Title
Automatic fiducial localization in ultrasound images for a thermal ablation validation platform
Abstract
PURPOSE: Development of ultrasound-based tumor ablation monitoring systems requires extensive validation. Validation is based on the comparison of ablated regions, computed from ultrasound images, to the ground truth region observed on histopathology images. Registration of ultrasound and histopathology images can be efficiently implemented by localizing fiducial lines embedded in the test phantom. Manual fiducial localization is time consuming and may be inaccurate. Current automatic localization algorithms were designed for use on images containing easily detectable fiducials in clear water, while the images produced by the ablation monitoring platform contain fiducials and ablated tissue embedded in tissue-mimicking gel. Our goal was to develop an automatic fiducial localization algorithm for the ablation monitoring platform. METHOD: A previously existing algorithm for detecting fishing line in water for ultrasound probe calibration, created by Chen et al., was tested on ultrasound images of an ablation phantom. Fiducial and line point detection parameters were determined by running the algorithm multiple times with different parameter sets and searching for the set that results in the best detection success rate. The fiducial intensity scoring method was modified to use intensities from an unaltered image; this greatly reduced the number of incorrectly identified fiducials. Line finding was modified to suit the ablation phantom geometry. RESULTS: The new algorithm was tested by comparing the automatic localization results to manually identified fiducial positions. Using the optimized parameters, it was found to have a 94.1 % success rate on the tested images. Fiducial localization error was defined as the difference between the manually segmented positions and the positions found by the algorithm. Fiducial localization error was -0.04 +/- 0.18mm along the x-axis, and -0.09 +/- 0.14mm along the y-axis. CONCLUSION: We have developed an automatic algorithm that detects line fiducials at a high success rate in complex phantoms containing a tissue sample embedded in tissue-mimicking gel.
Year
DOI
Venue
2011
10.1117/12.878568
Proceedings of SPIE
Keywords
Field
DocType
ultrasound,pathology,tumor ablation,validation platform,automatic segmentation
Computer vision,Ultrasonography,Fiducial marker,Monitoring system,Imaging phantom,Ablation,Ground truth,Artificial intelligence,Calibration,Ultrasound,Physics
Conference
Volume
ISSN
Citations 
7964
0277-786X
1
PageRank 
References 
Authors
0.43
3
4
Name
Order
Citations
PageRank
Laura Bartha171.91
Andras Lasso210631.99
Thomas Kuiran3153.52
Gabor Fichtinger41107168.68