2021
DOI: 10.1002/mp.15008
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Diffeomorphic respiratory motion estimation of thoracoabdominal organs for image‐guided interventions

Abstract: Purpose Percutaneous image‐guided interventions are commonly used for the diagnosis and treatment of cancer. In practice, physiological breathing‐induced motion increases the difficulty of accurately inserting needles into tumors without impairing the surrounding vital structures. In this work, we propose a data‐driven patient‐specific hierarchical respiratory motion estimation framework to accurately estimate the position of a tumor and surrounding vital tissues in real time. Methods The motion of optical mar… Show more

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Cited by 4 publications
(2 citation statements)
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“…The tumour breath‐holding position estimation model is built based on the LibSVM library 29 . The radial basis function kernel function is adopted for the SVR algorithm to address the nonlinearity of respiration motion 30 . The feature vector for extracting the principal component of the marker's position is boldE3×1=[0.03,0.25em0.3,0.95].…”
Section: Experiments and Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…The tumour breath‐holding position estimation model is built based on the LibSVM library 29 . The radial basis function kernel function is adopted for the SVR algorithm to address the nonlinearity of respiration motion 30 . The feature vector for extracting the principal component of the marker's position is boldE3×1=[0.03,0.25em0.3,0.95].…”
Section: Experiments and Resultsmentioning
confidence: 99%
“…29 The radial basis function kernel function is adopted for the SVR algorithm to address the nonlinearity of respiration motion. 30 The feature vector for extracting the principal component of the marker's position is E 3�1 ¼ ½0:03; 0:3; 0:95�. The model's parameters C and γ are obtained with the particle swarm optimization method and set as C ¼ 13 and γ ¼ 0:1.…”
Section: Establishment Of the Tumour Breath-holding Position Estimati...mentioning
confidence: 99%