Abstract

Purpose: This study analyses the possibility of risk‐assessment the risk of developing glaucoma over the period of 1 year based on the “Number” (provided by the Nerve Fiber Analyzer) by using a multitude of parameters that are gathered by several different eye examination techniques at the initial investigation.Methods: Within the above‐mentioned study, a total of 336 patients with an increased risk of having glaucoma were analyzed. The complete ophthalmological examination included biomicroscopy of the optic nerve head, achromatic automated perimetry (Humphrey Field Analyzer), quantitative disc (Topographic Scanning Systems, TopSS®) and nerve fiber layer measurements (Nerve Fiber Layer Analyzer, GDx®) at the beginning of the study and 1 year thereafter. Three visual field parameters (mean deviation, corrected pattern standard deviation, glaucoma hemifield test), 7 topographic and 19 polarimetric parameters were used for these statistical analyses.The problem was considered as a regression problem (RP) as well as a classification problem (CP): the simplest predictor, that is the “Number” at the initial investigation (CP), linear discriminant analyses without and with a forward stepwise variable selection algorithm (CP), four different classification tree analyses (CP) and different types of neural networks: regression networks (RP), linear networks (CP) and three layer perceptron networks (CP) with various variable selection algorithms and network architectures were applied in order to build models with sufficient prediction power. All models, except the simple predictor were tested with independent test set data, to ensure first a generalization for new patients and secondly that the results are not artifacts of the training process. The performance of the models was measured by sensitivity and specificity rates for CPs, multiple correlation coefficients between predicted and actual outcome for regression networks in each of the samples. Due to the large amount of computations, the models were computed for right eyes only.Results: The simple predictor showed a specificity rate of 73% (95% CI: 65–80%) based on all observations. The following specificity rates could be found in the test samples: the linear discriminant analysis (LDA) without variable selection algorithm could not be applied, LDA plus variable selection algorithm: 85% (95% CI: 75–93%), four different models based on classification tree analyses: 87% (95% CI: 70–96%), 90% (95% CI: 74–98%), %), 87% (95% CI: 70–96%) and 71% (95% CI: 52–86%); linear neural networks (not all eyes were classified due to the doubt option) 95% (95% CI: 75–100%) and three layer perceptron network (also with doubt option): 100% (95% CI: 81–100%). The simple predictor showed a sensitivity rate of 76% (95% CI: 69–83%) based on all observations. The following sensitivity rates were observed in the test samples: the LDA without variable selection algorithm could not be applied, LDA plus variable selection algorithm: 61% (95% CI: 49–72%), four different models based on classification tree analyses: 63% (95% CI: 47–77%), 58% (95% CI: 42–72%), 63% (95% CI: 47–77%) and 61% (95% CI: 44–75%); linear neural networks (not all eyes were classified due to the doubt option): 78% (95% CI: 56–100%) and three layer perceptron network (also with doubt option): 88% (95% CI: 47–100%). The regression network showed a correlation of 0.63 (95% CI: 0.49–0.76).Conclusion: This study yielded a negative result as to the initial exam, since in spite of different approaches none of the eight considered, quite elaborate models showed a considerably better performance than the simple predictor. Since the mean of the “Number” did not change considerably and the correlation of the “Number” (initial exam vs findings at 1 year) was moderate at best, we suggest to extend the prediction periods to 2 or even 5 years. During a longer prediction period, more changes of the “Number” may occur and further attempts can be made to find prediction models that can serve as an early warning system for the clinician.

Highlights

  • Glaucoma is a leading cause of blindness in the world (Quigley, 1996)

  • This study addresses the question, “To what extent can data from both instruments (TopSSw and GDxw), in combination with data gathered from standard ophthalmological examinations and thorough statistical analysis assist in predicting a critical change of the ‘Number’ at an early point in time?” so as to alarm the glaucoma specialist to potential damage with clinical significance

  • No prediction model is currently available for an accurate prediction of the risk based on the “Number”, the early recognition of a deterioration of the “Number” is one of the major challenges in the struggle for the prevention of glaucomatous damage

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Summary

Introduction

Glaucoma is a leading cause of blindness in the world (Quigley, 1996). The disease is characterized by optic nerve head and nerve fiber layer alterations combined with the corresponding visual field defects. In order to analyze the optic nerve head topography, the Topographic Scanning System (TopSSw, Laser Diagnostic Technologies, Inc., San Diego, CA, USA) is currently in use in a large number of glaucoma clinics and provides more objective, quantitative and three-dimensional analysis of the optic nerve head (Ahn and Kee, 2000). This confocal imaging technique uses the principle of pinhole focusing for both the incoming laser beam and the beam that returns to the imaging detector. The reproducibility of this method was found to be quite high, at least for some of the parameters studied (Geyer et al, 1998)

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