Chantamit-O-Pas, Pattanapong (2025) Healthcare Chatbot for slowing the Progression in Chronic Kidney Disease Stage 3 patients In: The 7th International Conference on Artificial Intelligence in Information and Communication (ICAIIC 2025), 18-21 February 2025, Fukuoka University. (Unpublished)
Chronic kidney disease (CKD) is a significant global health problem characterized by the continuous deterioration of kidney function. It has been found that patients with stage 3 chronic kidney disease are at risk of progressing to end-stage kidney disease. This situation requires close medical attention to slow down kidney deterioration in these patients. To achieve this, a health chatbot system specifically designed for stage 3 CKD patients has been developed. The chatbot serves as a virtual representative of hospital staff, processing user messages based on medical knowledge stored in the system's database and responding in a chat format within the LINE application. Additionally, the chatbot's algorithm, which boasts very high accuracy, is vital for medical diagnosis. This research aims at the investigate of three techniques: Dialog flow, Gemini, and GPT3.5. these are powerful and widely used technique in natural language processing (NLP). we were conducted in the outpatient department of internal medicine at Burapha University Hospital, Chon-buri Province. The study sample consisted of 50 patients with stage 3 chronic kidney disease. These patients were divided into two groups: Experimental Group: 25 patients and Control Group:25 patients. For medical knowledge, we classify the knowledge of chronic kidney from medical experts that have 120 sentences in Thai language. Finally, the effectiveness of dialog flow; Gemini; and GPT3.5 for prediction of CKD based on knowledge sentence is modelled. Our experiments compared the accuracies of Dialog flow, Gemini, and GPT3.5, which came out to be 88%, 75.61%, and 41.46% respectively. As a result, Dialog flow outperforms among all other methods.
Item Type:
Conference or Workshop Item (Paper)
Subjects:
Subjects > Computer Science > Machine Learning
Subjects > Computer Science > Software Engineering
Subjects > Physics > Biological Physics
Deposited by:
Pattanapong Chantamit-O-Pas
Date Deposited:
2024-12-22 11:27:43
Last Modified:
2025-01-15 10:40:43