Static cardiac imaging such as late gadolinium enhancement, mapping, or 3-D coronary angiography require prior information, e.g., the phase during a cardiac cycle with least motion, called resting phase (RP). The purpose of this work is to propose a fully automated framework that allows the detection of the right coronary artery (RCA) RP within CINE series. The proposed prototype system consists of three main steps. First, the localization of the regions of interest (ROI) is performed. Second, the cropped ROI series are taken for tracking motions over all time points. Third, the output motion values are used to classify RPs. In this work, we focused on the detection of the area with the outer edge of the cross-section of the RCA as our target. The proposed framework was evaluated on 102 clinically acquired dataset at 1.5T and 3T. The automatically classified RPs were compared with the reference RPs annotated manually by a expert for testing the robustness and feasibility of the framework. The predicted RCA RPs showed high agreement with the experts annotated RPs with 92.7% accuracy, 90.5% sensitivity and 95.0% specificity for the unseen study dataset. The mean absolute difference of the start and end RP was 13.6 $\pm$ 18.6 ms for the validation study dataset (n=102). In this work, automated RP detection has been introduced by the proposed framework and demonstrated feasibility, robustness, and applicability for static imaging acquisitions.
翻译:首先,对感兴趣的区域进行本地化(ROI),第二,将裁剪的ROI系列用于跟踪所有时间点的动作。第三,使用产出运动值对RP进行分类。在这项工作中,我们的重点是以RCA截面外缘为目标的检测区域,在CINE系列内对102个临床获得的数据集进行了评价,在1.5T和3T进行了评估。 自动分类的RP与一名专家手动的参考RP作了比较,以测试框架的坚固性和可行性。 RCA和RP的预测表明,与专家高度一致,为RPS的准确性提出了具有95.7%的准确性,为ROP的绝对精确性进行了18项研究。