Reversal of Glaucoma Hemifield Test Results and Visual Field Features in Glaucoma.
Mengyu Wang, Louis R Pasquale, Lucy Q Shen, Michael V Boland, Sarah R Wellik, Moraes Carlos Gustavo De, Jonathan S Myers, Hui Wang, Neda Baniasadi, Dian Li, Rafaella Nascimento E Silva, Peter J Bex, Tobias Elze
Summary
Using VF features may predict the GHT results reversal to WNL after 2 consecutive ONL results.
Abstract
PURPOSE
To develop a visual field (VF) feature model to predict the reversal of glaucoma hemifield test (GHT) results to within normal limits (WNL) after 2 consecutive outside normal limits (ONL) results.
DESIGN
Retrospective cohort study.
PARTICIPANTS
Visual fields of 44 503 eyes from 26 130 participants.
METHODS
Eyes with 3 or more consecutive reliable VFs measured with the Humphrey Field Analyzer (Swedish interactive threshold algorithm standard 24-2) were included. Eyes with ONL GHT results for the 2 baseline VFs were selected. We extracted 3 categories of VF features from the baseline tests: (1) VF global indices (mean deviation [MD] and pattern standard deviation), (2) mismatch between baseline VFs, and (3) VF loss patterns (archetypes). Logistic regression was applied to predict the GHT results reversal. Cross-validation was applied to evaluate the model on testing data by the area under the receiver operating characteristic curve (AUC). We ascertained clinical glaucoma status on a patient subset (n = 97) to determine the usefulness of our model.
MAIN OUTCOME MEASURES
Predictive models for GHT results reversal using VF features.
RESULTS
For the 16 604 eyes with 2 initial ONL results, the prevalence of a subsequent WNL result increased from 0.1% for MD < -12 dB to 13.8% for MD ≥-3 dB. Compared with models with VF global indices, the AUC of predictive models increased from 0.669 (MD ≥-3 dB) and 0.697 (-6 dB ≤ MD < -3 dB) to 0.770 and 0.820, respectively, by adding VF mismatch features and computationally derived VF archetypes (P < 0.001 for both). The GHT results reversal was associated with a large mismatch between baseline VFs. Moreover, the GHT results reversal was associated more with VF archetypes of nonglaucomatous loss, severe widespread loss, and lens rim artifacts. For a subset of 97 eyes, using our model to predict absence of glaucoma based on clinical evidence after 2 ONL results yielded significantly better prediction accuracy (87.7%; P < 0.001) than predicting GHT results reversal (68.8%) with a prescribed specificity 67.7%.
CONCLUSIONS
Using VF features may predict the GHT results reversal to WNL after 2 consecutive ONL results.
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Discussion
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