Atrial fibrillation (AF) is a cardiovascular disease identified as one of the main risk factors for stroke. The majority of strokes due to AF are caused by clots originating in the left atrial appendage (LAA). LAA occlusion is an effective procedure for reducing stroke risk. Planning the procedure using pre-procedural imaging and analysis has shown benefits. The analysis is commonly done by manually segmenting the appendage on 2D slices. Automatic LAA segmentation methods could save an expert's time and provide insightful 3D visualizations and accurate automatic measurements to aid in medical procedures. Several semi- and fully-automatic methods for segmenting the appendage have been proposed. This paper provides a review of automatic LAA segmentation methods on 3D and 4D medical images, including CT, MRI, and echocardiogram images. We classify methods into heuristic and model-based methods, as well as into semi- and fully-automatic methods. We summarize and compare the proposed methods, evaluate their effectiveness, and present current challenges in the field and approaches to overcome them.
翻译:283. 工伤纤维化(AF)是一种心血管疾病,被确定为中风的主要风险因素之一,大部分应给AF的中风都是由左侧附加物(LAA)的凝块造成的。LAA隔离是减少中风风险的有效程序。使用程序前成像和分析规划程序已经显示出好处。分析通常通过人工分割2D片的附片进行。自动LAA分割方法可以节省专家的时间,提供有见识的3D可视化和准确的自动测量,以协助医疗程序。提出了几种分解附加物的半自动和全自动方法。本文回顾了3D和4D医疗图象(包括CT、MRI和回声心电图象)的自动LAA分解方法。我们将方法分为超常和基于模型的方法以及半自动和全自动方法。我们总结和比较了拟议的方法,评估了它们的有效性,并提出了实地克服它们目前的挑战和方法。