An IoT-based CBL methodology to create realworld clinical cases for medical education

Medical education is the practice of being a medical practitioner, which varies considerably across the world. It is an active research area and has evolved tremendously in recent decades. The learning activities are commonly explored using patient cases. Among multiple medical education methodologies, Case-Based Learning (CBL) is considered as an effective methodology for small-group of medical students. Normally in CBL, the medical experts give the legacy fixed medical cases to students during their class for group discussions and their learning. In this practice, due to lack of beforehand practice or knowledge about that particular case, students hesitate to participate due to lack of confidence. Internet of Things (IoTs) is one of the well-known emerging technology and this hesitation can be dealt with creating real-world clinical cases using IoTs data and user-friendly environment for case-based learning. In this paper, an IoT-based CBL methodology is introduced, which records realworld patient data using IoTs, analyzes the imperative signs' data, creates the real-world clinical case for students practicing, and finally provides feedback to medical students. For case study purposes, our developed CBL tool is simulated on patient's data to realize the proposed methodology.