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Impact of the extent of low-voltage zone on outcomes after voltage-based catheter ablation for persistent atrial fibrillation.基于电压的导管消融治疗持续性心房颤动后低电压区范围对结果的影响。
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Catheterized Fiber-Optics Confocal Microscopy of the Beating Heart In Situ.原位跳动心脏的导管光纤共聚焦显微镜检查。
Circ Cardiovasc Imaging. 2017 Oct;10(10). doi: 10.1161/CIRCIMAGING.117.006881.
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Increased Susceptibility to Atrial Fibrillation Secondary to Atrial Fibrosis in Transgenic Goats Expressing Transforming Growth Factor-β1.表达转化生长因子-β1的转基因山羊因心房纤维化导致心房颤动易感性增加。
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Association of atrial tissue fibrosis identified by delayed enhancement MRI and atrial fibrillation catheter ablation: the DECAAF study.延迟增强 MRI 识别的心房组织纤维化与心房颤动导管消融的关系:DECAAF 研究。
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Inverse relationship between fractionated electrograms and atrial fibrosis in persistent atrial fibrillation: combined magnetic resonance imaging and high-density mapping.在持续性心房颤动中,分段电图与心房纤维化呈负相关:结合磁共振成像和高密度标测。
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Structural abnormalities in atrial walls are associated with presence and persistency of atrial fibrillation but not with age.心房壁的结构异常与房颤的存在和持续有关,但与年龄无关。
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Detection and quantification of left atrial structural remodeling with delayed-enhancement magnetic resonance imaging in patients with atrial fibrillation.利用延迟强化磁共振成像检测和量化心房颤动患者的左心房结构重塑。
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10
Differences in atrial versus ventricular remodeling in dogs with ventricular tachypacing-induced congestive heart failure.心室快速起搏诱导的充血性心力衰竭犬心房与心室重塑的差异。
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使用卷积神经网络对导管光纤共聚焦显微镜图像中的心房纤维化进行自动定量分析。

Towards Automated Quantification of Atrial Fibrosis in Images from Catheterized Fiber-Optics Confocal Microscopy Using Convolutional Neural Networks.

作者信息

Huang Chao, Wasmund Stephen L, Yamaguchi Takanori, Knighton Nathan, Hitchcock Robert W, Polejaeva Irina A, White Kenneth L, Marrouche Nassir F, Sachse Frank B

机构信息

Comprehensive Arrhythmia and Research Management (CARMA) Center, Division of Cardiovascular Medicine.

Nora Eccles Harrison Cardiovascular Research and Training Institute.

出版信息

Funct Imaging Model Heart. 2019 Jun;11504:168-176. doi: 10.1007/978-3-030-21949-9_19. Epub 2019 May 30.

DOI:10.1007/978-3-030-21949-9_19
PMID:31245795
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6594702/
Abstract

Clinical approaches for quantification of atrial fibrosis are currently based on digital image processing of magnetic resonance images. Here, we introduce and evaluate a comprehensive framework based on convolutional neural networks for quantifying atrial fibrosis from images acquired with catheterized fiber-optics confocal microscopy (FCM). FCM images in three regions of the atria were acquired in the beating heart in situ in an established transgenic animal model of atrial fibrosis. Fibrosis in the imaged regions was histologically assessed in excised tissue. FCM images and their corresponding histologically-assessed fibrosis levels were used for training of a convolutional neural network. We evaluated the utility and performance of the convolutional neural networks by varying parameters including image dimension and training batch size. In general, we observed that the root-mean square error (RMSE) of the predicted fibrosis was decreased with increasing image dimension. We achieved a RMSE of 2.6% and a Pearson correlation coefficient of 0.953 when applying a network trained on images with a dimension of 400 × 400 pixels and a batch size of 128 to our test image set. The findings indicate feasibility of our approach for fibrosis quantification from images acquired with catheterized FCM using convolutional neural networks. We suggest that the developed framework will facilitate translation of catheterized FCM into a clinical approach that complements current approaches for quantification of atrial fibrosis.

摘要

目前,心房纤维化定量的临床方法基于磁共振图像的数字图像处理。在此,我们介绍并评估一种基于卷积神经网络的综合框架,用于从导管光纤共聚焦显微镜(FCM)获取的图像中定量心房纤维化。在已建立的心房纤维化转基因动物模型中,在原位跳动的心脏中获取心房三个区域的FCM图像。对切除组织中成像区域的纤维化进行组织学评估。FCM图像及其相应的组织学评估纤维化水平用于训练卷积神经网络。我们通过改变包括图像尺寸和训练批次大小等参数来评估卷积神经网络的实用性和性能。总体而言,我们观察到预测纤维化的均方根误差(RMSE)随着图像尺寸的增加而降低。当将在尺寸为400×400像素且批次大小为128的图像上训练的网络应用于我们的测试图像集时,我们实现了2.6%的RMSE和0.953的皮尔逊相关系数。这些发现表明我们的方法利用卷积神经网络从导管FCM获取的图像中进行纤维化定量是可行的。我们建议所开发的框架将有助于将导管FCM转化为一种补充当前心房纤维化定量方法的临床方法。