Artificial Intelligence Clinical Trial
Official title:
Screening and Identifying Hepatobiliary Diseases Via Deep Learning Using Ocular Images
NCT number | NCT04213183 |
Other study ID # | AEHD-2019 |
Secondary ID | |
Status | Completed |
Phase | |
First received | |
Last updated | |
Start date | December 1, 2018 |
Est. completion date | January 31, 2020 |
Verified date | August 2020 |
Source | Sun Yat-sen University |
Contact | n/a |
Is FDA regulated | No |
Health authority | |
Study type | Observational [Patient Registry] |
Artificial Intelligence may provide insight into exploring the potential covert association behind and reveal some early ocular architecture changes in individuals with hepatobiliary disorders. We conducted a pioneer work to explore the association between the eye and liver via deep learning, to develop and evaluate different deep learning models to predict the hepatobiliary disease by using ocular images.
Status | Completed |
Enrollment | 1789 |
Est. completion date | January 31, 2020 |
Est. primary completion date | January 31, 2020 |
Accepts healthy volunteers | Accepts Healthy Volunteers |
Gender | All |
Age group | N/A and older |
Eligibility |
Inclusion Criteria: - The quality of fundus and slit-lamp images should clinical acceptable. - More than 90% of the fundus image area including four main regions (optic disk, macular, upper and lower retinal vessel archs) are easy to read and discriminate. - More than 90% of the slit-lamp image area including three main regions (sclera, pupil, and lens) are easy to read and discriminate. Exclusion Criteria: - Images with light leakage (>10% of the area), spots from lens flares or stains, and overexposure were excluded from further analysis. |
Country | Name | City | State |
---|---|---|---|
China | Zhongshan Ophthalmic Center, Sun Yat-sen Univerisity | Guangzhou | Guangdong |
Lead Sponsor | Collaborator |
---|---|
Sun Yat-sen University | Affiliated Huadu Hospital of Southern Medical University, Aikang Health Care, Third Affiliated Hospital, Sun Yat-Sen University |
China,
Type | Measure | Description | Time frame | Safety issue |
---|---|---|---|---|
Primary | area under the receiver operating characteristic curve of the deep learning system | The investigators will calculate the area under the receiver operating characteristic curve of deep learning system and compare this index between deep learning system and human doctors | baseline | |
Secondary | sensitivity and specificity of the deep learning system | The investigators will calculate the sensitivity and specifity of deep learning system and compare this index between deep learning system and human doctors | baseline |
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