Suppr超能文献

评估 ARTSENS 中自动识别颈总动脉的算法。

Evaluation of the algorithm for automatic identification of the common carotid artery in ARTSENS.

机构信息

Department of Electrical Engineering, Indian Institute of Technology Madras, India.

出版信息

Physiol Meas. 2014 Jul;35(7):1299-317. doi: 10.1088/0967-3334/35/7/1299. Epub 2014 May 22.

Abstract

Arterial compliance (AC) is an indicator of the risk of cardiovascular diseases (CVDs) and it is generally estimated by B-mode ultrasound investigation. The number of sonologists in low- and middle-income countries is very disproportionate to the extent of CVD. To bridge this gap we are developing an image-free CVD risk screening tool-arterial stiffness evaluation for non-invasive screening (ARTSENS™) which can be operated with minimal training. ARTSENS uses a single element ultrasound transducer to investigate the wall dynamics of the common carotid artery (CCA) and subsequently measure the AC. Identification of the proximal and distal walls of the CCA, in the ultrasound frames, is an important step in the process of the measurement of AC. The image-free nature of ARTSENS creates some unique issues which necessitate the development of a new algorithm that can automatically identify the CCA from a sequence of A-mode radio-frequency (RF) frames. We have earlier presented the concept and preliminary results for an algorithm that employed clues from the relative positions and temporal motion of CCA walls, for identifying the CCA and finding the approximate wall positions. In this paper, we present the detailed algorithm and its extensive evaluation based on simulation and clinical studies. The algorithm identified the wall position correctly in more than 90% of all simulated datasets where the signal-to-noise ratio was greater than 3 dB. The algorithm was then tested extensively on RF data obtained from the CCA of 30 human volunteers, where it successfully located the arterial walls in more than 70% of all measurements. The algorithm could successfully reject frames where the CCA was not present thus assisting the operator to place the probe correctly in the image-free system, ARTSENS. It was demonstrated that the algorithm can be used in real-time with few trade-offs which do not affect the accuracy of CCA identification. A new method for depth range selection that leads to significant performance improvements has also been demonstrated.

摘要

动脉顺应性(AC)是心血管疾病(CVDs)风险的一个指标,通常通过 B 型超声检查来估计。在低收入和中等收入国家,超声科医生的数量与 CVD 的程度极不相称。为了弥补这一差距,我们正在开发一种无图像的 CVD 风险筛查工具——用于非侵入性筛查的动脉僵硬度评估(ARTSENS™),它可以在最少的培训下操作。ARTSENS 使用单个元件超声换能器来研究颈总动脉(CCA)的壁动力学,随后测量 AC。在测量 AC 的过程中,识别超声帧中 CCA 的近侧和远侧壁是一个重要步骤。ARTSENS 的无图像特性带来了一些独特的问题,这需要开发一种新的算法,该算法可以从一系列 A 型射频(RF)帧中自动识别 CCA。我们之前提出了一种算法的概念和初步结果,该算法利用了 CCA 壁的相对位置和时间运动的线索,用于识别 CCA 并找到近似的壁位置。在本文中,我们提出了详细的算法及其基于模拟和临床研究的广泛评估。该算法在信噪比大于 3dB 的所有模拟数据集中,正确识别了超过 90%的壁位置。然后,该算法在从 30 名人类志愿者的 CCA 获得的 RF 数据上进行了广泛测试,在超过 70%的测量中成功定位了动脉壁。该算法能够成功拒绝不存在 CCA 的帧,从而帮助操作员在无图像系统 ARTSENS 中正确放置探头。结果表明,该算法可以在不影响 CCA 识别准确性的情况下,以很少的折衷进行实时使用。还展示了一种新的深度范围选择方法,该方法可显著提高性能。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验