Kitaichi Nobuyoshi, Dei Ryosuke, Hinokuma Rikutaro, Yoshikawa Ippei, Hiraoka Miki, Nakajima Kazuo
Department of Ophthalmology, Health Sciences University of Hokkaido Hospital, Ainosato 2-5, Kita-ku, Sapporo, 002-8072, Japan.
Department of Ophthalmology, Faculty of Medicine and Graduate School of Medicine, Hokkaido University, Sapporo, Japan.
Jpn J Ophthalmol. 2025 May 26. doi: 10.1007/s10384-025-01194-3.
Adenoviral keratoconjunctivitis is the most common infectious disease in ophthalmology. Its clinical forms include epidemic keratoconjunctivitis (EKC) and pharyngoconjunctival fever (PCF). EKC can be complicated by multiple subepithelial infiltrates (MSI) of the cornea, which affect visual outcomes. As at present, artificial intelligence and machine learning are becoming increasingly important not only in the diagnostic imaging field but also in the clinical data science field, we investigated a predictive model for the development of corneal MSI in adenoviral keratoconjunctivitis.
Retrospective cohort study.
One hundred and forty cases of adenovirus keratoconjunctivitis diagnosed at Hinokuma Eye Clinic were enrolled. The dependent variable was corneal MSI, and the independent variables were adenovirus genotype, bilaterality, subconjunctival hemorrhage, eyelid swelling, conjunctival edema, conjunctival opacity, pseudomembrane, corneal epithelial findings, preauricular lymphadenopathy, eye discharge, lacrimation, eye pain, foreign body sensation, and itchy eye, which were analyzed by a categorical data analysis program (CATDAP).
For single independent variables, corneal epithelial findings (Akaike information criterion, AIC=-6.46) and type 54 (AIC=-4.30) showed high predictive performance. In the combination of multiple independent variables, Type 56 or Type 37 with corneal epithelial damage also showed high predictive performance.
Predicting the occurrence of corneal MSI has until now been considered difficult. When a patient with EKC has marginal corneal epithelial or subepithelial opacities at initial presentation, it is presumed that the patient has a relatively high risk of developing MSI. Knowing the prevalent virus type in advance, would prove helpful in the diagnosis.
腺病毒性角结膜炎是眼科最常见的传染病。其临床类型包括流行性角结膜炎(EKC)和咽结膜热(PCF)。EKC可并发角膜多发性上皮下浸润(MSI),影响视力预后。目前,人工智能和机器学习不仅在诊断成像领域,而且在临床数据科学领域变得越来越重要,我们研究了腺病毒性角结膜炎角膜MSI发生的预测模型。
回顾性队列研究。
纳入日向熊眼科诊所诊断的140例腺病毒角结膜炎病例。因变量为角膜MSI,自变量为腺病毒基因型、双侧性、结膜下出血、眼睑肿胀、结膜水肿、结膜混浊、假膜、角膜上皮表现、耳前淋巴结病、眼分泌物、流泪、眼痛、异物感和眼痒,通过分类数据分析程序(CATDAP)进行分析。
对于单一自变量,角膜上皮表现(赤池信息准则,AIC = -6.46)和54型(AIC = -4.30)显示出较高的预测性能。在多个自变量的组合中,56型或37型合并角膜上皮损伤也显示出较高的预测性能。
迄今为止,预测角膜MSI的发生一直被认为很困难。当EKC患者初诊时角膜边缘上皮或上皮下有混浊时,推测该患者发生MSI的风险相对较高。提前了解流行病毒类型将有助于诊断。