The Efficacy of an Artificial Intelligence Platform to Adapt Visual Aids for Patients With Low Vision: a Randomised Controlled Trial
- Conditions
- OphthalmologyArtificial IntelligenceLow Vision Aids
- Interventions
- Other: Low vision aids
- Registration Number
- NCT04919837
- Lead Sponsor
- Sun Yat-sen University
- Brief Summary
According to the WHO's definition of visual impairment, as of 2018, there were approximately 1.3 billion people with visual impairment in the world, and only 10% of countries can provide assisting services for the rehabilitation of visual impairment. Although China is one of the countries that can provide rehabilitation services for patients with visual impairment, due to restrictions on the number of professionals in various regions, uneven diagnosis and treatment, and regional differences in economic conditions, not all visually impaired patients can get the rehabilitation of assisting device fitting.
Traditional statistical methods were not enough to solve the problem of intelligent fitting of assisting devices. At present, there are almost no intelligent fitting models of assisting devices in the world. Therefore, in order to allow more low-vision patients to receive accurate and rapid rehabilitation services, we conducted a cross-sectional study on the assisting devices fitting for low-vision patients in Fujian Province, China in the past five years, and at the same time constructed a machine learning model to intelligently predict the adaptation result of the basic assisting devices for low vision patients.
- Detailed Description
Not available
Recruitment & Eligibility
- Status
- UNKNOWN
- Sex
- All
- Target Recruitment
- 200
- Low vision Aged 3 to 105
- Severe systemic diseases Failure to sign informed consent or unwilling to participate
Study & Design
- Study Type
- INTERVENTIONAL
- Study Design
- PARALLEL
- Arm && Interventions
Group Intervention Description Algorithm assisted group Low vision aids Patients receive assisting devices fitting services from human doctors assisted by the machine learning model Human doctor group Low vision aids Patients receive assisting devices fitting services from humanr doctors
- Primary Outcome Measures
Name Time Method The proportion of giving up assisting devices Baseline The investigator will calculate the proportion of giving up more than one assisting devices in two groups for three months and six months
- Secondary Outcome Measures
Name Time Method Time cost of using assisting devices of patients Baseline The investigator will apply survival analysis for the time cost of using assisting devices in different groups.
Trial Locations
- Locations (1)
2nd Affilliated Hospital of Jujian Medical University
🇨🇳Quanzhou, Fujian, China