2021
DOI: 10.1002/acm2.13231
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Automatic needle detection using improved random sample consensus in CT image‐guided lung interstitial brachytherapy

Abstract: Purpose To develop a method for automatically detecting needles from CT images, which can be used in image‐guided lung interstitial brachytherapy to assist needle placement assessment and dose distribution optimization. Material and Methods Based on the preview model parameters evaluation, local optimization combining local random sample consensus, and principal component analysis, the needle shaft was detected quickly, accurately, and robustly through the modified random sample consensus algorithm. By tracing… Show more

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Cited by 1 publication
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“…In static analysis, the frames are investigated independently of time, assuming that the needle shaft is seen as a line-like brighter intensity in the images. There are several traditional methods to extract lines in US frames using statistical analysis of image intensity [12], hough transform [13]- [16], projections [17]- [21], random sample consensus(RANSAC) [22]- [24] [25], filtering [10], [26]- [28] and radon transform [29], [30]. Log-Gabor filters have also been used to extract phase images of needle projections.…”
mentioning
confidence: 99%
“…In static analysis, the frames are investigated independently of time, assuming that the needle shaft is seen as a line-like brighter intensity in the images. There are several traditional methods to extract lines in US frames using statistical analysis of image intensity [12], hough transform [13]- [16], projections [17]- [21], random sample consensus(RANSAC) [22]- [24] [25], filtering [10], [26]- [28] and radon transform [29], [30]. Log-Gabor filters have also been used to extract phase images of needle projections.…”
mentioning
confidence: 99%