Abstract
PURPOSE: To determine classification criteria for Fuchs uveitis syndrome.
DESIGN: Machine learning of cases with Fuchs uveitis syndrome and 8 other anterior uveitides.
METHODS: Cases of anterior uveitides were collected in an informatics-designed preliminary database, and a final database was constructed of cases achieving supermajority agreement on the diagnosis, using formal consensus techniques. Cases were split into a training set and a validation set. Machine learning using multinomial logistic regression was used on the training set to determine a parsimonious set of criteria that minimized the misclassification rate among the anterior uveitides. The resulting criteria were evaluated on the validation set.
RESULTS: One thousand eighty-three cases of anterior uveitides, including 146 cases of Fuchs uveitis syndrome, were evaluated by machine learning. The overall accuracy for anterior uveitides was 97.5% in the training set and 96.7% in the validation set (95% confidence interval 92.4, 98.6). Key criteria for Fuchs uveitis syndrome included unilateral anterior uveitis with or without vitritis and either: 1) heterochromia or 2) unilateral diffuse iris atrophy and stellate keratic precipitates. The overall accuracy for anterior uveitides was 97.5% in the training set (95% confidence interval [CI] 96.3, 98.4) and 96.7% in the validation set (95% CI 92.4, 98.6). The misclassification rates for FUS were 4.7% in the training set and 5.5% in the validation set, respectively.
CONCLUSIONS: The criteria for Fuchs uveitis syndrome had a low misclassification rate and appeared to perform well enough for use in clinical and translational research.
Original language | English |
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Pages (from-to) | 262-267 |
Journal | American Journal of Ophthalmology |
Volume | 228 |
Early online date | 11 May 2021 |
DOIs | |
Publication status | E-pub ahead of print - 11 May 2021 |
Bibliographical note
Copyright © 2021 Elsevier Inc. All rights reserved.ASJC Scopus subject areas
- Ophthalmology