A comparison of machine learning methods for recovering noisy and missing 4D flow MRI data.

IF 2.2 4区 医学 Q3 ENGINEERING, BIOMEDICAL
Hunor Csala, Omid Amili, Roshan M D'Souza, Amirhossein Arzani
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引用次数: 0

Abstract

Experimental blood flow measurement techniques are invaluable for a better understanding of cardiovascular disease formation, progression, and treatment. One of the emerging methods is time-resolved three-dimensional phase-contrast magnetic resonance imaging (4D flow MRI), which enables noninvasive time-dependent velocity measurements within large vessels. However, several limitations hinder the usability of 4D flow MRI and other experimental methods for quantitative hemodynamics analysis. These mainly include measurement noise, corrupt or missing data, low spatiotemporal resolution, and other artifacts. Traditional filtering is routinely applied for denoising experimental blood flow data without any detailed discussion on why it is preferred over other methods. In this study, filtering is compared to different singular value decomposition (SVD)-based machine learning and autoencoder-type deep learning methods for denoising and filling in missing data (imputation). An artificially corrupted and voxelized computational fluid dynamics (CFD) simulation as well as in vitro 4D flow MRI data are used to test the methods. SVD-based algorithms achieve excellent results for the idealized case but severely struggle when applied to in vitro data. The autoencoders are shown to be versatile and applicable to all investigated cases. For denoising, the in vitro 4D flow MRI data, the denoising autoencoder (DAE), and the Noise2Noise (N2N) autoencoder produced better reconstructions than filtering both qualitatively and quantitatively. Deep learning methods such as N2N can result in noise-free velocity fields even though they did not use clean data during training. This work presents one of the first comprehensive assessments and comparisons of various classical and modern machine-learning methods for enhancing corrupt cardiovascular flow data in diseased arteries for both synthetic and experimental test cases.

恢复噪声和缺失四维血流 MRI 数据的机器学习方法比较。
实验性血流测量技术对于更好地了解心血管疾病的形成、发展和治疗非常重要。新出现的方法之一是时间分辨三维相位对比磁共振成像(4D 流磁共振成像),它可以对大血管内的速度进行无创的时间依赖性测量。然而,4D 流量磁共振成像和其他实验方法在定量血液动力学分析中的可用性受到一些限制。这些限制主要包括测量噪声、数据损坏或缺失、时空分辨率低以及其他伪影。传统的滤波方法通常用于对实验血流数据进行去噪,但没有详细讨论为什么滤波方法优于其他方法。本研究将滤波与不同的基于奇异值分解(SVD)的机器学习方法和自动编码器型深度学习方法进行比较,以进行去噪和填补缺失数据(估算)。测试方法使用了人为损坏和体素化的计算流体动力学(CFD)模拟以及体外 4D 流磁共振成像数据。基于 SVD 的算法在理想化情况下取得了极佳的结果,但在应用于体外数据时却非常吃力。结果表明,自动编码器用途广泛,适用于所有研究案例。在体外 4D 流磁共振成像数据的去噪方面,去噪自动编码器(DAE)和噪声2噪声(N2N)自动编码器在定性和定量方面都比滤波产生了更好的重建效果。N2N 等深度学习方法即使在训练过程中没有使用干净的数据,也能得到无噪声的速度场。这项研究首次对各种经典和现代机器学习方法进行了全面评估和比较,以增强病变动脉中合成和实验测试案例中损坏的心血管血流数据。
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来源期刊
International Journal for Numerical Methods in Biomedical Engineering
International Journal for Numerical Methods in Biomedical Engineering ENGINEERING, BIOMEDICAL-MATHEMATICAL & COMPUTATIONAL BIOLOGY
CiteScore
4.50
自引率
9.50%
发文量
103
审稿时长
3 months
期刊介绍: All differential equation based models for biomedical applications and their novel solutions (using either established numerical methods such as finite difference, finite element and finite volume methods or new numerical methods) are within the scope of this journal. Manuscripts with experimental and analytical themes are also welcome if a component of the paper deals with numerical methods. Special cases that may not involve differential equations such as image processing, meshing and artificial intelligence are within the scope. Any research that is broadly linked to the wellbeing of the human body, either directly or indirectly, is also within the scope of this journal.
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