Fanxiu Xiong MAS , Nisha Acharya MD, MS , Narsing Rao MD , Manabu Mochizuki MD, PhD , Thomas M. Lietman MD , John A. Gonzales MD
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引用次数: 0
摘要
设计横断面研究参与者2011年1月至2015年4月期间来自12个国家19个临床中心葡萄膜炎登记处的826名葡萄膜炎患者。方法我们采用潜类分析法(LCA),结合眼肉样瘤病国际研讨会(IWOS)修订版中推荐的检查和临床症状,在多中心葡萄膜炎队列中识别潜在的 SAU 亚组。此外,我们还评估了单项检验和临床体征在对潜在亚类进行分类时的性能。结果在参与分析的 826 名参与者中,两类 LCA 模型的拟合效果最佳,贝叶斯信息标准最低,为 7218.7,熵值为 0.715。由 548 名参与者组成的一类代表了非 SAU,而由 278 名参与者组成的二类最能代表 SAU。雪球状/珍珠串状玻璃体混浊的测试分类效果最好,其次是双侧性和双侧肺门淋巴结病(BHL)。雪球/珍珠串玻璃体混浊、虹膜周围静脉炎和/或大动脉瘤、双侧性和 BHL 等 4 个分类重要性最高的检验组合在 SAU 亚型分类中的灵敏度为 84.8%,特异性为 95.4%。在三类 LCA 模型的探索性分析中,我们确定了候选的非 SAU 亚型、候选的肺部受累 SAU 亚型和候选的肺部受累较少的 SAU,该模型的拟合指数与两类模型相当。虽然单个眼部体征或测试的灵敏度并不完美,但使用综合测试对两类 LCA 模型确定的 SAU 亚类进行分类的效果令人满意。值得注意的是,3级LCA模型确定的类别,包括非SAU亚型、肺部受累的SAU亚型和肺部受累较少的SAU亚型,可能对临床实践有潜在影响,因此应在进一步的研究中加以验证。
Ocular Signs and Testing Most Compatible with Sarcoidosis-Associated Uveitis: A Latent Class Analysis
Purpose
This study aims to explore the potential subgroups of sarcoidosis-associated uveitis (SAU) within a multicenter cohort of uveitis participants.
Design
Cross-sectional study.
Participants
A cohort of 826 uveitis patients from a uveitis registry from 19 clinical centers in 12 countries between January 2011 and April 2015.
Methods
We employed a latent class analysis (LCA) incorporating recommended tests and clinical signs from the revised International Workshop on Ocular Sarcoidosis (IWOS) to identify potential SAU subgroups within the multicenter uveitis cohort. Additionally, we assessed the performance of the individual tests and clinical signs in classifying the potential subclasses.
Main Outcome Measures
Latent subtypes of SAU.
Results
Among 826 participants included in this analysis, the 2-class LCA model provided a best fit, with the lowest Bayesian information criteria of 7218.7 and an entropy of 0.715. One class, consisting of 548 participants, represented the non-SAU, whereas the second class, comprised of 278 participants, was most representative of SAU. Snowballs/string of pearls vitreous opacities had the best test performance for classification, followed by bilaterality and bilateral hilar lymphadenopathy (BHL). The combination of 4 tests with the highest classification importance, including snowballs/string of pearls vitreous opacities, periphlebitis and/or macroaneurysm, bilaterality, and BHL, demonstrated a sensitivity of 84.8% and a specificity of 95.4% in classifying the SAU subtypes. In the exploratory analysis of the 3-class LCA model, which had comparable fit indices as the 2-class model, we identified a candidate non-SAU subtype, candidate SAU subtype with pulmonary involvement, and a candidate SAU with less pulmonary involvement.
Conclusions
Latent class modeling, incorporating tests and clinical signs from the revised IWOS criteria, effectively identified a subset of participants with clinical features indicative of SAU. Though the sensitivity of individual ocular signs or tests was not perfect, using a combination of tests provided a satisfactory performance in classifying the SAU subclasses identified by the 2-class LCA model. Notably, the classes identified by the 3-class LCA model, including a non-SAU subtype, an SAU subtype with pulmonary involvement, and an SAU subtype with less pulmonary involvement, may have potential implication for clinical practice, and hence should be validated in further research.
Financial Disclosure(s)
Proprietary or commercial disclosure may be found in the Footnotes and Disclosures at the end of this article.