Diagnostic Efficacy of CNN in Differentiation of Visual Field
Diagnostic Efficacy of Convolutional Neural Network Based Algorithm in Differentiation of Glaucomatous Visual Field From Non-glaucomatous Visual Field
Study Overview
Status
Status
Conditions
Conditions
Intervention / Treatment
Intervention / Treatment
Detailed Description
Study Type
Study Type
Enrollment (Actual)
Enrollment
Contacts and Locations
Study Locations
-
-
Guangdong
-
Guangzhou, Guangdong, China, 51000
- Zhongshan Ophthalmic Center
-
-
Participation Criteria
Eligibility Criteria
Eligibility Criteria
Ages Eligible for Study
Accepts Healthy Volunteers
Genders Eligible for Study
Sampling Method
Study Population
Description
Inclusion Criteria:
- Age≥18;
- Informed consent obtained;
- Diagnosed with specific ocular diseases;
- Able to perform visual field test
Exclusion Criteria:
Incomplete clinical data to support diagnosis
Study Plan
How is the study designed?
Design Details
Number of groups / cohorts
Cohorts and Interventions
Group / CohortGroup / Cohort |
Intervention / TreatmentIntervention / Treatment |
|---|---|
|
AI group
The visual field reports in this group will be evaluated by the convolutional neural network.
|
The visual fields collected would be assessed by the algorithm and ophthalmologists independently.
The performance of the algorithm and the ophthalmologists would be compared, including accuracy, AUC, sensitivity and specificity.
Other Names:
|
|
Human group
The visual field reports in this group will be evaluated by 3 ophthalmologists independently.
|
What is the study measuring?
Primary Outcome Measures
Primary Outcome Measures
Outcome Measure |
Time Frame |
|---|---|
|
AUC value of convolutional neural network in differentiation of Glaucoma visual field from non-glaucoma visual field
Time Frame: from Jan 2019 to Jan 2020
|
from Jan 2019 to Jan 2020
|
Secondary Outcome Measures
Secondary Outcome Measures
Outcome Measure |
Time Frame |
|---|---|
|
Sensitivity and specificity of convolutional neural network in detection of glaucoma visual field
Time Frame: from Jan 2019 to Jan 2020
|
from Jan 2019 to Jan 2020
|
Collaborators and Investigators
Sponsor
Sponsor
Study record dates
Study Major Dates
Study Start (ACTUAL)
Study Start
Primary Completion (ACTUAL)
Primary Completion
Study Completion (ACTUAL)
Study Completion
Study Registration Dates
First Submitted
First Submitted
First Submitted That Met QC Criteria
First Submitted That Met QC Criteria
First Posted (ACTUAL)
First Posted
Study Record Updates
Last Update Posted (ACTUAL)
Last Update Posted
Last Update Submitted That Met QC Criteria
Last Update Submitted That Met QC Criteria
Last Verified
Last Verified
More Information
Terms related to this study
Additional Relevant MeSH Terms
Other Study ID Numbers
Other Study ID Numbers
- 2018KYPJ125
Plan for Individual participant data (IPD)
Plan to Share Individual Participant Data (IPD)?
Drug and device information, study documents
Studies a U.S. FDA-regulated drug product
Studies a U.S. FDA-regulated device product
This information was retrieved directly from the website clinicaltrials.gov without any changes. If you have any requests to change, remove or update your study details, please contact register@clinicaltrials.gov. As soon as a change is implemented on clinicaltrials.gov, this will be updated automatically on our website as well.
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