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改进深度学习模型以准确诊断左心室致密化不全。

Improving a Deep Learning Model to Accurately Diagnose LVNC.

作者信息

Barón Jaime Rafael, Bernabé Gregorio, González-Férez Pilar, García José Manuel, Casas Guillem, González-Carrillo Josefa

机构信息

Computer Engineering Department, University of Murcia, 30100 Murcia, Spain.

Hospital Universitari Vall d'Hbron, 08035 Barcelona, Spain.

出版信息

J Clin Med. 2023 Dec 12;12(24):7633. doi: 10.3390/jcm12247633.

DOI:10.3390/jcm12247633
PMID:38137702
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10743747/
Abstract

Accurate diagnosis of Left Ventricular Noncompaction Cardiomyopathy (LVNC) is critical for proper patient treatment but remains challenging. This work improves LVNC detection by improving left ventricle segmentation in cardiac MR images. Trabeculated left ventricle indicates LVNC, but automatic segmentation is difficult. We present techniques to improve segmentation and evaluate their impact on LVNC diagnosis. Three main methods are introduced: (1) using full 800 × 800 MR images rather than 512 × 512; (2) a clustering algorithm to eliminate neural network hallucinations; (3) advanced network architectures including Attention U-Net, MSA-UNet, and U-Net++.Experiments utilize cardiac MR datasets from three different hospitals. U-Net++ achieves the best segmentation performance using 800 × 800 images, and it improves the mean segmentation Dice score by 0.02 over the baseline U-Net, the clustering algorithm improves the mean Dice score by 0.06 on the images it affected, and the U-Net++ provides an additional 0.02 mean Dice score over the baseline U-Net. For LVNC diagnosis, U-Net++ achieves 0.896 accuracy, 0.907 precision, and 0.912 F1-score outperforming the baseline U-Net. Proposed techniques enhance LVNC detection, but differences between hospitals reveal problems in improving generalization. This work provides validated methods for precise LVNC diagnosis.

摘要

准确诊断左心室致密化不全心肌病(LVNC)对于患者的恰当治疗至关重要,但仍具有挑战性。这项工作通过改进心脏磁共振成像(MRI)中的左心室分割来提高LVNC的检测能力。小梁化的左心室提示LVNC,但自动分割很困难。我们提出了改进分割的技术,并评估它们对LVNC诊断的影响。介绍了三种主要方法:(1)使用完整的800×800 MR图像而非512×512图像;(2)一种聚类算法以消除神经网络的幻觉;(3)先进的网络架构,包括注意力U-Net、多自注意力U-Net和U-Net++。实验使用了来自三家不同医院的心脏MR数据集。U-Net++使用800×800图像时实现了最佳分割性能,与基线U-Net相比,其平均分割Dice分数提高了0.02,聚类算法在其影响的图像上使平均Dice分数提高了0.06,并且U-Net++比基线U-Net额外提供了0.02的平均Dice分数。对于LVNC诊断,U-Net++实现了0.896的准确率、0.907的精确率和0.912的F1分数,优于基线U-Net。所提出的技术增强了LVNC的检测能力,但医院之间的差异揭示了在提高泛化能力方面存在的问题。这项工作为精确的LVNC诊断提供了经过验证的方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0434/10743747/47c6e379ff8b/jcm-12-07633-g004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0434/10743747/8085802ef193/jcm-12-07633-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0434/10743747/47c6e379ff8b/jcm-12-07633-g004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0434/10743747/8085802ef193/jcm-12-07633-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0434/10743747/47c6e379ff8b/jcm-12-07633-g004.jpg

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