PURPOSE To determine classification criteria for punctate inner choroiditis (PIC). DESIGN Machine learning of cases with PIC and 8 other posterior uveitides. METHODS Cases of posterior uveitides were collected in… Click to show full abstract
PURPOSE To determine classification criteria for punctate inner choroiditis (PIC). DESIGN Machine learning of cases with PIC and 8 other posterior uveitides. METHODS Cases of posterior uveitides were collected in an informatics-designed preliminary database, and a final database was constructed of cases achieving supermajority agreement on 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 posterior uveitides. The resulting criteria were evaluated on the validation set. RESULTS One thousand sixty-eight cases of posterior uveitides, including 144 cases of PIC, were evaluated by machine learning. Key criteria for PIC included: 1) "punctate" appearing choroidal spots <250 µm in diameter; 2) absent to minimal anterior chamber and vitreous inflammation; and 3) involvement of the posterior pole with or without mid-periphery. Overall accuracy for posterior uveitides was 93.9% in the training set and 98.0% (95% confidence interval 94.3, 99.3) in the validation set. The misclassification rates for PIC were 15% in the training set and 9% in the validation set. CONCLUSIONS The criteria for PIC had a reasonably low misclassification rate and appeared to perform sufficiently well for use in clinical and translational research.
               
Click one of the above tabs to view related content.