Faculty of Physics and Astronomy, Ruprecht-Karls-Universität Heidelberg, Heidelberg, Germany.
Siemens Healthineers AG, Erlangen, Germany.
Med Phys. 2024 Nov;51(11):8018-8033. doi: 10.1002/mp.17376. Epub 2024 Sep 18.
In MR-guided in-bore percutaneous needle interventions, typically 2D interactive real-time imaging is used for navigating the needle into the target. Misaligned 2D imaging planes can result in losing visibility of the needle in the 2D images, which impedes successful targeting. Necessary iterative manual slice adjustment can prolong interventional workflows. Therefore, rapid automatic alignment of the imaging planes with the needle would be preferable to improve such workflows.
To investigate rapid 3D localization of needles in MR-guided interventions via a convolutional neural network (CNN)-based localization algorithm using an undersampled white-marker contrast acquisition for the purpose of automatic imaging slice alignment.
A radial 3D rf-spoiled gradient echo MR pulse sequence with white-marker encoding was implemented and a CNN-based localization algorithm was employed to extract position and orientation of an aspiration needle from the undersampled white-marker images. The CNN was trained using porcine tissue phantoms (257 needle trajectories, four-fold data augmentation, 90%/10% split into training and validation dataset). Achievable localization times and accuracy were evaluated retrospectively in an ex vivo study (109 needle trajectories) for a range of needle orientations between 78° and 90° relative to the B field. A proof-of-concept in vivo experiment was performed in two porcine animal models and feasibility of automatic imaging slice alignment was evaluated retrospectively.
Ex vivo needle localization was achieved with a median localization accuracy of 1.9 mm (distance needle tip to detected needle axis) and a median angular deviation of 2.6° for needle orientations between 86° and 90° to the B field from fully sampled WM images (resolution of (4 mm), 6434 acquired radial k-space spokes, acquisition time of 80.4 s) in a field-of-view of (256 mm). Localization accuracy decreased with increasing undersampling and needle trajectory increasingly aligned with B. For needle orientations between 86° and 90° to the B field, a highly accelerated acquisition of only 32 k-space spokes (acquisition time of 0.4 s) yielded a median localization accuracy of 3.1 mm and a median angular deviation of 4.7°. For needle orientations between 78° and 82° to the B field, a median accuracy and angular deviation of 3.5 mm and 6.8° could still be achieved with 64 sampled spokes (acquisition time of 0.8 s). In vivo, a localization accuracy of 1.4 mm and angular deviation of 3.4° was achieved sampling 32 k-space spokes (acquisition time of 0.48 s) with the needle oriented at 87.7° to the B field. For a needle oriented at 77.6° to the B field, localization accuracy of 5.3 mm and angular deviation of 6.8° were still achieved sampling 128 k-space spokes (acquisition time of 1.92 s), allowing for retrospective slice alignment.
The investigated approach enables passive biopsy needle localization in 3D. Acceleration of the localization to real-time applicability is feasible for needle orientations approximately perpendicular to B. The method can potentially facilitate MR-guided needle interventions by enabling automatic imaging slice alignment with the needle.
在 MR 引导的腔内经皮穿刺针介入中,通常使用 2D 交互式实时成像来引导针进入目标。不匹配的 2D 成像平面可能导致在 2D 图像中丢失针的可见性,从而阻碍目标的成功定位。必要的迭代手动切片调整会延长介入工作流程。因此,快速自动对齐成像平面和针将有助于改善此类工作流程。
研究一种基于卷积神经网络(CNN)的定位算法,通过使用欠采样白标记对比度采集来快速定位 MR 引导介入中的针,目的是实现自动成像切片对齐。
实施了一种带有白标记编码的径向 3D rf 失超梯度回波 MR 脉冲序列,并使用基于 CNN 的定位算法从欠采样的白标记图像中提取抽吸针的位置和方向。该 CNN 使用猪组织体模(257 条针轨迹,四折数据扩充,90%/10%分为训练数据集和验证数据集)进行训练。在一个范围为 78°至 90°的离体研究(109 条针轨迹)中评估了可实现的定位时间和准确性,评估了各种针相对于 B 场的方向。在两个猪动物模型中进行了概念验证的体内实验,并回顾性评估了自动成像切片对齐的可行性。
离体针定位的中位定位精度为 1.9mm(针尖到检测针轴的距离),当针相对于 B 场的方向在 86°至 90°之间时,中位角度偏差为 2.6°,从完全采样的 WM 图像(分辨率为(4mm),6434 个采集的径向 k 空间 spokes,采集时间为 80.4s),视野为(256mm)。定位精度随欠采样而降低,并且针轨迹与 B 越来越一致。对于相对于 B 场在 86°至 90°之间的针方向,仅采集 32 个 k 空间 spokes(采集时间为 0.4s)的高度加速采集可获得中位定位精度为 3.1mm 和中位角度偏差为 4.7°。对于相对于 B 场在 78°至 82°之间的针方向,仍可获得中位精度和角度偏差为 3.5mm 和 6.8°,采集时间为 0.8s,采集时间为 64 个采样的 spokes。在体内,当针相对于 B 场的方向为 87.7°时,采用 32 个 k 空间采样(采集时间为 0.48s)可实现 1.4mm 的定位精度和 3.4°的角度偏差。当针相对于 B 场的方向为 77.6°时,仍可实现 5.3mm 的定位精度和 6.8°的角度偏差,采集时间为 1.92s,允许进行回顾性切片对齐。
所研究的方法能够在 3D 中实现被动活检针定位。对于大约垂直于 B 的针方向,实现实时适用性的加速是可行的。该方法可以通过实现针的自动成像切片对齐,为 MR 引导的针介入提供潜在的便利。