Randomized clinical trials (RCTs) show that reducing intraocular pressure (IOP) slows glaucoma progression. Despite the clinician?s use of these RCTs, practice guidelines, and experience, patients still progress to blindness. A gap in clinical science is our lack of knowledge on other risk factors that impact outcomes. Our long-term goal is to improve outcomes by identifying biomarkers, behavioral and environmental factors, that together profile a patient at risk for disease by age-of-onset, rate of progression, poor response to treatment, and large IOP fluctuation. We focus on two IOP patterns that continue to confound the clinician?s ability to provide consistent and effective IOP treatments: (1) IOP response to medications, ranging from non-responder to super responder, and (2) IOP fluctuation, ranging from small to large, with the latter leading to progressive visual field loss. Unfortunately, biomarkers that foretell these IOP patterns, which could improve clinical decision-making have yet to be identified -- a critical barrier to the clinician identifying patients for whom earlier or more aggressive treatment will mitigate glaucoma-related vision loss. The scientific premise is that these mechanisms (i.e., aqueous flow, outflow facility, episcleral venous pressure, and calculated uveoscleral flow) predict a patient?s IOP patterns. We will test the central hypothesis that variations in IOP response to drugs and IOP fluctuation can be predicted by the aqueous humor dynamic (AHD) factors that regulate IOP. We propose to test our hypothesis in 200 patients with ocular hypertension (OHT) or open-angle glaucoma (OAG), as both conditions are investigated in drug trials for IOP drug response. There are two aims:
Aim 1. Test the hypothesis that AHD factors predict the IOP drug response. In Protocol 1, AHD factors will be measured under baseline without treatment, and after a randomized order of 1-week treatments with timolol 0.5% followed by a washout period and then latanoprost 0.005% or vice versa.
Aim 2. Test the hypothesis that aqueous flow and outflow facility predict IOP fluctuation. In Protocol 2, IOP fluctuation will be measured in the non-clinic setting using the Icare Home tonometer over multiple days at baseline and under monotherapy treatment during Protocol 1. Clinical Impact: Our approach to apply AHD methods to understand variation in drug response and IOP fluctuation is innovative. We predict that AHD factors will explain drug response and IOP fluctuation. Tying-down these relationships will provide new knowledge that will form the basis of future phenotype-genotype studies to identify genetic risk alleles of drug response and IOP fluctuation, resulting in an integrated risk score combining clinical and genetic risk profiles for drug response and IOP fluctuation. The ability to determine which patient needs earlier and more aggressive treatment will ultimately lead to more efficient medical management with fewer follow-up office visits to assess treatment efficacy, fewer treatment failures, and decreased glaucoma-related blindness.

Public Health Relevance

Our long-term goal is to improve outcomes by identifying biomarkers, behavioral and environmental factors, that together profile a patient at risk for disease by age-of-onset, rate of progression, poor response to treatment, and large IOP fluctuation. We focus on two IOP patterns that continue to confound the clinician?s ability to provide consistent and effective IOP treatments: (1) IOP response to medications, ranging from non- responder to super responder, and (2) IOP fluctuation, ranging from small to large, with the latter leading to progressive visual field loss. The ability to determine which patient needs earlier and more aggressive treatment will ultimately lead to more efficient medical management with fewer follow-up office visits to assess treatment efficacy, fewer treatment failures, and decreased glaucoma-related blindness.

Agency
National Institute of Health (NIH)
Institute
National Eye Institute (NEI)
Type
Research Project (R01)
Project #
2R01EY022124-05
Application #
9687192
Study Section
Special Emphasis Panel (ZRG1)
Program Officer
Liberman, Ellen S
Project Start
2012-03-03
Project End
2023-08-31
Budget Start
2019-09-01
Budget End
2020-08-31
Support Year
5
Fiscal Year
2019
Total Cost
Indirect Cost
Name
University of Michigan Ann Arbor
Department
Ophthalmology
Type
Schools of Medicine
DUNS #
073133571
City
Ann Arbor
State
MI
Country
United States
Zip Code
48109
Kazemi, Arash; McLaren, Jay W; Lin, Shuai-Chun et al. (2017) Comparison of Aqueous Outflow Facility Measurement by Pneumatonography and Digital Schiøtz Tonography. Invest Ophthalmol Vis Sci 58:204-210
Man, Xiaofei; Costa, Raquel; Ayres, Bernadete M et al. (2016) Acetazolamide-Induced Bilateral Ciliochoroidal Effusion Syndrome in Plateau Iris Configuration. Am J Ophthalmol Case Rep 3:14-17
Hysi, Pirro G; Cheng, Ching-Yu; Springelkamp, Henriët et al. (2014) Genome-wide analysis of multi-ancestry cohorts identifies new loci influencing intraocular pressure and susceptibility to glaucoma. Nat Genet 46:1126-1130
Ozel, A Bilge; Moroi, Sayoko E; Reed, David M et al. (2014) Genome-wide association study and meta-analysis of intraocular pressure. Hum Genet 133:41-57