeutic interventions, is very important to maintain a patient's visual function and quality of life. Through the training of fundus photography, optical coherence tomography, and slit lamp images and through platforms provided by telemedicine, AI shows great application potential in the detection, diagnosis, progression prediction and treatment of myopia. In addition, AI models and wearable devices based on other forms of data also perform well in the behavioral intervention of myopia patients. Admittedly, there are still some challenges in the practical application of AI in myopia, such as the standardization of datasets; acceptance attitudes of users; and ethical, legal and regulatory issues. This paper reviews the clinical application status, potential challenges and future directions of AI in myopia and proposes that the establishment of an AI-integrated telemedicine platform will be a new direction for myopia management in the post-COVID-19 period.Entities:
Keywords: artificial intelligence; deep learning; machine learning; myopia; telemedicine
Year: 2022 PMID: 35360739 PMCID: PMC8962670 DOI: 10.3389/fmed.2022.840498
Source DB: PubMed Journal: Front Med (Lausanne) ISSN: 2296-858X
Common terminologies used to evaluate AI model performance.
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| True positive (TP) | False negative (FN) |
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| False positive (FP) | True negative (TN) | |
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| Accuracy = (TP+TN)/(TP+FN+FP+TN) | ||
| Sensitivity = TP/(TP+TN) | |||
| Specificity = TN/(TN+FP) | |||
| True positive rate (TPR) = Sensitivity | |||
| False positive rate (FPR) = 1-Specificity | |||
Figure 1Three examples of ROC curve are illustrated. (A) AUC=1: A “perfect” classifier; (B) 0.5
Figure 2The workflow of AI-integrated telemedicine platform for myopia. (A) is the workflow of initial grouping, including myopia screening, files establishing, AI analysis and progression risk stratification for myopia patients. (B) is the workflow of continuous management involving self-monitoring at home, primary healthcare and specialized hospital services.