人工智能在角膜疾病中的临床应用

IF 1.8 Q2 Medicine
Omar Nusair, Hassan Asadigandomani, Hossein Farrokhpour, Fatemeh Moosaie, Zahra Bibak-Bejandi, Alireza Razavi, Kimia Daneshvar, Mohammad Soleimani
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引用次数: 0

摘要

我们评估了人工智能模型在角膜疾病诊断中的临床应用,强调了它们的性能指标和临床潜力。对几种疾病类别进行了系统搜索:圆锥角膜(KC)、富氏角膜内皮营养不良(FECD)、感染性角膜炎(IK)、角膜神经病变、干眼病(DED)和结膜疾病。提取灵敏度、特异性、准确性和曲线下面积(AUC)等指标。在这些疾病中,卷积神经网络和其他深度学习模型经常达到或超过既定的诊断基准(AUC为0.90;灵敏度/特异性为0.85-0.90),当在前段光学相干断层扫描(as - oct)等一致的成像模式上训练时,对KC和FECD的表现尤其突出。IK和结膜疾病的模型显示出希望,但面临着图像质量不均和客观训练标准有限的挑战。DED和泪膜模型受益于多模态数据,但缺乏与专家临床医生的直接比较。尽管诊断精度很高,但来自异构数据、疾病定义、成像获取和模型训练缺乏标准化的挑战仍然存在。人工智能的广泛应用必须解决这些限制,以提高眼科护理的公平性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clinical Applications of Artificial Intelligence in Corneal Diseases.

We evaluated the clinical applications of artificial intelligence models in diagnosing corneal diseases, highlighting their performance metrics and clinical potential. A systematic search was conducted for several disease categories: keratoconus (KC), Fuch's endothelial corneal dystrophy (FECD), infectious keratitis (IK), corneal neuropathy, dry eye disease (DED), and conjunctival diseases. Metrics such as sensitivity, specificity, accuracy, and area under the curve (AUC) were extracted. Across the diseases, convolutional neural networks and other deep learning models frequently achieved or exceeded established diagnostic benchmarks (AUC > 0.90; sensitivity/specificity > 0.85-0.90), with a particularly strong performance for KC and FECD when trained on consistent imaging modalities such as anterior segment optical coherence tomography (AS-OCT). Models for IK and conjunctival diseases showed promise but faced challenges in heterogeneous image quality and limited objective training criteria. DED and tear film models benefited from multimodal data yet lacked direct comparisons with expert clinicians. Despite high diagnostic precision, challenges from heterogeneous data, a lack of standardization in disease definitions, imaging acquisition, and model training remain. The broad implementation of artificial intelligence must address these limitations to improve eye care equity.

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来源期刊
Vision (Switzerland)
Vision (Switzerland) Health Professions-Optometry
CiteScore
2.30
自引率
0.00%
发文量
62
审稿时长
11 weeks
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