Department of Cataract, Cornea, External Disease, Trauma, Ocular Surface and Refractive Surgery, ASG Eye Hospital, Jodhpur, Rajasthan, India.
Department of Cataract, Pediatric Ophthalmology and Strabismus, ASG Eye Hospital, Jodhpur, Rajasthan, India.
J Fr Ophtalmol. 2024 Sep;47(7):104242. doi: 10.1016/j.jfo.2024.104242. Epub 2024 Jul 15.
In the last decade, artificial intelligence (AI) has significantly impacted ophthalmology, particularly in managing corneal diseases, a major reversible cause of blindness. This review explores AI's transformative role in the corneal subspecialty, which has adopted advanced technology for superior clinical judgment, early diagnosis, and personalized therapy. While AI's role in anterior segment diseases is less documented compared to glaucoma and retinal pathologies, this review highlights its integration into corneal diagnostics through imaging techniques like slit-lamp biomicroscopy, anterior segment optical coherence tomography (AS-OCT), and in vivo confocal biomicroscopy. AI has been pivotal in refining decision-making and prognosis for conditions such as keratoconus, infectious keratitis, and dystrophies. Multi-disease deep learning neural networks (MDDNs) have shown diagnostic ability in classifying corneal diseases using AS-OCT images, achieving notable metrics like an AUC of 0.910. AI's progress over two decades has significantly improved the accuracy of diagnosing conditions like keratoconus and microbial keratitis. For instance, AI has achieved a 90.7% accuracy rate in classifying bacterial and fungal keratitis and an AUC of 0.910 in differentiating various corneal diseases. Convolutional neural networks (CNNs) have enhanced the analysis of color-coded corneal maps, yielding up to 99.3% diagnostic accuracy for keratoconus. Deep learning algorithms have also shown robust performance in detecting fungal hyphae on in vivo confocal microscopy, with precise quantification of hyphal density. AI models combining tomography scans and visual acuity have demonstrated up to 97% accuracy in keratoconus staging according to the Amsler-Krumeich classification. However, the review acknowledges the limitations of current AI models, including their reliance on binary classification, which may not capture the complexity of real-world clinical presentations with multiple coexisting disorders. Challenges also include dependency on data quality, diverse imaging protocols, and integrating multimodal images for a generalized AI diagnosis. The need for interpretability in AI models is emphasized to foster trust and applicability in clinical settings. Looking ahead, AI has the potential to unravel the intricate mechanisms behind corneal pathologies, reduce healthcare's carbon footprint, and revolutionize diagnostic and management paradigms. Ethical and regulatory considerations will accompany AI's clinical adoption, marking an era where AI not only assists but augments ophthalmic care.
在过去的十年中,人工智能(AI)在眼科领域产生了重大影响,特别是在管理角膜疾病方面,角膜疾病是一种主要的可逆转致盲原因。本综述探讨了 AI 在角膜亚专科中的变革作用,该亚专科采用了先进的技术来进行卓越的临床判断、早期诊断和个性化治疗。虽然 AI 在眼前段疾病中的作用不如青光眼和视网膜病变记录得那么多,但本综述强调了它通过成像技术(如裂隙灯生物显微镜、眼前段光学相干断层扫描(AS-OCT)和共焦生物显微镜)在角膜诊断中的整合。AI 在改善圆锥角膜、感染性角膜炎和营养不良等疾病的决策制定和预后方面发挥了关键作用。多疾病深度学习神经网络(MDDN)已显示出通过 AS-OCT 图像对角膜疾病进行分类的诊断能力,达到了显著的指标,如 AUC 为 0.910。AI 在过去二十年中的进展极大地提高了对圆锥角膜和微生物角膜炎等疾病的诊断准确性。例如,AI 在区分细菌和真菌性角膜炎方面的准确率达到 90.7%,AUC 为 0.910,在区分各种角膜疾病方面的准确率达到 0.910。卷积神经网络(CNN)增强了对彩色角膜图的分析,对圆锥角膜的诊断准确率高达 99.3%。深度学习算法在活体共焦显微镜上检测真菌菌丝方面也表现出了强大的性能,能够精确量化菌丝密度。结合断层扫描和视力的 AI 模型在根据 Amsler-Krumeich 分类对圆锥角膜进行分期方面的准确率高达 97%。然而,该综述承认了当前 AI 模型的局限性,包括它们对二进制分类的依赖,这可能无法捕捉到现实世界中存在多种共存疾病的复杂临床表现。挑战还包括对数据质量、不同成像协议的依赖以及整合多模态图像以实现通用 AI 诊断。强调 AI 模型的可解释性,以在临床环境中建立信任和适用性。展望未来,AI 有可能揭示角膜病变背后的复杂机制,减少医疗保健的碳足迹,并彻底改变诊断和管理模式。在 AI 应用于临床实践的过程中,将伴随出现伦理和监管方面的考虑因素,这标志着 AI 不仅辅助,而且增强了眼科护理。