AUTHOR=Liu Jingya , Cao Liangliang , Akin Oguz , Tian Yingli TITLE=Robust and accurate pulmonary nodule detection with self-supervised feature learning on domain adaptation JOURNAL=Frontiers in Radiology VOLUME=2 YEAR=2022 URL=https://www.frontiersin.org/journals/radiology/articles/10.3389/fradi.2022.1041518 DOI=10.3389/fradi.2022.1041518 ISSN=2673-8740 ABSTRACT=
Medical imaging data annotation is expensive and time-consuming. Supervised deep learning approaches may encounter overfitting if trained with limited medical data, and further affect the robustness of computer-aided diagnosis (CAD) on CT scans collected by various scanner vendors. Additionally, the high false-positive rate in automatic lung nodule detection methods prevents their applications in daily clinical routine diagnosis. To tackle these issues, we first introduce a novel self-learning schema to train a pre-trained model by learning rich feature representatives from large-scale unlabeled data without extra annotation, which guarantees a consistent detection performance over novel datasets. Then, a 3D feature pyramid network (