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Opportunities and Challenges of Chatbots in Ophthalmology: A Narrative Review
15
Zitationen
12
Autoren
2024
Jahr
Abstract
Artificial intelligence (AI) is becoming increasingly influential in ophthalmology, particularly through advancements in machine learning, deep learning, robotics, neural networks, and natural language processing (NLP). Among these, NLP-based chatbots are the most readily accessible and are driven by AI-based large language models (LLMs). These chatbots have facilitated new research avenues and have gained traction in both clinical and surgical applications in ophthalmology. They are also increasingly being utilized in studies on ophthalmology-related exams, particularly those containing multiple-choice questions (MCQs). This narrative review evaluates both the opportunities and the challenges of integrating chatbots into ophthalmology research, with separate assessments of studies involving open- and close-ended questions. While chatbots have demonstrated sufficient accuracy in handling MCQ-based studies, supporting their use in education, additional exam security measures are necessary. The research on open-ended question responses suggests that AI-based LLM chatbots could be applied across nearly all areas of ophthalmology. They have shown promise for addressing patient inquiries, offering medical advice, patient education, supporting triage, facilitating diagnosis and differential diagnosis, and aiding in surgical planning. However, the ethical implications, confidentiality concerns, physician liability, and issues surrounding patient privacy remain pressing challenges. Although AI has demonstrated significant promise in clinical patient care, it is currently most effective as a supportive tool rather than as a replacement for human physicians.
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Autoren
Institutionen
- Kastamonu University(TR)
- University of Bern(CH)
- Moorfields Eye Hospital NHS Foundation Trust(GB)
- University Hospital of Bern(CH)
- National Health Service(GB)
- Artificial Intelligence in Medicine (Canada)(CA)
- Cleveland Clinic(US)
- Cleveland Eye Clinic(US)
- University of Toronto(CA)
- Innlandet Hospital Trust(NO)
- Sykehuset i Vestfold(NO)
- University of Southern Denmark(DK)
- Odense University Hospital(DK)
- Rigshospitalet(DK)
- University of Copenhagen(DK)