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三维治疗针适形器在超声引导下的肝脏消融应用中的分割。

Three-dimensional therapy needle applicator segmentation for ultrasound-guided focal liver ablation.

机构信息

Department of Medical Biophysics, Western University, London, ON, N6A 3K7, Canada.

Robarts Research Institute, Western University, London, ON, N6A 3K7, Canada.

出版信息

Med Phys. 2019 Jun;46(6):2646-2658. doi: 10.1002/mp.13548. Epub 2019 May 6.

DOI:10.1002/mp.13548
PMID:30994191
Abstract

PURPOSE

Minimally invasive procedures, such as microwave ablation, are becoming first-line treatment options for early-stage liver cancer due to lower complication rates and shorter recovery times than conventional surgical techniques. Although these procedures are promising, one reason preventing widespread adoption is inadequate local tumor ablation leading to observations of higher local cancer recurrence compared to conventional procedures. Poor ablation coverage has been associated with two-dimensional (2D) ultrasound (US) guidance of the therapy needle applicators and has stimulated investigation into the use of three-dimensional (3D) US imaging for these procedures. We have developed a supervised 3D US needle applicator segmentation algorithm using a single user input to augment the addition of 3D US to the current focal liver tumor ablation workflow with the goals of identifying and improving needle applicator localization efficiency.

METHODS

The algorithm is initialized by creating a spherical search space of line segments around a manually chosen seed point that is selected by a user on the needle applicator visualized in a 3D US image. The most probable trajectory is chosen by maximizing the count and intensity of threshold voxels along a line segment and is filtered using the Otsu method to determine the tip location. Homogeneous tissue mimicking phantom images containing needle applicators were used to optimize the parameters of the algorithm prior to a four-user investigation on retrospective 3D US images of patients who underwent microwave ablation for liver cancer. Trajectory, axis localization, and tip errors were computed based on comparisons to manual segmentations in 3D US images.

RESULTS

Segmentation of needle applicators in ten phantom 3D US images was optimized to median (Q1, Q3) trajectory, axis, and tip errors of 2.1 (1.1, 3.6)°, 1.3 (0.8, 2.1) mm, and 1.3 (0.7, 2.5) mm, respectively, with a mean ± SD segmentation computation time of 0.246 ± 0.007 s. Use of the segmentation method with a 16 in vivo 3D US patient dataset resulted in median (Q1, Q3) trajectory, axis, and tip errors of 4.5 (2.4, 5.2)°, 1.9 (1.7, 2.1) mm, and 5.1 (2.2, 5.9) mm based on all users.

CONCLUSIONS

Segmentation of needle applicators in 3D US images during minimally invasive liver cancer therapeutic procedures could provide a utility that enables enhanced needle applicator guidance, placement verification, and improved clinical workflow. A semi-automated 3D US needle applicator segmentation algorithm used in vivo demonstrated localization of the visualized trajectory and tip with less than 5° and 5.2 mm errors, respectively, in less than 0.31 s. This offers the ability to assess and adjust needle applicator placements intraoperatively to potentially decrease the observed liver cancer recurrence rates associated with current ablation procedures. Although optimized for deep and oblique angle needle applicator insertions, this proposed workflow has the potential to be altered for a variety of image-guided minimally invasive procedures to improve localization and verification of therapy needle applicators intraoperatively.

摘要

目的

由于微创程序的并发症发生率较低,恢复期较短,因此微波消融等微创程序已成为早期肝癌的一线治疗选择,而不是传统的手术技术。尽管这些程序很有前途,但有一个原因阻止了它们的广泛采用,那就是局部肿瘤消融不充分,导致与传统程序相比,局部癌症复发率更高。消融覆盖不足与治疗针应用器的二维(2D)超声(US)引导有关,并刺激了对这些程序的三维(3D)US 成像的使用。我们开发了一种监督 3D US 针应用器分割算法,该算法使用单个用户输入来增强当前的局灶性肝肿瘤消融工作流程中的 3D US 添加,目的是识别和提高针应用器的定位效率。

方法

该算法通过在用户在 3D US 图像中选择的手动选择的种子点周围创建线段的球形搜索空间来初始化。通过最大化线段上的阈值体素的计数和强度来选择最可能的轨迹,并使用 Otsu 方法进行过滤以确定尖端位置。使用包含针应用器的同质组织模拟体模图像来优化算法参数,然后在四名用户对接受肝癌微波消融治疗的患者的回顾性 3D US 图像进行研究之前进行。基于与 3D US 图像中的手动分割的比较,计算了轨迹、轴定位和尖端误差。

结果

在十个体模 3D US 图像中对针应用器进行了分割,优化后的中位数(Q1,Q3)轨迹、轴和尖端误差分别为 2.1(1.1,3.6)°、1.3(0.8,2.1)mm 和 1.3(0.7,2.5)mm,平均标准差分割计算时间为 0.246±0.007s。在使用具有 16 个体内 3D US 患者数据集的分割方法后,基于所有用户,中位数(Q1,Q3)轨迹、轴和尖端误差分别为 4.5(2.4,5.2)°、1.9(1.7,2.1)mm 和 5.1(2.2,5.9)mm。

结论

在微创肝癌治疗过程中,3D US 图像中的针应用器分割可能提供一种实用功能,从而能够增强针应用器引导、放置验证和改善临床工作流程。在体内使用半自动 3D US 针应用器分割算法,分别在不到 0.31s 的时间内以小于 5°和 5.2mm 的误差定位可视化轨迹和尖端。这提供了评估和调整针应用器放置的能力,以降低当前消融程序中观察到的肝癌复发率。尽管该算法经过优化可用于深部和倾斜角度的针应用器插入,但该工作流程有可能根据各种图像引导的微创程序进行修改,以改善术中治疗针应用器的定位和验证。

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