Current roles of artificial intelligence in ophthalmology

Q4 Biochemistry, Genetics and Molecular Biology Exploration of medicine Pub Date : 2023-12-28 DOI:10.37349/emed.2023.00194
K. Keskinbora
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Abstract

Artificial intelligence (AI) studies are increasingly reporting successful results in the diagnosis and prognosis prediction of ophthalmological diseases as well as systemic disorders. The goal of this review is to detail how AI can be utilized in making diagnostic predictions to enhance the clinical setting. It is crucial to keep improving methods that emphasize clarity in AI models. This makes it possible to evaluate the information obtained from ocular imaging and easily incorporate it into therapeutic decision-making procedures. This will contribute to the wider acceptance and adoption of AI-based ocular imaging in healthcare settings combining advanced machine learning and deep learning techniques with new developments. Multiple studies were reviewed and evaluated, including AI-based algorithms, retinal images, fundus and optic nerve head (ONH) photographs, and extensive expert reviews. In these studies, carried out in various countries and laboratories of the world, it is seen those complex diagnoses, which can be detected systemic diseases from ophthalmological images, can be made much faster and with higher predictability, accuracy, sensitivity, and specificity, in addition to ophthalmological diseases, by comparing large numbers of images and teaching them to the computer. It is now clear that it can be taken advantage of AI to achieve diagnostic certainty. Collaboration between the fields of medicine and engineering foresees promising advances in improving the predictive accuracy and precision of future medical diagnoses achieved by training machines with this information. However, it is important to keep in mind that each new development requires new additions or updates to various social, psychological, ethical, and legal regulations.
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人工智能在眼科领域的当前作用
人工智能(AI)研究在眼科疾病和全身性疾病的诊断和预后预测方面取得了越来越多的成果。本综述旨在详细介绍如何利用人工智能进行诊断预测,以改善临床环境。不断改进强调人工智能模型清晰度的方法至关重要。这使得评估从眼部成像获得的信息并将其轻松纳入治疗决策程序成为可能。这将有助于在医疗机构中更广泛地接受和采用基于人工智能的眼部成像技术,并将先进的机器学习和深度学习技术与新的发展结合起来。我们对多项研究进行了审查和评估,包括基于人工智能的算法、视网膜图像、眼底和视神经头(ONH)照片以及广泛的专家评论。在世界各国和实验室开展的这些研究中可以看到,除了眼科疾病外,通过比较大量图像并将其传授给计算机,可以更快地做出复杂的诊断,并具有更高的可预测性、准确性、灵敏度和特异性,从而可以从眼科图像中检测出系统性疾病。现在很明显,可以利用人工智能来实现诊断的确定性。医学和工程学领域的合作可以预见,通过利用这些信息对机器进行训练,在提高未来医疗诊断的预测准确性和精确性方面将取得可喜的进展。然而,重要的是要记住,每一次新的发展都需要对各种社会、心理、伦理和法律法规进行新的补充或更新。
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来源期刊
CiteScore
2.10
自引率
0.00%
发文量
0
审稿时长
13 weeks
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