Vibha Anand, Erhan Bilal, et al.
AMIA Annual Symposium 2020
Application of deep learning algorithms in medical imaging analysis is a fascinating and growing research area. While deep learning methods are thriving in the medical domain, they seldom utilize the rich knowledge associated with connected radiology reports. The radiology reports are a great source of knowledge, and the knowledge derived from these reports can enhance deep learning models' performance. In this work, we developed a comprehensive chest X-ray findings' vocabulary that is used to automatically annotate an extensive collection of chest X-rays using associated radiology reports and a vocabulary-driven concept annotation algorithm . The annotated X-rays are used to train the deep learning module's neural network architecture for finding detection. Finally, we developed a knowledge-driven reasoning algorithm that leverages knowledge learnt from X-ray reports to improve the deep learning module's performance on the finding detection. The reasoning algorithm significantly improves upon the deep learning module performance with 9.09 % improvement in F1-score.
Vibha Anand, Erhan Bilal, et al.
AMIA Annual Symposium 2020
Eric K. Neumann, Dennis Quan
PSB 2006
Andreana Gomez, Sergio Gonzalez, et al.
Toxics
Francesca Bonin, Martin Gleize, et al.
AMIA Annual Symposium 2020