Estimating outflow facility parameters for the human eye using hypotensive pressure-time data.

We have previously developed a new theory for pressure dependent outflow from the human eye, and tested the model using experimental data at intraocular pressures above normal eye pressures. In this paper, we use our model to analyze a hypotensive pressure-time dataset obtained following application...

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Main Authors: David W Smith, Chang-Joon Lee, Bruce S Gardiner
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0238146
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spelling doaj-d3801a5fcd964900bc5c0f71fcb4ffcd2021-03-03T22:02:49ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-01158e023814610.1371/journal.pone.0238146Estimating outflow facility parameters for the human eye using hypotensive pressure-time data.David W SmithChang-Joon LeeBruce S GardinerWe have previously developed a new theory for pressure dependent outflow from the human eye, and tested the model using experimental data at intraocular pressures above normal eye pressures. In this paper, we use our model to analyze a hypotensive pressure-time dataset obtained following application of a Honan balloon. Here we show that the hypotensive pressure-time data can be successfully analyzed using our proposed pressure dependent outflow model. When the most uncertain initial data point is removed from the dataset, then parameter estimates are close to our previous parameter estimates, but clearly parameter estimates are very sensitive to assumptions. We further show that (i) for a measured intraocular pressure-time curve, the estimated model parameter for whole eye surface hydraulic conductivity is primarily a function of the ocular rigidity, and (ii) the estimated model parameter that controls the rate of decrease of outflow with increasing pressure is primarily a function of the convexity of the monotonic pressure-time curve. Reducing parameter uncertainty could be accomplished using new technologies to obtain higher quality datasets, and by gathering additional data to better define model parameter ranges for the normal eye. With additional research, we expect the pressure dependent outflow analysis described herein may find applications in the differential diagnosis, prognosis and monitoring of the glaucomatous eye.https://doi.org/10.1371/journal.pone.0238146
collection DOAJ
language English
format Article
sources DOAJ
author David W Smith
Chang-Joon Lee
Bruce S Gardiner
spellingShingle David W Smith
Chang-Joon Lee
Bruce S Gardiner
Estimating outflow facility parameters for the human eye using hypotensive pressure-time data.
PLoS ONE
author_facet David W Smith
Chang-Joon Lee
Bruce S Gardiner
author_sort David W Smith
title Estimating outflow facility parameters for the human eye using hypotensive pressure-time data.
title_short Estimating outflow facility parameters for the human eye using hypotensive pressure-time data.
title_full Estimating outflow facility parameters for the human eye using hypotensive pressure-time data.
title_fullStr Estimating outflow facility parameters for the human eye using hypotensive pressure-time data.
title_full_unstemmed Estimating outflow facility parameters for the human eye using hypotensive pressure-time data.
title_sort estimating outflow facility parameters for the human eye using hypotensive pressure-time data.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2020-01-01
description We have previously developed a new theory for pressure dependent outflow from the human eye, and tested the model using experimental data at intraocular pressures above normal eye pressures. In this paper, we use our model to analyze a hypotensive pressure-time dataset obtained following application of a Honan balloon. Here we show that the hypotensive pressure-time data can be successfully analyzed using our proposed pressure dependent outflow model. When the most uncertain initial data point is removed from the dataset, then parameter estimates are close to our previous parameter estimates, but clearly parameter estimates are very sensitive to assumptions. We further show that (i) for a measured intraocular pressure-time curve, the estimated model parameter for whole eye surface hydraulic conductivity is primarily a function of the ocular rigidity, and (ii) the estimated model parameter that controls the rate of decrease of outflow with increasing pressure is primarily a function of the convexity of the monotonic pressure-time curve. Reducing parameter uncertainty could be accomplished using new technologies to obtain higher quality datasets, and by gathering additional data to better define model parameter ranges for the normal eye. With additional research, we expect the pressure dependent outflow analysis described herein may find applications in the differential diagnosis, prognosis and monitoring of the glaucomatous eye.
url https://doi.org/10.1371/journal.pone.0238146
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AT changjoonlee estimatingoutflowfacilityparametersforthehumaneyeusinghypotensivepressuretimedata
AT brucesgardiner estimatingoutflowfacilityparametersforthehumaneyeusinghypotensivepressuretimedata
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