Hatt Charles R, Speidel Michael A, Raval Amish N
University of Wisconsin - Madison, Department of Medical Physics, 1111 Highland Ave, Rm 1005 Madison, WI, 53705, United States.
University of Wisconsin - Madison, Department of Medical Physics, United States.
Med Image Anal. 2016 Dec;34:101-108. doi: 10.1016/j.media.2016.04.008. Epub 2016 May 3.
In recent years, registration between x-ray fluoroscopy (XRF) and transesophageal echocardiography (TEE) has been rapidly developed, validated, and translated to the clinic as a tool for advanced image guidance of structural heart interventions. This technology relies on accurate pose-estimation of the TEE probe via standard 2D/3D registration methods. It has been shown that latencies caused by slow registrations can result in errors during untracked frames, and a real-time ( > 15 hz) tracking algorithm is needed to minimize these errors. This paper presents two novel similarity metrics designed for accurate, robust, and extremely fast pose-estimation of devices from XRF images: Direct Splat Correlation (DSC) and Patch Gradient Correlation (PGC). Both metrics were implemented in CUDA C, and validated on simulated and clinical datasets against prior methods presented in the literature. It was shown that by combining DSC and PGC in a hybrid method (HYB), target registration errors comparable to previously reported methods were achieved, but at much higher speeds and lower failure rates. In simulated datasets, the proposed HYB method achieved a median projected target registration error (pTRE) of 0.33 mm and a mean registration frame-rate of 12.1 hz, while previously published methods produced median pTREs greater than 1.5 mm and mean registration frame-rates less than 4 hz. In clinical datasets, the HYB method achieved a median pTRE of 1.1 mm and a mean registration frame-rate of 20.5 hz, while previously published methods produced median pTREs greater than 1.3 mm and mean registration frame-rates less than 12 hz. The proposed hybrid method also had much lower failure rates than previously published methods.
近年来,X射线荧光透视(XRF)与经食管超声心动图(TEE)之间的配准技术得到了快速发展、验证,并作为一种用于心脏结构介入高级图像引导的工具应用于临床。该技术通过标准的二维/三维配准方法依赖于TEE探头的精确姿态估计。研究表明,配准速度慢导致的延迟会在未跟踪帧期间产生误差,因此需要一种实时(>15Hz)跟踪算法来最小化这些误差。本文提出了两种新颖的相似性度量,用于从XRF图像中对设备进行精确、稳健且极快速的姿态估计:直接散斑相关(DSC)和补丁梯度相关(PGC)。这两种度量均在CUDA C中实现,并在模拟和临床数据集上针对文献中提出的先前方法进行了验证。结果表明,通过在混合方法(HYB)中结合DSC和PGC,可以实现与先前报道方法相当的目标配准误差,但速度更快且失败率更低。在模拟数据集中,所提出的HYB方法实现了0.33mm的中位投影目标配准误差(pTRE)和12.1Hz的平均配准帧率,而先前发表的方法产生的中位pTRE大于1.5mm,平均配准帧率小于4Hz。在临床数据集中,HYB方法实现了1.1mm的中位pTRE和20.5Hz的平均配准帧率,而先前发表的方法产生的中位pTRE大于1.3mm,平均配准帧率小于12Hz。所提出的混合方法的失败率也远低于先前发表的方法。