Learn2Trust: A video and streamlit-based educational programme for
AI-based medical image analysis targeted towards medical students
- URL: http://arxiv.org/abs/2208.07314v1
- Date: Mon, 15 Aug 2022 16:26:13 GMT
- Title: Learn2Trust: A video and streamlit-based educational programme for
AI-based medical image analysis targeted towards medical students
- Authors: Hanna Siebert, Marian Himstedt and Mattias Heinrich
- Abstract summary: The online course teaches the basics of AI for the analysis of medical image data.
The focus was on medical applications and the fundamentals of machine learning.
A survey among the participating medical students in the first run of the course was used to analyse our research hypotheses quantitatively.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In order to be able to use artificial intelligence (AI) in medicine without
scepticism and to recognise and assess its growing potential, a basic
understanding of this topic is necessary among current and future medical
staff. Under the premise of "trust through understanding", we developed an
innovative online course as a learning opportunity within the framework of the
German KI Campus (AI campus) project, which is a self-guided course that
teaches the basics of AI for the analysis of medical image data. The main goal
is to provide a learning environment for a sufficient understanding of AI in
medical image analysis so that further interest in this topic is stimulated and
inhibitions towards its use can be overcome by means of positive application
experience. The focus was on medical applications and the fundamentals of
machine learning. The online course was divided into consecutive lessons, which
include theory in the form of explanatory videos, practical exercises in the
form of Streamlit and practical exercises and/or quizzes to check learning
progress. A survey among the participating medical students in the first run of
the course was used to analyse our research hypotheses quantitatively.
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