Localization of anatomical landmarks to perform two-dimensional measurements in echocardiography is part of routine clinical workflow in cardiac disease diagnosis. Automatic localization of those landmarks is highly desirable to improve workflow and reduce interobserver variability. Training a machine learning framework to perform such localization is hindered given the sparse nature of gold standard labels; only few percent of cardiac cine series frames are normally manually labeled for clinical use. In this paper, we propose a new end-to-end reciprocal detection and tracking model that is specifically designed to handle the sparse nature of echocardiography labels. The model is trained using few annotated frames across the entire cardiac cine sequence to generate consistent detection and tracking of landmarks, and an adversarial training for the model is proposed to take advantage of these annotated frames. The superiority of the proposed reciprocal model is demonstrated using a series of experiments.
翻译:在回声心电图中进行二维测量的解剖地标的本地化是心脏疾病诊断常规临床工作流程的一部分,这些地标的自动本地化对于改善工作流程和减少观察者之间的变异性十分可取,由于金质标准标签的稀少性质,对进行这种本地化的机器学习框架的培训受到阻碍;通常只有很少一部分的心电图系列框架被手工贴上标签供临床使用。在本文件中,我们提出了一个新的端对端相互检测和跟踪模型,专门设计该模型是为了处理回声心电图标签的稀疏性质。该模型在全心电图序列中使用几个附加说明的框进行培训,以形成对地标的一致检测和跟踪,并提议对模型进行对抗性培训,以利用这些附加说明的框加以利用。拟议对等模型的优越性通过一系列实验展示。