<sup>*</sup> Some of the other methods also use FPR stages but the methods listed below report results w. and wo. FPR.
</div>
#### References (no particular oder)
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- Q. Dou, H. Chen, Y. Jin, H. Lin, J. Qin, and P.-A. Heng. Automated pulmonary nodule detection via 3d convnets with online sample filtering and hybrid-loss residual learning. In MICCAI, pages 630–638. Springer, 2017
- N. Khosravan and U. Bagci. S4nd: Single-shot single-scale lung nodule detection. In MICCAI, pages 794–802. Springer, 2018.
- B. Wang, G. Qi, S. Tang, L. Zhang, L. Deng, and Y. Zhang. Automated pulmonary nodule detection: High sensitivity with few candidates. In MICCAI, pages 759–767. Springer, 2018
- W. Zhu, C. Liu, W. Fan, and X. Xie. Deeplung: Deep 3d dual path nets for automated pulmonary nodule detection and classification. In WACV, pages 673–681. IEEE, 2018
- J. Liu, L. Cao, O. Akin, and Y. Tian. 3dfpn-hs: 3d feature pyramid network based high sensitivity and specificity pulmonary nodule detection. In MICCAI, pages 513–521. Springer, 2019
- T. Song, J. Chen, X. Luo, Y. Huang, X. Liu, N. Huang, Y. Chen, Z. Ye, H. Sheng, S. Zhang, and G. Wang. CPM-net: A 3d center-points matching network for pulmonary nodule detection in CT scans. In A. L. Martel, P. Abolmaesumi, D. Stoyanov, D. Mateus, M. A. Zuluaga, S. K. Zhou, D. Racoceanu, and L. Joskowicz, editors, MICCAI, pages 550–559. Springer International Publishing
- H. Cao, H. Liu, E. Song, G. Ma, X. Xu, R. Jin, T. Liu, and C. C. Hung. A twostage convolutional neural networks for lung nodule detection. IEEE Journal of Biomedical and Health Informatics, 24(7):2006–2015, 2020.
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Disclaimer:
This overview reflects the literature upon submission of nnDetection (March 2021).
It will not be updated with newer methods and can not replace a thorough literature research of future work.