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Modelling Prostate Motion for Data Fusion During Image-Guided Interventions

机译:在图像引导干预期间为数据融合建模前列腺运动

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摘要

There is growing clinical demand for image registration techniques that allow multimodal data fusion for accurate targeting of needle biopsy and ablative prostate cancer treatments. However, during procedures where transrectal ultrasound (TRUS) guidance is used, substantial gland deformation can occur due to TRUS probe pressure. In this paper, the ability of a statistical shape/motion model, trained using finite element simulations, to predict and compensate for this source of motion is investigated. Three-dimensional ultrasound images acquired on five patient prostates, before and after TRUS-probe-induced deformation, were registered using a nonrigid, surface-based method, and the accuracy of different deformation models compared. Registration using a statistical motion model was found to outperform alternative elastic deformation methods in terms of accuracy and robustness, and required substantially fewer target surface points to achieve a successful registration. The mean final target registration error (based on anatomical landmarks) using this method was 1.8 mm. We conclude that a statistical model of prostate deformation provides an accurate, rapid and robust means of predicting prostate deformation from sparse surface data, and is therefore well-suited to a number of interventional applications where there is a need for deformation compensation.
机译:临床上对图像配准技术的需求不断增长,这些技术可实现多模式数据融合以精确定位针头活检和消融性前列腺癌治疗。但是,在使用经直肠超声(TRUS)引导的手术过程中,由于TRUS探头的压力可能会导致明显的腺体变形。在本文中,研究了使用有限元模拟训练的统计形状/运动模型预测和补偿此运动源的能力。使用非刚性,基于表面的方法记录在TRUS探针引起的变形之前和之后在五个患者前列腺上采集的三维超声图像,并比较不同变形模型的准确性。发现使用统计运动模型进行配准在准确性和鲁棒性方面优于替代的弹性变形方法,并且需要很少的目标表面点才能成功完成配准。使用此方法的平均最终目标配准误差(基于解剖标志)为1.8 mm。我们得出的结论是,前列腺变形的统计模型提供了一种从稀疏表面数据预测前列腺变形的准确,快速和强大的方法,因此非常适合需要变形补偿的许多介入应用。

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