The Effect of Artificial Intelligence Supported Mobile Learning on Nutrition/Hydration Control and Individual Management
NCT06293183 · Status: COMPLETED · Phase: NA · Type: INTERVENTIONAL · Enrollment: 76
Last updated 2025-08-08
Summary
The adherence to recommended nutrition and fluid restrictions is crucial for the success of hemodialysis treatment. However, approximately 80% of patients receiving HD treatment are non-compliant with fluid restriction, leading to various complications. Cardiovascular complications are among the most common complications associated with this issue. When reviewing national and international literature on the subject, it is observed that in order to improve treatment adherence in HD patients, written materials are often used in addition to individual or group education sessions, focusing mainly on assessing patients\' quality of life and self-efficacy. However, a mobile-supported learning method that enables patients to manage their nutrition and fluid control individually is not commonly utilized.
This research aims to investigate the impact of an artificial intelligence-supported mobile application developed for HD patients on the control of nutrition/fluid intake and individual management.
Conditions
- Cronich Kidney Disease
Interventions
- OTHER
-
Mobile app
Participants in the intervention group will be expected to watch the training video in the mobile application installed on their phones or tablets and then regularly enter all the food and liquid amounts they consume during the day into this application. In the mobile application data entry area, visuals that will be included in the application showing the amount and types of foods consumed by the participants during the day (1 soup bowl, 1 vegetable dish plate, 1 meat dish plate, 1 water glass, 1 tea glass, tablespoon, dessert spoon, teaspoon, ladle). etc.) will choose through. The mobile application will calculate the total amount of liquid consumed by the participants in 24 hours, and will give a yellow warning when the amount of liquid consumed is 2-2.5 liters, an orange warning when it is 2.5-3 liters, and a red warning when it is 3 liters and above. This will contribute to reducing the amount of fluid intake of participants between two dialysis sessions.
Sponsors & Collaborators
-
Ege University
lead OTHER
Study Design
- Allocation
- RANDOMIZED
- Purpose
- SUPPORTIVE_CARE
- Masking
- NONE
- Model
- PARALLEL
Eligibility
- Min Age
- 18 Years
- Sex
- ALL
- Healthy Volunteers
- No
Timeline & Regulatory
- Start
- 2024-11-01
- Primary Completion
- 2025-02-20
- Completion
- 2025-04-28
Countries
- Turkey (Türkiye)
Study Locations
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