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使用变分自编码器对周围动脉慢性完全闭塞的磁共振组织学进行自动分类:一项可行性研究

Automatic Classification of Magnetic Resonance Histology of Peripheral Arterial Chronic Total Occlusions Using a Variational Autoencoder: A Feasibility Study.

作者信息

Csore Judit, Karmonik Christof, Wilhoit Kayla, Buckner Lily, Roy Trisha L

机构信息

DeBakey Heart and Vascular Center, Houston Methodist Hospital, 6565 Fannin Street, Houston, TX 77030, USA.

Heart and Vascular Center, Semmelweis University, 68 Városmajor Street, 1122 Budapest, Hungary.

出版信息

Diagnostics (Basel). 2023 May 31;13(11):1925. doi: 10.3390/diagnostics13111925.

Abstract

The novel approach of our study consists in adapting and in evaluating a custom-made variational autoencoder (VAE) using two-dimensional (2D) convolutional neural networks (CNNs) on magnetic resonance imaging (MRI) images for differentiate soft vs. hard plaque components in peripheral arterial disease (PAD). Five amputated lower extremities were imaged at a clinical ultra-high field 7 Tesla MRI. Ultrashort echo time (UTE), T1-weighted (T1w) and T2-weighted (T2w) datasets were acquired. Multiplanar reconstruction (MPR) images were obtained from one lesion per limb. Images were aligned to each other and pseudo-color red-green-blue images were created. Four areas in latent space were defined corresponding to the sorted images reconstructed by the VAE. Images were classified from their position in latent space and scored using tissue score (TS) as following: (1) lumen patent, TS:0; (2) partially patent, TS:1; (3) mostly occluded with soft tissue, TS:3; (4) mostly occluded with hard tissue, TS:5. Average and relative percentage of TS was calculated per lesion defined as the sum of the tissue score for each image divided by the total number of images. In total, 2390 MPR reconstructed images were included in the analysis. Relative percentage of average tissue score varied from only patent (lesion #1) to presence of all four classes. Lesions #2, #3 and #5 were classified to contain tissues except mostly occluded with hard tissue while lesion #4 contained all (ranges (I): 0.2-100%, (II): 46.3-75.9%, (III): 18-33.5%, (IV): 20%). Training the VAE was successful as images with soft/hard tissues in PAD lesions were satisfactory separated in latent space. Using VAE may assist in rapid classification of MRI histology images acquired in a clinical setup for facilitating endovascular procedures.

摘要

我们研究的新方法包括采用并评估一种定制的变分自编码器(VAE),该编码器使用二维(2D)卷积神经网络(CNN)处理磁共振成像(MRI)图像,以区分外周动脉疾病(PAD)中的软斑块成分与硬斑块成分。对5条截肢的下肢进行了临床超高场7特斯拉MRI成像。采集了超短回波时间(UTE)、T1加权(T1w)和T2加权(T2w)数据集。从每个肢体的一个病变获取多平面重建(MPR)图像。将图像相互对齐并创建伪彩色红绿蓝图像。在潜在空间中定义了四个区域,对应于由VAE重建的排序图像。根据图像在潜在空间中的位置对其进行分类,并使用组织评分(TS)进行评分,如下所示:(1)管腔通畅,TS:0;(2)部分通畅,TS:1;(3)大部分被软组织阻塞,TS:3;(4)大部分被硬组织阻塞,TS:5。计算每个病变的TS平均值和相对百分比,定义为每个图像的组织评分总和除以图像总数。分析共纳入2390张MPR重建图像。平均组织评分的相对百分比从仅通畅(病变#1)到所有四类均存在不等。病变#2、#3和#5被分类为包含除大部分被硬组织阻塞之外的组织,而病变#4包含所有组织(范围(I):0.2 - 100%,(II):46.3 - 75.9%,(III):18 - 33.5%,(IV):20%)。VAE训练成功,因为PAD病变中含有软/硬组织的图像在潜在空间中得到了令人满意的分离。使用VAE可能有助于对临床环境中获取的MRI组织学图像进行快速分类,以促进血管内手术。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b15c/10253011/2c67ccd07b17/diagnostics-13-01925-g001.jpg

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