Nair Praveena P, Keskar Manjiri, Borghare Pramod T, Methwani Disha A, Nasre Yugandhara, Chaudhary Minakshi
Ophthalmology, Mandsaur Institute of Ayurved Education and Research, Bhunyakhedi, IND.
Ophthalmology, Parul institute of Ayurved, Parul University, Limda, IND.
Cureus. 2024 Sep 23;16(9):e70056. doi: 10.7759/cureus.70056. eCollection 2024 Sep.
Dry eye disease (DED) is a multifactorial condition affecting millions worldwide, characterized by discomfort, visual disturbance, and potential damage to the ocular surface. The complexity of its diagnosis and management, driven by the diversity of symptoms and underlying causes, presents significant challenges to clinicians. Artificial intelligence (AI) has emerged as a transformative tool in healthcare, offering potential solutions to these challenges through its data analysis, pattern recognition, and predictive modeling capabilities. This narrative review explores the role of AI in diagnosing, treating, and managing dry eye disease. AI-driven tools such as machine learning algorithms, imaging technologies, and diagnostic platforms are examined for their ability to enhance diagnostic accuracy, personalize treatment approaches, and optimize patient outcomes. Furthermore, the review addresses the limitations of AI technologies in ophthalmology, including the need for robust clinical validation, data privacy concerns, and the ethical considerations of integrating AI into clinical practice. The findings suggest that while AI holds promise for improving the care of patients with DED, ongoing research and development are crucial to realizing its full potential.
干眼症(DED)是一种影响全球数百万人的多因素疾病,其特征为不适、视觉障碍以及对眼表的潜在损害。症状和潜在病因的多样性导致其诊断和管理复杂,给临床医生带来了重大挑战。人工智能(AI)已成为医疗保健领域的变革性工具,通过其数据分析、模式识别和预测建模能力为这些挑战提供了潜在解决方案。本叙述性综述探讨了AI在干眼症诊断、治疗和管理中的作用。对机器学习算法、成像技术和诊断平台等AI驱动工具提高诊断准确性、个性化治疗方法和优化患者治疗效果的能力进行了研究。此外,该综述还讨论了AI技术在眼科领域的局限性,包括需要强有力的临床验证、数据隐私问题以及将AI整合到临床实践中的伦理考量。研究结果表明,虽然AI有望改善干眼症患者的护理,但持续的研发对于充分发挥其潜力至关重要。