United Imaging Healthcare America, Inc., Houston, Texas, USA.
Cardiology Division, Washington University School of Medicine, St. Louis, Missouri, USA.
Med Phys. 2022 Jan;49(1):129-143. doi: 10.1002/mp.15327. Epub 2021 Nov 23.
Cardiovascular magnetic resonance (CMR) is a vital diagnostic tool in the management of cardiovascular diseases. The advent of advanced CMR technologies combined with artificial intelligence (AI) has the potential to simplify imaging, reduce image acquisition time without compromising image quality (IQ), and improve magnetic field uniformity. Here, we aim to implement two AI-based deep learning techniques for automatic slice alignment and cardiac shimming and evaluate their performance in clinical cardiac magnetic resonance imaging (MRI).
Two deep neural networks were developed, trained, and validated on pre-acquired cardiac MRI datasets (>500 subjects) to achieve automatic slice planning and shimming (implemented in the scanner) for CMR. To examine the performance of our automated cardiac planning (EasyScan) and AI-based shim (AI shim), two prospective studies were performed subsequently. For the EasyScan validation, 10 healthy subjects underwent two identical CMR protocols: with manual cardiac planning and with AI-based EasyScan to assess protocol scan time difference and accuracy of cardiac plane prescriptions on a 1.5 T clinical MRI scanner. For the AI shim validation, a total of 20 subjects were recruited: 10 healthy and 10 cardio-oncology patients with referrals for a CMR examination. Cine images were obtained with standard cardiac volume shim and with AI shim to assess signal-to-noise ratio (SNR), contrast-to-noise ratio (CNR), overall IQ (sharpness and MR image degradation), ejection fraction (EF), and absolute wall thickening. A hybrid statistical method using of nonparametric (Wilcoxon) and parametric (t-test) assessments was employed for statistical analyses.
CMR protocol with AI-based plane prescriptions, EasyScan, minimized operator dependence and reduced overall scanning time by over 2 min (∼13 % faster, p < 0.001) compared to the protocol with manual cardiac planning. EasyScan plane prescriptions also demonstrated more accurate (less plane angulation errors from planes manually prescribed by a certified cardiac MRI technologist) cardiac planes than previously reported strategies. Additionally, AI shim resulted in improved B0 field homogeneity. Cine images obtained with AI shim revealed a significantly higher SNR (12.49%; p = 0.002) than those obtained with volume shim (volume shim: 32.90 ± 7.42 vs. AI shim: 37.01 ± 8.87) for the left ventricle (LV) myocardium. LV myocardium CNR was 12.48% higher for cine imaging with AI shim (149.02 ± 39.15) than volume shim (132.49 ± 33.94). Images obtained with AI shim resulted in sharper images than those obtained with volume shim (p = 0.012). The LVEF and absolute wall thickening also showed that differences exist between the two shimming methods. The LVEF by AI shim was shown to be slightly larger than LVEF by volume shim in two groups: 2.87% higher with AI shim for the healthy group and 1.70% higher with AI shim for the patient group. The LV absolute wall thickening (in mm) also showed that differences exist between shimming methods for each group with larger changes observed in the patient group (healthy: 3.31%, p = 0.234 and patient group: 7.29%, p = 0.059).
CMR exams using EasyScan for cardiac planning demonstrated accelerated cardiac exam compared to the CMR protocol with manual cardiac planning. Improved and more uniform B0 magnetic field homogeneity also achieved using AI shim technique compared to volume shimming.
心血管磁共振(CMR)是心血管疾病管理的重要诊断工具。先进的 CMR 技术与人工智能(AI)的结合具有简化成像、减少图像采集时间(在不影响图像质量(IQ)的情况下)和提高磁场均匀性的潜力。在这里,我们旨在实施两种基于人工智能的深度学习技术,用于自动切片配准和心脏匀场,并评估它们在临床心脏磁共振成像(MRI)中的性能。
开发了两个深度神经网络,在预先获取的心脏 MRI 数据集(>500 个主题)上进行训练和验证,以实现 CMR 的自动切片规划和匀场(在扫描仪中实现)。为了检查我们的自动心脏规划(EasyScan)和基于人工智能的匀场(AI shim)的性能,随后进行了两项前瞻性研究。对于 EasyScan 验证,10 名健康受试者接受了两个相同的 CMR 方案:手动心脏规划和基于 AI 的 EasyScan,以评估协议扫描时间差异和 1.5 T 临床 MRI 扫描仪上心脏平面处方的准确性。对于 AI shim 验证,共招募了 20 名受试者:10 名健康受试者和 10 名肿瘤心脏病学患者,他们需要进行 CMR 检查。使用标准心脏容积匀场和 AI shim 获得电影图像,以评估信噪比(SNR)、对比噪声比(CNR)、整体 IQ(锐度和磁共振图像退化)、射血分数(EF)和绝对壁增厚。采用非参数(Wilcoxon)和参数(t 检验)评估的混合统计方法进行统计分析。
与手动心脏规划的 CMR 协议相比,基于 AI 的平面规划方案(EasyScan)最小化了操作人员的依赖性,并将整体扫描时间缩短了 2 分钟以上(约快 13%,p<0.001)。与由经过认证的心脏 MRI 技术人员手动处方的平面相比,EasyScan 平面处方也显示出更准确的(平面角度误差更小)心脏平面。此外,AI shim 还改善了 B0 磁场的均匀性。使用 AI shim 获得的电影图像的 SNR(12.49%;p=0.002)显著高于使用容积匀场获得的 SNR(容积匀场:32.90±7.42 与 AI shim:37.01±8.87),左心室(LV)心肌的 SNR 更高。与容积匀场(132.49±33.94)相比,AI shim 用于电影成像的 LV 心肌 CNR 高 12.48%(149.02±39.15)。使用 AI shim 获得的图像比使用容积匀场获得的图像更清晰(p=0.012)。LVEF 和绝对壁增厚也表明两种匀场方法之间存在差异。AI shim 的 LVEF 比容积匀场的 LVEF 略高:健康组高 2.87%,患者组高 1.70%。LV 绝对壁增厚(以毫米为单位)也表明两种匀场方法之间存在差异,每个组中的变化都更大,患者组(健康组:3.31%,p=0.234,患者组:7.29%,p=0.059)。
与手动心脏规划的 CMR 协议相比,使用 EasyScan 进行心脏规划的 CMR 检查加速了心脏检查。与容积匀场相比,AI shim 技术还实现了更好和更均匀的 B0 磁场均匀性。