Venkatapathappa Priyanka, Sultana Ayesha, K S Vidhya, Mansour Romy, Chikkanarayanappa Venkateshappa, Rangareddy Harish
University Health Services, St. George's University School of Medicine, St. George's, GRD.
Pathology, St. George's University School of Medicine, St. George's, GRD.
Cureus. 2024 Feb 29;16(2):e55216. doi: 10.7759/cureus.55216. eCollection 2024 Feb.
Artificial intelligence (AI) has become a revolutionary influence in the field of ophthalmology, providing unparalleled capabilities in data analysis and pattern recognition. This narrative review delves into the crucial role that AI plays, particularly in the context of anterior segment diseases with a genetic basis. Corneal dystrophies (CDs) exhibit significant genetic diversity, manifested by irregular substance deposition in the cornea. AI-driven diagnostic tools exhibit promising accuracy in the identification and classification of corneal diseases. Importantly, chat generative pre-trained transformer (ChatGPT)-4.0 shows significant advancement over its predecessor, ChatGPT-3.5. In the realm of glaucoma, AI significantly contributes to precise diagnostics through inventive algorithms and machine learning models, surpassing conventional methods. The incorporation of AI in predicting glaucoma progression and its role in augmenting diagnostic efficiency is readily apparent. Additionally, AI-powered models prove beneficial for early identification and risk assessment in cases of congenital cataracts, characterized by diverse inheritance patterns. Machine learning models achieving exceptional discrimination in identifying congenital cataracts underscore AI's remarkable potential. The review concludes by emphasizing the promising implications of AI in managing anterior segment diseases, spanning from early detection to the tailoring of personalized treatment strategies. These advancements signal a paradigm shift in ophthalmic care, offering optimism for enhanced patient outcomes and more streamlined healthcare delivery.
人工智能(AI)已成为眼科领域的一种革命性力量,在数据分析和模式识别方面具备无与伦比的能力。这篇叙述性综述深入探讨了AI所发挥的关键作用,尤其是在具有遗传基础的眼前段疾病背景下。角膜营养不良(CDs)表现出显著的遗传多样性,表现为角膜中物质的不规则沉积。人工智能驱动的诊断工具在角膜疾病的识别和分类方面显示出有前景的准确性。重要的是,聊天生成预训练变换器(ChatGPT)-4.0相比其前身ChatGPT-3.5有显著进步。在青光眼领域,AI通过创新算法和机器学习模型对精确诊断做出了重大贡献,超越了传统方法。AI在预测青光眼进展方面的应用及其在提高诊断效率方面的作用显而易见。此外,以人工智能为动力的模型在先天性白内障(具有多种遗传模式)的早期识别和风险评估中被证明是有益的。在识别先天性白内障方面实现卓越辨别能力的机器学习模型凸显了AI的巨大潜力。综述最后强调了AI在管理眼前段疾病方面的前景,从早期检测到个性化治疗策略的制定。这些进展标志着眼科护理的范式转变,为改善患者预后和更简化的医疗服务提供带来了希望。