Comparison of nonparametric methods for static visual field interpolation [PDF]

Apr 22, 2016 - Interpolation of static visual field sensitivity data offers several benefits. By resampling examination

9 downloads 10 Views 3MB Size

Recommend Stories


Nonparametric Methods
Never let your sense of morals prevent you from doing what is right. Isaac Asimov

Nonparametric Methods for Changepoint Detection
Stop acting so small. You are the universe in ecstatic motion. Rumi

ACCURACY ASSESSMENT AND COMPARISON Of INTERPOLATION METHODS ON GEOID
Don't fear change. The surprise is the only way to new discoveries. Be playful! Gordana Biernat

Geomorphometric comparison of DEMs built by different interpolation methods
I tried to make sense of the Four Books, until love arrived, and it all became a single syllable. Yunus

Economic Applications of Nonparametric Methods
If your life's work can be accomplished in your lifetime, you're not thinking big enough. Wes Jacks

Comparison of Two Static Aeroelastic Divergence Methods in MSC.Nastran
We must be willing to let go of the life we have planned, so as to have the life that is waiting for

k-envelopes for real interpolation methods
Ask yourself: Where are you living right now – the past, future or present? Next

Multiple testing corrections, nonparametric methods, and random field theory
We can't help everyone, but everyone can help someone. Ronald Reagan

Criteria for Visual Field Progression
Everything in the universe is within you. Ask all from yourself. Rumi

Static Field Detector
Happiness doesn't result from what we get, but from what we give. Ben Carson

Idea Transcript


Med Biol Eng Comput (2017) 55:117–126 DOI 10.1007/s11517-016-1485-x

ORIGINAL ARTICLE

Comparison of nonparametric methods for static visual field interpolation Travis B. Smith1 · Ning Smith2 · Richard G. Weleber1 

Received: 21 September 2015 / Accepted: 4 March 2016 / Published online: 22 April 2016 © The Author(s) 2016. This article is published with open access at Springerlink.com

Abstract  Visual field testing with standard automated perimetry produces a sparse representation of a sensitivity map, sometimes called the hill of vision (HOV), for the retina. Interpolation or resampling of these data is important for visual display, clinical interpretation, and quantitative analysis. Our objective was to compare several popular interpolation methods in terms of their utility to visual field testing. We evaluated nine nonparametric scattered data interpolation algorithms and compared their performances in normal subjects and patients with retinal degeneration. Interpolator performance was assessed by leave-one-out cross-validation accuracy and high-density interpolated HOV surface smoothness. Radial basis function (RBF) interpolation with a linear kernel yielded the best accuracy, with an overall mean absolute error (MAE) of 2.01 dB and root-mean-square error (RMSE) of 3.20 dB that were significantly better than all other methods (p ≤ 0.003). Thinplate spline RBF interpolation yielded the best smoothness results (p 

Smile Life

When life gives you a hundred reasons to cry, show life that you have a thousand reasons to smile

Get in touch

© Copyright 2015 - 2024 PDFFOX.COM - All rights reserved.