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基于深度学习的二维超声心动图分割模型在大型临床数据集上的泛化能力和质量控制。

Generalizability and quality control of deep learning-based 2D echocardiography segmentation models in a large clinical dataset.

机构信息

Department of Translational Data Science and Informatics, Geisinger, 100 North Academy Avenue, Danville, PA, 17822, USA.

Computer Science, Bucknell University, Lewisburg, PA, USA.

出版信息

Int J Cardiovasc Imaging. 2022 Aug;38(8):1685-1697. doi: 10.1007/s10554-022-02554-7. Epub 2022 Feb 24.

Abstract

Use of machine learning (ML) for automated annotation of heart structures from echocardiographic videos is an active research area, but understanding of comparative, generalizable performance among models is lacking. This study aimed to (1) assess the generalizability of five state-of-the-art ML-based echocardiography segmentation models within a large Geisinger clinical dataset, and (2) test the hypothesis that a quality control (QC) method based on segmentation uncertainty can further improve segmentation results. Five models were applied to 47,431 echocardiography studies that were independent from any training samples. Chamber volume and mass from model segmentations were compared to clinically-reported values. The median absolute errors (MAE) in left ventricular (LV) volumes and ejection fraction exhibited by all five models were comparable to reported inter-observer errors (IOE). MAE for left atrial volume and LV mass were similarly favorable to respective IOE for models trained for those tasks. A single model consistently exhibited the lowest MAE in all five clinically-reported measures. We leveraged the tenfold cross-validation training scheme of this best-performing model to quantify segmentation uncertainty. We observed that removing segmentations with high uncertainty from 14 to 71% studies reduced volume/mass MAE by 6-10%. The addition of convexity filters improved specificity, efficiently removing < 10% studies with large MAE (16-40%). In conclusion, five previously published echocardiography segmentation models generalized to a large, independent clinical dataset-segmenting one or multiple cardiac structures with overall accuracy comparable to manual analyses-with variable performance. Convexity-reinforced uncertainty QC efficiently improved segmentation performance and may further facilitate the translation of such models.

摘要

使用机器学习 (ML) 对超声心动图视频中的心脏结构进行自动标注是一个活跃的研究领域,但对模型之间的可比较、可推广的性能缺乏了解。本研究旨在:(1) 在一个大型 Geisinger 临床数据集内评估五个最先进的基于机器学习的超声心动图分割模型的泛化能力;(2) 检验基于分割不确定性的质量控制 (QC) 方法是否可以进一步改善分割结果的假设。将五个模型应用于 47431 项与任何训练样本均不相关的超声心动图研究。模型分割的腔室容积和质量与临床报告值进行比较。所有五个模型的左心室 (LV) 容积和射血分数的中位数绝对误差 (MAE) 与报告的观察者间误差 (IOE) 相当。针对这些任务进行训练的模型的左心房容积和 LV 质量的 MAE 与各自的 IOE 相似。在所有五个临床报告的测量中,一个单一的模型始终表现出最低的 MAE。我们利用表现最佳的模型的十倍交叉验证训练方案来量化分割不确定性。我们观察到,从 14%到 71%的研究中去除具有高不确定性的分割可以将体积/质量 MAE 降低 6-10%。凸性滤波器的加入提高了特异性,有效地去除了 MAE 较大的研究(16-40%)。综上所述,五个之前发表的超声心动图分割模型可以推广到一个大型的独立临床数据集,对一个或多个心脏结构进行分割,其整体准确性与手动分析相当,性能各不相同。凸性强化的不确定性 QC 可以有效地提高分割性能,并可能进一步促进此类模型的转化。

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