Alizadeh Maryam, Cote Melissa, Branzan Albu Alexandra
University of Victoria, Department of Electrical and Computer Engineering, Victoria, British Columbia, Canada.
J Med Imaging (Bellingham). 2021 Jan;8(1):015501. doi: 10.1117/1.JMI.8.1.015501. Epub 2021 Feb 12.
: Prosthetic heart valve designs must be rigorously tested using cardiovascular equipment. The valve orifice area over time constitutes a key quality metric which is typically assessed manually, thus a tedious and error-prone task. From a computer vision viewpoint, a major unsolved issue lies in the orifice being partly occluded by the leaflets' inner side or inaccurately depicted due to its transparency. Here, we address this issue, which allows us to focus on the accurate and automatic computation of valve orifice areas. : We propose a segmentation approach based on the detection of the leaflets' free edges. Using video frames recorded with a high-speed digital camera during simulations, an initial estimation of the orifice area is first obtained via active contouring and thresholding and then refined to capture the leaflet free edges via a curve transformation mechanism. : Experiments on video data from pulsatile flow testing demonstrate the effectiveness of our approach: a root-mean-square error (RMSE) on the temporal extracted orifice areas between 0.8% and 1.2%, an average Jaccard similarity coefficient between 0.933 and 0.956, and an average Hausdorff distance between 7.2 and 11.9 pixels. : Our approach significantly outperformed a state-of-the-art algorithm in terms of evaluation metrics related to valve design (RMSE) and computer vision (accuracy of the orifice shape). It can also cope with lower quality videos and is better at processing frames showing an almost closed valve, a crucial quality for assessing valve design malfunctions related to their improper closing.
人工心脏瓣膜设计必须使用心血管设备进行严格测试。瓣膜孔面积随时间变化是一项关键质量指标,通常需人工评估,这是一项繁琐且容易出错的任务。从计算机视觉的角度来看,一个主要的未解决问题在于孔口部分被瓣叶内侧遮挡,或者由于其透明度而描绘不准确。在此,我们解决了这个问题,这使我们能够专注于瓣膜孔面积的准确自动计算。
我们提出了一种基于检测瓣叶自由边缘的分割方法。利用高速数码相机在模拟过程中记录的视频帧,首先通过主动轮廓和阈值处理获得孔口面积的初始估计值,然后通过曲线变换机制对其进行细化以捕捉瓣叶自由边缘。
时间提取的孔口面积的均方根误差(RMSE)在0.8%至1.2%之间,平均杰卡德相似系数在0.933至0.956之间,平均豪斯多夫距离在7.2至11.9像素之间。
在与瓣膜设计相关的评估指标(RMSE)和计算机视觉(孔口形状的准确性)方面,我们的方法明显优于一种先进算法。它还可以处理质量较低的视频,并且在处理显示瓣膜几乎关闭的帧方面表现更好,这是评估与瓣膜关闭不当相关的设计故障的关键质量指标。