论文标题

B模式超声心动图的无监督分割

Unsupervised Segmentation of B-Mode Echocardiograms

论文作者

Brindise, Melissa C., Meyers, Brett A., Kutty, Shelby, Vlachos, Pavlos P.

论文摘要

我们提出了一种无用的超声心动图分割(ECHO)的方法。该方法使用迭代性Dijkstra的算法,一种战略节点选择以及基于强度峰值突出的新颖成本矩阵公式,因此被称为“突出性迭代Dijkstra的算法”算法或ProID。尽管当前的分析侧重于左心室(LV),但ProID适用于所有四个心脏腔室。使用代表五个不同系统的人造回声图像对Proid进行了测试。结果显示与所有系统的地面真相相比,准确的LV轮廓和体积估计。随后,ProID用于分析66例儿科患者的临床队列,包括正常心脏和患病患者。将输出分段,末期,末期音量和射血分数(EF)与两位专家读者的手动分割进行了比较。与手动分割进行比较时,ProID的平均骰子相似性得分为0.93。比较两位专家的读者,手动分段的得分为0.93,使用ProID时增加到0.95。因此,Proid成功地降低了两个专家读者的操作员变异性。总体而言,这项工作表明,在所有年龄段,疾病状态和回声平台上,较低的计算成本均可产生准确的界限,从而确立了其临床实用性。

We present a method for unsupervised segmentation of echocardiograms (echo). The method uses an iterative Dijkstra's algorithm, a strategic node selection, and a novel cost matrix formulation based on intensity peak prominence and is thus termed the "Prominence Iterative Dijkstra's" algorithm, or ProID. Although the current analysis focuses on the left ventricle (LV), ProID is applicable to all four heart chambers. ProID was tested using artificial echo images representing five different systems. Results showed accurate LV contours and volume estimations as compared to the ground-truth for all systems. Subsequently, ProID was used to analyze a clinical cohort of 66 pediatric patients, including both normal and diseased hearts. Output segmentations, end-diastolic, end-systolic volumes, and ejection fraction (EF) were compared against manual segmentations from two expert readers. ProID maintained an average Dice similarity score of 0.93 when comparing against manual segmentation. Comparing the two expert readers, the manual segmentations maintained a score of 0.93, which increased to 0.95 when they used ProID. Thus, ProID successfully reduced the inter-operator variability across the two expert readers. Overall, this work demonstrates that ProID yields accurate boundaries across all age groups, disease states, and echo platforms with low computation cost, thereby establishing its clinical usefulness.

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