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Statistical shape modeling of the left ventricle: myocardial infarct classification challenge

机译:左心室的统计形状建模:心肌梗塞分类挑战

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摘要

Statistical shape modeling is a powerful tool for visualizing and quantifying geometric and functional patterns of the heart. After myocardial infarction (MI), the left ventricle typically remodels in response to physiological challenges. Several methods have been proposed in the literature to describe statistical shape changes. Which method best characterizes left ventricular remodeling after MI is an open research question. A better descriptor of remodeling is expected to provide a more accurate evaluation of disease status in MI patients. We therefore designed a challenge to test shape characterization in MI given a set of three-dimensional left ventricular surface points. The training set comprised 100 MI patients, and 100 asymptomatic volunteers (AV). The challenge was initiated in 2015 at the Statistical Atlases and Computational Models of the Heart workshop, in conjunction with the MICCAI conference. The training set with labels was provided to participants, who were asked to submit the likelihood of MI from a different (validation) set of 200 cases (100 AV and 100 MI). Sensitivity, specificity, accuracy and area under the receiver operating characteristic curve were used as the outcome measures. The goals of this challenge were to (1) establish a common dataset for evaluating statistical shape modeling algorithms in MI, and (2) test whether statistical shape modeling provides additional information characterizing MI patients over standard clinical measures. Eleven groups with a wide variety of classification and feature extraction approaches participated in this challenge. All methods achieved excellent classification results with accuracy ranges from 0.83 to 0.98. The areas under the receiver operating characteristic curves were all above 0.90. Four methods showed significantly higher performance than standard clinical measures. The dataset and software for evaluation are available from the Cardiac Atlas Project website.
机译:统计形状建模是用于可视化和量化心脏的几何和功能模式的强大工具。心肌梗塞(MI)后,左心室通常会根据生理挑战进行重塑。文献中已经提出了几种描述统计形状变化的方法。心肌梗死后哪种方法最能表征左心室重塑是一个尚待研究的问题。预期更好的重塑描述词可提供对MI患者疾病状况的更准确评估。因此,在给定一组三维左心室表面点的情况下,我们设计了一个挑战,以测试MI中的形状表征。训练集包括100名MI患者和100名无症状志愿者(AV)。该挑战于2015年在MICCAI会议的心脏统计图集和计算模型研讨会上发起。将带有标签的培训集提供给参与者,要求参与者从200个案例(100个AV和100个MI)的不同(验证)集中提交MI的可能性。灵敏度,特异性,准确性和受体工作特性曲线下的面积用作结果指标。这项挑战的目标是(1)建立用于评估MI中的统计形状建模算法的通用数据集,以及(2)测试统计形状建模是否提供了标准临床测量中表征MI患者的其他信息。拥有多种分类和特征提取方法的11个小组参加了这一挑战。所有方法均获得了出色的分类结果,准确度范围为0.83至0.98。接收器工作特性曲线下的面积均大于0.90。四种方法显示出比标准临床措施明显更高的性能。可从Cardiac Atlas Project网站 获得评估用的数据集和软件。

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