Predicting artificial visual field losses: A gaze-based inference study

J Vis. 2019 Dec 2;19(14):22. doi: 10.1167/19.14.22.

Abstract

Visual field defects are a world-wide concern, and the proportion of the population experiencing vision loss is ever increasing. Macular degeneration and glaucoma are among the four leading causes of permanent vision loss. Identifying and characterizing visual field losses from gaze alone could prove crucial in the future for screening tests, rehabilitation therapies, and monitoring. In this experiment, 54 participants took part in a free-viewing task of visual scenes while experiencing artificial scotomas (central and peripheral) of varying radii in a gaze-contingent paradigm. We studied the importance of a set of gaze features as predictors to best differentiate between artificial scotoma conditions. Linear mixed models were utilized to measure differences between scotoma conditions. Correlation and factorial analyses revealed redundancies in our data. Finally, hidden Markov models and recurrent neural networks were implemented as classifiers in order to measure the predictive usefulness of gaze features. The results show separate saccade direction biases depending on scotoma type. We demonstrate that the saccade relative angle, amplitude, and peak velocity of saccades are the best features on the basis of which to distinguish between artificial scotomas in a free-viewing task. Finally, we discuss the usefulness of our protocol and analyses as a gaze-feature identifier tool that discriminates between artificial scotomas of different types and sizes.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Adult
  • Blindness
  • Female
  • Glaucoma / physiopathology
  • Humans
  • Macular Degeneration / physiopathology
  • Male
  • Markov Chains
  • Middle Aged
  • Neural Networks, Computer
  • Saccades
  • Scotoma / physiopathology*
  • Vision Disorders
  • Visual Field Tests / methods*
  • Visual Fields*
  • Young Adult