Inicio  /  Cancers  /  Vol: 14 Par: 13 (2022)  /  Artículo
ARTÍCULO
TITULO

How Many Private Data Are Needed for Deep Learning in Lung Nodule Detection on CT Scans? A Retrospective Multicenter Study

Jeong Woo Son    
Ji Young Hong    
Yoon Kim    
Woo Jin Kim    
Dae-Yong Shin    
Hyun-Soo Choi    
So Hyeon Bak and Kyoung Min Moon    

Resumen

The early detection of lung nodules is important for patient treatment and follow-up. Many researchers are investigating deep-learning-based lung nodule detection to ease the burden of lung nodule detection by radiologists. The purpose of this paper is to provide guidelines for collecting lung nodule data to facilitate research. We collected chest computed tomography scans reviewed by radiologists at three hospitals. In addition, several experiments were conducted using the large-scale open dataset, LUNA16. As a result of the experiment, it was possible to prove the value of using the collected data compared to using LUNA16. We also demonstrated the effectiveness of transfer learning from pre-trained learning weights in LUNA16. Finally, our study provides information on the amount of lung nodule data that must be collected to stabilize lung nodule detection performance.

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