PLoS ONE (Jan 2024)

Improving the robustness of the Sequentially Optimized Reconstruction Strategy (SORS) for visual field testing.

  • Runjie Bill Shi,
  • Moshe Eizenman,
  • Yan Li,
  • Willy Wong

DOI
https://doi.org/10.1371/journal.pone.0301419
Journal volume & issue
Vol. 19, no. 4
p. e0301419

Abstract

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Perimetry, or visual field test, estimates differential light sensitivity thresholds across many locations in the visual field (e.g., 54 locations in the 24-2 grid). Recent developments have shown that an entire visual field may be relatively accurately reconstructed from measurements of a subset of these locations using a linear regression model. Here, we show that incorporating a dimensionality reduction layer can improve the robustness of this reconstruction. Specifically, we propose to use principal component analysis to transform the training dataset to a lower dimensional representation and then use this representation to reconstruct the visual field. We named our new reconstruction method the transformed-target principal component regression (TTPCR). When trained on a large dataset, our new method yielded results comparable with the original linear regression method, demonstrating that there is no underfitting associated with parameter reduction. However, when trained on a small dataset, our new method used on average 22% fewer trials to reach the same error. Our results suggest that dimensionality reduction techniques can improve the robustness of visual field testing reconstruction algorithms.