Title :
Automatic Detection and Segmentation of Lymph Nodes From CT Data
Author :
Barbu, Adrian ; Suehling, Michael ; Xu, Xun ; Liu, David ; Zhou, S. Kevin ; Comaniciu, Dorin
Author_Institution :
Dept. of Stat., Florida State Univ., Tallahassee, FL, USA
Abstract :
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 lymph nodes from CT data, with the following contributions. First, it presents a learning based approach to solid lymph node detection that relies on marginal space learning to achieve great speedup with virtually no loss in accuracy. Second, it presents a computationally efficient segmentation method for solid lymph nodes (LN). Third, it introduces two new sets of features that are effective for LN detection, one that self-aligns to high gradients and another set obtained from the segmentation result. The method is evaluated for axillary LN detection on 131 volumes containing 371 LN, yielding a 83.0% detection rate with 1.0 false positive per volume. It is further evaluated for pelvic and abdominal LN detection on 54 volumes containing 569 LN, yielding a 80.0% detection rate with 3.2 false positives per volume. The running time is 5-20 s per volume for axillary areas and 15-40 s for pelvic. An added benefit of the method is the capability to detect and segment conglomerated lymph nodes.
Keywords :
cancer; computerised tomography; feature extraction; image segmentation; learning (artificial intelligence); medical image processing; tumours; CT data; abdominal LN detection; automatic detection; cancer treatment; chemotherapy; conglomerated lymph nodes; image segmentation; lymph nodes; marginal space learning; pelvic detection; radiation therapy; robust learning-based method; time 5 ns to 40 ns; Cancer; Computed tomography; Detectors; Feature extraction; Lymph nodes; Shape; Solids; Cancer staging; lymph node detection; lymph node segmentation; Algorithms; Humans; Lymph Nodes; Lymphoma; Pattern Recognition, Automated; Radiographic Image Enhancement; Radiographic Image Interpretation, Computer-Assisted; Reproducibility of Results; Sensitivity and Specificity; Tomography, X-Ray Computed;
Journal_Title :
Medical Imaging, IEEE Transactions on
DOI :
10.1109/TMI.2011.2168234