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Initial Experience in Developing AI Algorithms in Medical Imaging Based on Annotations Derived From an E-Learning Platform
0
Zitationen
20
Autoren
2021
Jahr
Abstract
Development of supervised AI algorithms requires a large amount of labeled images. Image labelling is both time-consuming and expensive. Therefore, we explored the value of e-learning derived annotations for AI algorithm development in medical imaging. Methods We have developed an e-learning platform that involves image-based single click labelling as part of the educational learning process. Ten radiology residents, as part of their residency training, trained the recognition of pneumothorax on 1161 chest X-rays in posterior-anterior projection. Using this data, multiple AI algorithms for detecting pneumothorax were developed. Classification and localization performance of the models was tested on an independent internal testing dataset and on the public NIH ChestX-ray14 dataset. Results The AI models F1 scores on the internal and the NIH dataset were 0.87 and 0.44, respectively. Sensitivity was 0.85 and 0.80 for classification and specificity 0.96 and 0.48 for classification. F1 scores were 0.72 and 0.66, sensitivity 0.72 and 0.72. False positive rate was 0.36 and 0.32 for localisation. Conclusion Our results demonstrated that e-learning derived annotations are a valuable data source for algorithm development. Further work is needed to include additional parameters such as user performance, consensus of diagnosis, and quality control in the development pipeline.
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Autoren
- Maurice Henkel
- Hanns‐Christian Breit
- Patricia Wiesner
- Jakob Wasserthal
- Victor Parmar
- Thomas Weikert
- Verena Hofmann
- Sebastian Eiden
- Lena Schmülling
- Konrad Appelt
- David Winkel
- Fabiano Paciolla
- C. Lechtenboehmer
- Moritz Vogt
- Laurent Binsfeld
- Raphael Sexauer
- Christian Wetterauer
- Kirsten D. Mertz
- Alexander Sauter
- Bram Stieltjes