VENTSEG: efficient open source framework for ventricular segmentation

Alejandro León, Rodrigo Herrera, Jesús Urbina, R. Salas, S. Uribe, J. Sotelo
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Abstract

Despite advances in deep learning methods aimed at cardiac ventricular segmentation, most algorithms have drawbacks due to low prediction accuracy with images from different MR scans to those trained. It leads to a process that requires time-consuming correction by technicians or specialists. The time in this process is significant mainly due to the large number of image sets to be processed. The lack of description of the algorithms has not allowed repeatability, while commercial software is difficult to access for clinical use or research. However, in cardiac segmentation research, several solutions have already been proposed. This paper presents an opensource cardiac functionality segmentation and evaluation framework, which contemplates a diverse database for network training, a multi domain network architecture that allows model generalization, and pre-and postprocessing algorithms that improve prediction results. The prediction evaluation of the framework shows that Ventseg is 3.66% superior to the trained model and the similarity percentages in the tested MR scores are over 84%. On the other hand, the inter-observer variability analysis, with anonymized data, shows in the different metrics that Ventseg is on par with cardiac segmentation specialists. Finally, the efficiency calculated in an intra-observer test indicates that our framework reduces manual segmentation time by approximately 80%.
VENTSEG:高效的心室分割开源框架
尽管针对心脏心室分割的深度学习方法取得了进展,但大多数算法都存在缺陷,因为来自不同MR扫描的图像与经过训练的图像的预测精度较低。这导致了一个需要技术人员或专家耗时修正的过程。由于需要处理大量的图像集,因此在这个过程中需要花费大量的时间。缺乏对算法的描述,不允许可重复性,而商业软件难以用于临床使用或研究。然而,在心脏分割研究中,已经提出了几种解决方案。本文提出了一个开源的心脏功能分割和评估框架,该框架考虑了一个用于网络训练的多样化数据库,一个允许模型泛化的多域网络架构,以及改进预测结果的预处理和后处理算法。对该框架的预测评价表明,Ventseg比训练好的模型优3.66%,测试MR分数的相似百分比超过84%。另一方面,使用匿名数据的观察者间可变性分析显示,在不同的指标中,Ventseg与心脏分割专家不相上下。最后,在观察者内测试中计算的效率表明,我们的框架将人工分割时间减少了大约80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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