Department of Cardiology, Tokyo Medical University Hachioji Medical Center, Tokyo, Japan.
Department of Cardiology, Tokyo Medical University Hospital, 6-7-1, Nishi-shinjuku, Shinjuku, Tokyo, Japan.
Int J Cardiovasc Imaging. 2024 Sep;40(9):1903-1910. doi: 10.1007/s10554-024-03178-9. Epub 2024 Jul 23.
Global longitudinal strain (GLS) is an echocardiographic measure to detect chemotherapy-related cardiovascular dysfunction. However, its limited availability and the needed expertise may restrict its generalization. Artificial intelligence (AI)-based GLS might overcome these challenges. Our aims are to explore the agreements between AI-based GLS and conventional GLS, and to assess whether the agreements were influenced by expertise levels, cardiac remodeling and cardiovascular diseases/risks. Echocardiographic images in the apical four-chamber view of left ventricle were retrospectively analyzed based on AI-based GLS in patients treated with chemotherapy, and correlation between AI-based GLS (Caas Qardia, Pie Medical Imaging) and conventional GLS (Vivid E9/VividE95, GE Healthcare) were assessed. The agreement between unexperienced physicians ("GLS beginner") and experienced echocardiographer were also assessed. Among 94 patients (mean age 69 ± 12 years, 73% female), mean left ventricular ejection fraction was 64 ± 6%, 14% of patients had left ventricular hypertrophy, and 21% had left atrial enlargement. Mean GLS was - 15.9 ± 3.4% and - 19.0 ± 3.7% for the AI and conventional method, respectively. There was a moderate correlation between these methods (rho = 0.74; p < 0.01), and bias was - 3.1% (95% limits of agreement: -8.1 to 2.0). The reproducibility between GLS beginner and an experienced echocardiographer was numerically better in the AI method than the conventional method (inter-observer agreement = 0.82 vs. 0.68). The agreements were consistent across abnormal cardiac structure and function categories (p-for-interaction > 0.10). In patients treated with chemotherapy. AI-based GLS was moderately correlated with conventional GLS and provided a numerically better reproducibility compared with conventional GLS, regardless of different levels of expertise.
全球纵向应变(GLS)是一种超声心动图测量方法,用于检测化疗相关的心血管功能障碍。然而,其可用性有限且需要专业知识,可能会限制其推广。基于人工智能(AI)的 GLS 可能会克服这些挑战。我们的目的是探索基于 AI 的 GLS 与传统 GLS 之间的一致性,并评估这些一致性是否受到专业水平、心脏重构以及心血管疾病/风险的影响。我们回顾性地分析了接受化疗治疗的患者左心室心尖四腔心切面的基于 AI 的 GLS 超声心动图图像,并评估了基于 AI 的 GLS(Caas Qardia,Pie Medical Imaging)与传统 GLS(Vivid E9/VividE95,GE Healthcare)之间的相关性。我们还评估了无经验医生(“GLS 初学者”)和经验丰富的超声心动图医师之间的一致性。在 94 名患者中(平均年龄 69±12 岁,73%为女性),平均左心室射血分数为 64±6%,14%的患者存在左心室肥厚,21%的患者存在左心房增大。基于 AI 和传统方法的平均 GLS 分别为-15.9±3.4%和-19.0±3.7%。这两种方法之间存在中度相关性(rho=0.74;p<0.01),且偏差为-3.1%(95%一致性界限:-8.1 至 2.0)。在 AI 方法中,GLS 初学者与经验丰富的超声心动图医师之间的重复性在数值上优于传统方法(观察者间一致性=0.82 与 0.68)。在不同的心脏结构和功能异常类别中,这些一致性一致(p 交互>0.10)。在接受化疗治疗的患者中,基于 AI 的 GLS 与传统 GLS 中度相关,并且与传统 GLS 相比,重复性在数值上更好,无论专家水平如何。