Barbu et al., 2011 - Google Patents
Automatic detection and segmentation of lymph nodes from CT dataBarbu et al., 2011
View PDF- Document ID
- 2446088845879470907
- Author
- Barbu A
- Suehling M
- Xu X
- Liu D
- Zhou S
- Comaniciu D
- Publication year
- Publication venue
- IEEE Transactions on Medical Imaging
External Links
Snippet
Lymph nodes are assessed routinely in clinical practice and their size is followed throughout radiation or chemotherapy to monitor the effectiveness of cancer treatment. This paper presents a robust learning-based method for automatic detection and segmentation of solid …
- 210000001165 Lymph Nodes 0 title abstract description 192
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