- Author:
Hyungseob SHIN
1
;
Jeongryong LEE
;
Taejoon EO
;
Yohan JUN
;
Sewon KIM
;
Dosik HWANG
Author Information
- Publication Type:Review Article
- From:Journal of the Korean Radiological Society 2020;81(6):1305-1333
- CountryRepublic of Korea
- Language:English
- Abstract: Deep learning has recently achieved remarkable results in the field of medical imaging. However, as a deep learning network becomes deeper to improve its performance, it becomes more difficult to interpret the processes within. This can especially be a critical problem in medical fields where diagnostic decisions are directly related to a patient's survival. In order to solve this, explainable artificial intelligence techniques are being widely studied, and an attention mechanism was developed as part of this approach. In this paper, attention techniques are divided into two types: post hoc attention, which aims to analyze a network that has already been trained, and trainable attention, which further improves network performance. Detailed comparisons of each method, examples of applications in medical imaging, and future perspectives will be covered.