Proceedings Article10.1109/ISBI45749.2020.9098436
Using Transfer Learning and Class Activation Maps Supporting Detection and Localization of Femoral Fractures on Anteroposterior Radiographs
Vikash Gupta,Mutlu Demirer,Matthew T. Bigelow,Sarah M. Yu,Joseph S. Yu,Luciano M. Prevedello,Richard D. White,Barbaros S. Erdal +7 more
- 03 Apr 2020
- pp 1526-1529
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TL;DR: By using transfer learning and leveraging pre-trained models, this paper shows that very high accuracy in detecting fractures is achieved and that they can be localized utilizing class activation maps.
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Abstract: Acute Proximal Femoral Fractures are a growing health concern among the aging population. These fractures are often associated with significant morbidity and mortality as well as reduced quality of life. Furthermore, with the increasing life expectancy owing to advances in healthcare, the number of proximal femoral fractures may increase by a factor of 2 to 3, since the majority of fractures occur in patients over the age of 65. In this paper, we show that by using transfer learning and leveraging pre-trained models, we can achieve very high accuracy in detecting fractures and that they can be localized utilizing class activation maps.
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