Cheung Hoi C, Vimalesvaran Kavitha, Zaman Sameer, Michaelides Michalis, Shun-Shin Matthew J, Francis Darrel P, Cole Graham D, Howard James P
National Heart and Lung Institute, Imperial College London, London, United Kingdom.
National Heart and Lung Institute, Imperial College London, London, United Kingdom.
J Cardiovasc Magn Reson. 2024;26(2):101067. doi: 10.1016/j.jocmr.2024.101067. Epub 2024 Jul 28.
Accurate measurements from cardiovascular magnetic resonance (CMR) images require precise positioning of scan planes and elimination of motion artifacts from arrhythmia or breathing. Unidentified or incorrectly managed artifacts degrade image quality, invalidate clinical measurements, and decrease diagnostic confidence. Currently, radiographers must manually inspect each acquired image to confirm diagnostic quality and decide whether reacquisition or a change in sequences is warranted. We aimed to develop artificial intelligence (AI) to provide continuous quality scores across different quality domains, and from these, determine whether cines are clinically adequate, require replanning, or warrant a change in protocol.
A three-dimensional convolutional neural network was trained to predict cine quality graded on a continuous scale by a level 3 CMR expert, focusing separately on planning and motion artifacts. It incorporated four distinct output heads for the assessment of image quality in terms of (a, b, c) 2-, 3- and 4-chamber misplanning, and (d) long- and short-axis arrhythmia/breathing artifact. Backpropagation was selectively performed across these heads based on the labels present for each cine. Each image in the testing set was reported by four level 3 CMR experts, providing a consensus on clinical adequacy. The AI's assessment of image quality and ability to identify images requiring replanning or sequence changes were evaluated with Spearman's rho and the area under receiver operating characteristic curve (AUROC), respectively.
A total of 1940 cines across 1387 studies were included. On the test set of 383 cines, AI-judged image quality correlated strongly with expert judgment, with Spearman's rho of 0.84, 0.84, 0.81, and 0.81 for 2-, 3- and 4-chamber planning quality and the extent of arrhythmia or breathing artifacts, respectively. The AI also showed high efficacy in flagging clinically inadequate cines (AUROC 0.88, 0.93, and 0.93 for identifying misplanning of 2-, 3- and 4-chamber cines, and 0.90 for identifying movement artifacts).
AI can assess distinct domains of CMR cine quality and provide continuous quality scores that correlate closely with a consensus of experts. These ratings could be used to identify cases where reacquisition is warranted and guide corrective actions to optimize image quality, including replanning, prospective gating, or real-time imaging.
心血管磁共振(CMR)图像的准确测量需要精确放置扫描平面,并消除心律失常或呼吸引起的运动伪影。未识别或处理不当的伪影会降低图像质量,使临床测量无效,并降低诊断信心。目前,放射技师必须手动检查每张采集的图像,以确认诊断质量,并决定是否需要重新采集或改变序列。我们旨在开发人工智能(AI),以提供不同质量领域的连续质量评分,并据此确定电影图像在临床上是否足够、是否需要重新规划或是否需要改变方案。
训练一个三维卷积神经网络,以预测由3级CMR专家在连续尺度上分级的电影图像质量,分别关注规划和运动伪影。它包含四个不同的输出头,用于评估图像质量,分别涉及(a、b、c)二腔、三腔和四腔规划错误,以及(d)长轴和短轴心律失常/呼吸伪影。根据每个电影图像的标签,在这些输出头上选择性地进行反向传播。测试集中的每张图像由四位3级CMR专家报告,以就临床充分性达成共识。分别用Spearman等级相关系数和受试者操作特征曲线下面积(AUROC)评估人工智能对图像质量的评估以及识别需要重新规划或改变序列的图像的能力。
共纳入1387项研究中的1940个电影图像。在383个电影图像的测试集中,人工智能判断的图像质量与专家判断密切相关,二腔、三腔和四腔规划质量以及心律失常或呼吸伪影程度的Spearman等级相关系数分别为0.84、0.84、0.81和0.81。人工智能在标记临床上不充分的电影图像方面也显示出高效性(识别二腔、三腔和四腔电影图像规划错误的AUROC分别为0.88、0.93和0.93,识别运动伪影的AUROC为0.90)。
人工智能可以评估CMR电影图像质量的不同领域,并提供与专家共识密切相关的连续质量评分。这些评分可用于识别需要重新采集的病例,并指导采取纠正措施以优化图像质量,包括重新规划、前瞻性门控或实时成像。