Semi-Automatic Refinement of Myocardial Segmentations for Better LVNC Detection.

IF 2.9 3区 医学 Q1 MEDICINE, GENERAL & INTERNAL Journal of Clinical Medicine Pub Date : 2025-01-06 DOI:10.3390/jcm14010271
Jaime Rafael Barón, Gregorio Bernabé, Pilar González-Férez, José Manuel García, Guillem Casas, Josefa González-Carrillo
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Abstract

Background: Accurate segmentation of the left ventricular myocardium in cardiac MRI is essential for developing reliable deep learning models to diagnose left ventricular non-compaction cardiomyopathy (LVNC). This work focuses on improving the segmentation database used to train these models, enhancing the quality of myocardial segmentation for more precise model training. Methods: We present a semi-automatic framework that refines segmentations through three fundamental approaches: (1) combining neural network outputs with expert-driven corrections, (2) implementing a blob-selection method to correct segmentation errors and neural network hallucinations, and (3) employing a cross-validation process using the baseline U-Net model. Results: Applied to datasets from three hospitals, these methods demonstrate improved segmentation accuracy, with the blob-selection technique boosting the Dice coefficient for the Trabecular Zone by up to 0.06 in certain populations. Conclusions: Our approach enhances the dataset's quality, providing a more robust foundation for future LVNC diagnostic models.

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为更好的LVNC检测心肌分割的半自动改进。
背景:心脏MRI中左心室心肌的准确分割对于建立可靠的深度学习模型来诊断左心室非压实性心肌病(LVNC)至关重要。本工作的重点是改进用于训练这些模型的分割数据库,提高心肌分割的质量,以实现更精确的模型训练。方法:我们提出了一个半自动框架,该框架通过三种基本方法来改进分割:(1)将神经网络输出与专家驱动的校正相结合;(2)实现blob选择方法来纠正分割错误和神经网络幻觉;(3)使用基线U-Net模型进行交叉验证过程。结果:应用于三家医院的数据集,这些方法显示出更高的分割精度,在某些人群中,blob选择技术将小梁区的Dice系数提高了0.06。结论:我们的方法提高了数据集的质量,为未来的LVNC诊断模型提供了更强大的基础。
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来源期刊
Journal of Clinical Medicine
Journal of Clinical Medicine MEDICINE, GENERAL & INTERNAL-
CiteScore
5.70
自引率
7.70%
发文量
6468
审稿时长
16.32 days
期刊介绍: Journal of Clinical Medicine (ISSN 2077-0383), is an international scientific open access journal, providing a platform for advances in health care/clinical practices, the study of direct observation of patients and general medical research. This multi-disciplinary journal is aimed at a wide audience of medical researchers and healthcare professionals. Unique features of this journal: manuscripts regarding original research and ideas will be particularly welcomed.JCM also accepts reviews, communications, and short notes. There is no limit to publication length: our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible.
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