论文标题
使用卷积神经网络中心脏磁共振成像中的具有里程碑意义的检测
Landmark detection in Cardiac Magnetic Resonance Imaging Using A Convolutional Neural Network
论文作者
论文摘要
目的:开发卷积神经网络(CNN)解决方案,以在心脏MR图像中进行稳健地标检测。 方法:这项回顾性研究包括来自两家医院的Cine,LGE和T1映射扫描。训练组包括2,329例患者和34,019张图像。固定测试组包括531例患者和7,723张图像。开发了CNN模型以检测两个二尖瓣平面和长轴(LAX)图像上的顶点。在短轴(SAX)图像上,前RV插入点和LV中心。将两个操作员的模型输出与手动标签进行了比较,以获得统计显着性的t检验的准确性。训练有素的模型被部署到扫描仪先生。 结果:对于LAX图像,Cine的成功检测为99.8%,LGE的成功检测为99.4%。对于SAX,Cine,LGE和T1映射的成功率为96.6%,97.6%和98.9%。模型和手动标签之间的L2距离为2至3.5毫米,表明模型标记与手动标签之间的一致性紧密一致。对于所有视图和成像序列的模型和操作员,没有发现前RV插入角和LV长度的显着差异。 MR Scanner的模型推断分别在GPU/CPU上分别用于典型的心脏Cine系列。 结论:这项研究开发了,验证和部署了CNN解决方案,用于在长长和短轴CMR图像中用于Cine,LGE和T1映射序列,具有与操作机间变化相当的精度。
Purpose: To develop a convolutional neural network (CNN) solution for robust landmark detection in cardiac MR images. Methods: This retrospective study included cine, LGE and T1 mapping scans from two hospitals. The training set included 2,329 patients and 34,019 images. A hold-out test set included 531 patients and 7,723 images. CNN models were developed to detect two mitral valve plane and apical points on long-axis (LAX) images. On short-axis (SAX) images, anterior and posterior RV insertion points and LV center were detected. Model outputs were compared to manual labels by two operators for accuracy with a t-test for statistical significance. The trained model was deployed to MR scanners. Results: For the LAX images, success detection was 99.8% for cine, 99.4% for LGE. For the SAX, success rate was 96.6%, 97.6% and 98.9% for cine, LGE and T1-mapping. The L2 distances between model and manual labels were 2 to 3.5 mm, indicating close agreement between model landmarks to manual labels. No significant differences were found for the anterior RV insertion angle and LV length by the models and operators for all views and imaging sequences. Model inference on MR scanner took 610ms/5.6s on GPU/CPU, respectively, for a typical cardiac cine series. Conclusions: This study developed, validated and deployed a CNN solution for robust landmark detection in both long and short-axis CMR images for cine, LGE and T1 mapping sequences, with the accuracy comparable to the inter-operator variation.