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基于超声心动图的钙识别与评分:主动脉瓣狭窄的探索性研究

Calcium Identification and Scoring Based on Echocardiography. An Exploratory Study on Aortic Valve Stenosis.

作者信息

Elvas Luis B, Almeida Ana G, Rosario Luís, Dias Miguel Sales, Ferreira João C

机构信息

Inov Inesc Inovação-Instituto de Novas Tecnologias, 1000-029 Lisbon, Portugal.

Instituto Universitário de Lisboa (ISCTE-IUL), ISTAR, 1649-026 Lisboa, Portugal.

出版信息

J Pers Med. 2021 Jun 24;11(7):598. doi: 10.3390/jpm11070598.

Abstract

Currently, an echocardiography expert is needed to identify calcium in the aortic valve, and a cardiac CT-Scan image is needed for calcium quantification. When performing a CT-scan, the patient is subject to radiation, and therefore the number of CT-scans that can be performed should be limited, restricting the patient's monitoring. Computer Vision (CV) has opened new opportunities for improved efficiency when extracting knowledge from an image. Applying CV techniques on echocardiography imaging may reduce the medical workload for identifying the calcium and quantifying it, helping doctors to maintain a better tracking of their patients. In our approach, a simple technique to identify and extract the calcium pixel count from echocardiography imaging, was developed by using CV. Based on anonymized real patient echocardiographic images, this approach enables semi-automatic calcium identification. As the brightness of echocardiography images (with the highest intensity corresponding to calcium) vary depending on the acquisition settings, echocardiographic adaptive image binarization has been performed. Given that blood maintains the same intensity on echocardiographic images-being always the darker region-blood areas in the image were used to create an adaptive threshold for binarization. After binarization, the region of interest (ROI) with calcium, was interactively selected by an echocardiography expert and extracted, allowing us to compute a calcium pixel count, corresponding to the spatial amount of calcium. The results obtained from these experiments are encouraging. With this technique, from echocardiographic images collected for the same patient with different acquisition settings and different brightness, obtaining a calcium pixel count, where pixel values show an absolute pixel value margin of error of 3 (on a scale from 0 to 255), achieving a Pearson Correlation of 0.92 indicating a strong correlation with the human expert assessment of calcium area for the same images.

摘要

目前,需要超声心动图专家来识别主动脉瓣中的钙,并且需要心脏CT扫描图像来进行钙定量。在进行CT扫描时,患者会受到辐射,因此可进行的CT扫描次数应受到限制,这限制了对患者的监测。计算机视觉(CV)为从图像中提取知识时提高效率带来了新机遇。将CV技术应用于超声心动图成像可能会减少识别和量化钙的医疗工作量,帮助医生更好地跟踪患者。在我们的方法中,通过使用CV开发了一种从超声心动图成像中识别和提取钙像素数量的简单技术。基于匿名的真实患者超声心动图图像,这种方法能够实现半自动钙识别。由于超声心动图图像的亮度(最高强度对应钙)会根据采集设置而变化,因此进行了超声心动图自适应图像二值化。鉴于血液在超声心动图图像上保持相同强度(始终是较暗区域),图像中的血液区域被用于创建二值化的自适应阈值。二值化后,由超声心动图专家交互式选择并提取含钙的感兴趣区域(ROI),从而使我们能够计算出与钙的空间量相对应的钙像素数量。从这些实验中获得的结果令人鼓舞。使用这种技术,对于为同一患者在不同采集设置和不同亮度下收集的超声心动图图像,能够获得钙像素数量,其中像素值显示的绝对像素值误差范围为3(范围从0到255),皮尔逊相关系数为0.92,表明与人类专家对相同图像的钙面积评估有很强的相关性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9a16/8303472/79e347890d98/jpm-11-00598-g001.jpg

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